Research and analysis

Ethnic, socio-economic and sex inequalities in educational achievement at age 16, by Professor Steve Strand

Updated 28 April 2021

Ethnic, socio-economic and sex inequalities in educational achievement at age 16: An analysis of the Second Longitudinal Study of Young People in England (LSYPE2)

Report for the Commission on Ethnic and Racial Disparities (CRED) by Professor Steve Strand, Department of Education, University of Oxford

You can download a PDF version of this report.

Abstract

This report analyses ethnic, socio-economic and sex differences in educational achievement at age 16. It uses the Second Longitudinal Study of Young People in England (LSYPE2), a nationally representative sample of 9,704 students who completed GCSE examinations at the end of year 11 in summer 2015.

The LSYPE2 includes ethnic minority boosts so that sample sizes are sufficient to make robust estimates, and is the most recent dataset from which a comprehensive measure of students socio-economic status (SES) can be derived.

The analysis uses regression modelling to explore the achievement of the 9 biggest ethnic groups, at 3 levels of SES and separately for boys and girls, thus considering a total of 54 estimates for all combinations of ethnic group, SES and sex.

The key results are shown in table 1 and figure 1. The key findings are as follows:

The groups with the lowest achievement at 16 years old are White British, and Black Caribbean and Mixed White and Black Caribbean (MWBC) students from low SES backgrounds, who have mean scores well below the average for all students. This is most pronounced for boys (-0.77 SD and -0.68 SD respectively), but low SES girls of Black Caribbean and Mixed White and Black Caribbean, and White British ethnicity are also the lowest scoring groups of girls (-0.54 SD and -0.39 SD respectively).

Low SES boys of Pakistani, White Other and Any Other ethnic group also have a mean score well below the grand mean, but still score substantially higher than comparable White British and Black Caribbean and Mixed White and Black Caribbean boys.

Among students from average SES backgrounds, only Black Caribbean and Mixed White and Black Caribbean boys and White British boys have mean scores below the average for all students.

The overwhelming picture is therefore of ethnic minority advantage in relation to educational achievement at age 16. At low and average SES, no ethnic minority has a mean score substantially (less than 0.20 SD) lower than White British students, and in 23 of the 32 contrasts the ethnic minority mean is substantially (greater than 0.20 SD) above White British students of the same SES and sex.

There are only 2 instances of ethnic under-achievement compared to White British students of the same SES and sex. First, Black Caribbean and Black African boys from high SES families score lower than comparable White British high SES boys. Second, Pakistani girls from high SES backgrounds do not achieve as well as White British high SES girls, and also substantially below high SES Pakistani boys, who have the highest mean score of all groupings.

The results are discussed in relation to theories of “immigrant optimism” (Kao and Thompson, 2003), “segmented assimilation” (Portes and Zhou, 1993), and teacher expectations and cultural norms.

Table 1: Mean best 8 score by ethnic group, SES and sex, and ethnic achievement gaps relative to White British

Sex Ethnic group Mean Best 8 score, Low SES (-1SD) Mean Best 8 score, Average SES Mean Best 8 score, High SES (+1SD) Gap vs White British, Low SES (-1SD) Gap vs White British, Average SES Gap vs White British, High SES (+1SD)
Boys Black Caribbean, and Mixed White and Black Caribbean -0.77 -0.41 -0.06 -0.09 -0.19 -0.30
Boys White British -0.68 -0.22 0.24 - - -
Boys Any other ethnic group -0.36 -0.08 0.21 0.32 0.15 -0.03
Boys Black African, and Mixed White and Black African -0.08 -0.03 0.03 0.60 0.19 -0.21
Boys Pakistani -0.44 0.12 0.68 0.23 0.34 0.45
Boys White Other -0.35 0.06 0.46 0.33 0.28 0.22
Boys Asian Other, and Mixed White and Asian -0.11 0.20 0.51 0.57 0.42 0.27
Boys Indian 0.03 0.18 0.33 0.70 0.40 0.10
Boys Bangladeshi 0.07 0.25 0.45 0.75 0.47 0.21
Girls Black Caribbean, and Mixed White and Black Caribbean -0.54 0.01 0.56 -0.15 -0.09 -0.02
Girls White British -0.39 0.09 0.58 - - -
Girls Any other ethnic group -0.12 0.30 0.71 0.27 0.20 0.13
Girls Black African, and Mixed White and Black African 0.12 0.27 0.43 0.52 0.18 -0.15
Girls Pakistani -0.04 0.16 0.36 0.35 0.07 -0.22
Girls White Other -0.20 0.33 0.86 0.19 0.24 0.29
Girls Asian Other, and Mixed White and Asian 0.17 0.49 0.81 0.56 0.40 0.23
Girls Indian 0.18 0.60 1.01 0.58 0.51 0.43
Girls Bangladeshi 0.23 0.62 1.00 0.63 0.53 0.42

Notes: Mean Best 8 scores show the difference between the mean score for the group and the grand mean score across all pupils (which is set to 0). Gap vs White British shows the difference in the mean score between the ethnic minority and White British students of the same sex and SES. Ethnic groups are sorted in order of the mean Best8 score for pupils of average SES.

Figure 1: Mean best 8 score by ethnic group, socio-economic status (SES) and sex

Graphs showing the mean best 8 score by ethnic group, socio-economic group and sex. Mean Best 8 scores show the difference between the mean score for the group and the grand mean score across all pupils (which is set to 0).

Background

Education is the key to future life outcomes. Success in education at 16 years old is strongly predictive of later occupational, economic, health and well-being outcomes and to future social mobility: this is why 13 of the 17 social mobility indicators drawn up by the government in England are measures of educational attainment (Cabinet Office, 2011).

In the 2019 GCSE examinations, the average Attainment 8 score for Black Caribbean (39.4) and Mixed White and Black Caribbean (41.0) pupils was over 5 points lower than the average for White British pupils (46.2), or over half a grade lower in each of the 8 subjects included. At the same time, the average scores for Indian, Pakistani, Bangladeshi and Black African ethnic groups were above the White British average. What factors underpin such variation?

It is widely documented that socio-economic status (SES) is strongly implicated in low educational achievement. SES may have a direct influence, for example through poorer nutrition and an increased risk of a range of health and developmental problems, and an indirect influence through limited financial resources in the home, low parental education, reduced ability to help with homework, unemployment, maladjustment or neglect, housing instability or homelessness, greater family stress and poorer neighborhood quality in terms of services and crime (for example, Bradley and Corwyn, 2002; McLloyd, 1998; Reis, 2013; Spencer, 1996).

The greater socio-economic deprivation experienced by ethnic minority groups compared to the White ethnic group has also been well documented. For example, in England in 2016, 14% of White British pupils were eligible for a free school meal (FSM) but this doubled to 25% of Black African, 28% of Black Caribbean and 29% of Mixed White and Black Caribbean pupils (Strand and Lindorff, 2021).

This unevenness extends across many socio-economic dimensions in employment, income, housing and health (Kenway and Palmer, 2007; Strand, 2011). Ethnic minority pupils may therefore be more at risk of low achievement because of the greater socio-economic disadvantage they experience relative to White pupils.

The purpose in taking the socio-economic factors into account is not to ‘explain away’ any ethnic achievement gaps, but to better understand the root causes and therefore identify relevant policy interventions and action. For example, if ethnic achievement gaps reflect the socio-economic disparities between ethnic groups, then a focus on in-service training to address racism by secondary school teachers would be unlikely to deliver substantial change, whereas a focus on increased resourcing for disadvantaged pupils (such as the pupil premium grant) may have a greater likelihood of success.

It is therefore important that any analysis looks not just at ethnicity in isolation, but looks simultaneously at ethnicity and socio-economic status as well as gender. Previous analyses of the first Longitudinal Study of Young People in England (LSYPE) have looked at these 3 factors simultaneously in relation to educational achievement at 11, 14 and 16 year old (See Strand 2011; 2012; 2014). A summary of the results at age 16 is reported in Appendix B. The results indicated average scores for ethnic minority groups were higher than for White British pupils of the same SES and sex, such that ethnic minority status was a facilitator, not a barrier, to achievement. However, the LSYPE cohort took their GCSEs in summer 2006, some time ago. This report analyses recent data from LSYPE2 which provides the most up-to-date data to analyse the combined effect of ethnicity, sex and socio-economic status in relation to students’ educational achievement at 16 year olds.

Methodology

We place the vast amount of information on the methodology in the detailed methodology, so that we can focus immediately on the key findings and discussion. We summarise here only those features that are essential to interpretation of the results and key findings. Detailed description of the dataset and analysis is also given in the detailed methodology.

The dataset

The LSYPE2 recruited a nationally representative sample of 13,000 young people aged 14 in year 9 in the 2012 to 2013 school year, and conducted detailed 45-minute interviews with them and with their parents in their own homes, as well as drawing from linked administrative sources such as the National Pupil Database (NPD).

Importantly, the LSYPE2 includes ethnic minority boosts with a target of 1,000 respondents from each of the main ethnic minority groups, so that the sample size is large enough to support robust national estimates for ethnic minority groups. The students and their families were interviewed again in wave 2 in year 10 and in wave 3 in year 11. Of the 10,396 students who completed wave 3, a total of 9,704 gave their permission for linkage to the NPD so we can analyse their GCSE results from the end of year 11 in summer 2015.

The measures

Ethnic group

In 2019, one-third (32.9%) of the school population in England were from ethnic minority groups. We present a summary at the highest level of aggregation (White, Mixed, Asian, Black, Other) but believe there is value in a more differentiated analysis in relation to the 9 main ethnic groups in England (White British, White Other, Indian, Pakistani, Bangladeshi, Asian Other, Black Caribbean, Black African and Any Other group). We include the Mixed ethnic groups in the ethnic minority part of their heritage – for example, we combine Black Caribbean and Mixed White and Black Caribbean students. The rationale is explained in the detailed methodology.

Socio-economic status

For descriptive purposes we focus on parental occupation as the single most frequently cited measure of social class (Raffe et al, 2006). We use the Office for National Statistics (ONS) Socio-Economic Classification (ONS-SEC), and indicative examples of the classification are given in Appendix B. We employ the dominance method (Erikson, 1984) taking either the father’s or the mother’s occupation, whichever is the highest. We do the same for parents’ educational qualifications and family income. For subsequent statistical modelling, we create a comprehensive measure of socio-economic status incorporating all 3 measures: parental occupational status, parental educational qualifications, and average family income. To do this we take the loading on the first factor of a principal component analysis of the 3 measures.

Educational outcomes

We calculate each pupil’s Best 8 point score, which is the total score across the best 8 examination results achieved by the pupil. The points are calculated on the QCA scale which is not a very familiar metric, and the score distribution is slightly negatively skewed, so for ease of interpretation we have applied a normal score transformation so the outcome is expressed in standard deviation (SD) units.

Therefore, the average score across all students is indicated by zero, and two-thirds of students score in the range between -1 and +1. For a threshold measure we report the percentage of pupils achieving a GCSE grade A* to C in both English and maths. This measure is still reported in secondary school performance tables (based on the percentage achieving a Grade 5 or above using the new 1 to 9 scale first examined from summer 2017) so is more useful than the headline measure in use in 2015, which was 5 or more GCSEs at A* to C including English and maths.

Key findings

Descriptive statistics for achievement by ethnicity, sex and SES

Table 1 and Figure 1 presents the mean Best 8 points score and the percentage achieving GCSE A* to C in both English and mathematics by ethnicity, sex and 3 measures of SES (parental occupation, parental education and family income).

The key points are as follows.

At the highest level of ethnic aggregation, the mean Best 8 score was 0.05 for White students and -0.06 for Black students, giving a Black-White difference of -0.11 SD. This Black-White gap is statistically significant but small. By way of comparison, Cohen’s (1988) effect size thresholds suggest 0.20 SD is small, 0.50 SD is medium and 0.80 is large.

The results contrast strongly with those from the US, where in the 2017 National Assessment of Educational Progress (NAEP), Black students scored -0.81, -0.83 and -0.89 SD below the mean for White students in mathematics at age 10, 14 and 18 respectively. They also scored approximately -0.72 SD below the mean for White students for reading at the same ages (US Department of Education, 2019).

When the ‘Black’, ’Asian’ and ‘White’ groups are disaggregated, some slightly larger gaps are found. However, the only ethnic group with an average score significantly below the White British mean is Black Caribbean and Mixed White and Black Caribbean students, with a gap of -0.29 SD, while Black African and Mixed White and Black African students have a mean score near identical to White British. All other ethnic groups score as well as, or in the case of Indian and Asian Other ethnic groups significantly better than, the White British average.

This Black Caribbean achievement gap is the same magnitude as the gender gap which is also 0.29 SD, with girls scoring higher than boys. However, both gaps are dwarfed by the parental occupation gap, which is over 3 times larger at 0.97 SD. The family income gap is 0.93 SD and the parental education gap is 1.14 SD.

If we take a conservative analysis, comparing the results for the 22% of students in the lowest 3 parental occupational groups (LTU, routine and semi-routine occupations) against the average for the 45% of students with a parent in the highest groupings (higher technical, higher managerial and professional occupations), the gap is 0.81 SD, still 3 times larger than either the Black Caribbean or gender gaps.

Table 2: KS4 results by ethnicity, sex and parental SEC

Variable Values Unweighted N Best 8 score, Mean Best 8 score, SD Best 8 score, SE Level 2 English and maths (%) Level 2 English and maths (SD) Level 2 English and maths (SE)
Ethnic group (aggregated) White 7,534 0.05 0.99 0.01 59.8% 0.49 0.01
Ethnic group (aggregated) Mixed 413 0.09 1.01 0.05 59.9% 0.49 0.02
Ethnic group (aggregated) Asian 937 0.20 0.98 0.03 62.5% 0.48 0.02
Ethnic group (aggregated) Black 743 -0.06 0.86 0.04 55.0% 0.50 0.02
Ethnic group (aggregated) Other 77 0.02 1.20 0.14 58.7% 0.50 0.06
Ethnic group White British 7,250 0.05 0.98 0.01 59.8% 0.49 0.01
Ethnic group White Other 284 0.15 1.03 0.05 59.2% 0.49 0.03
Ethnic group Black Caribbean, and Mixed White and Black Caribbean 438 -0.24 0.95 0.06 49.7% 0.50 0.03
Ethnic group Black African, and Mixed White and Black African 489 0.06 0.84 0.04 60.6% 0.49 0.03
Ethnic group Indian 221 0.42 0.96 0.06 72.1% 0.45 0.03
Ethnic group Pakistani 337 -0.07 0.92 0.05 53.9% 0.50 0.03
Ethnic group Bangladeshi 230 0.13 0.86 0.08 61.1% 0.49 0.04
Ethnic group Asian Other, and Mixed White and Asian 254 0.40 1.07 0.06 64.4% 0.48 0.03
Ethnic group Any other ethnic group 201 0.08 1.04 0.08 59.5% 0.49 0.04
Sex Boy 4,851 -0.08 0.98 0.01 54.7% 0.50 0.01
Sex Girl 4,853 0.21 0.97 0.01 65.2% 0.48 0.01
SEC8 Never worked or long-term unemployed 317 -0.40 0.93 0.06 38.1% 0.49 0.03
SEC8 Routine occupations 828 -0.52 0.95 0.04 40.5% 0.49 0.02
SEC8 Semi-routine occupations 1,513 -0.40 0.89 0.02 43.6% 0.50 0.01
SEC8 Lower supervisory and technical 583 -0.32 0.85 0.04 42.8% 0.50 0.02
SEC8 Small employers and own account 855 -0.09 0.94 0.03 55.3% 0.50 0.02
SEC8 Intermediate occupations 1,394 0.05 0.88 0.02 61.2% 0.49 0.01
SEC8 Lower professional and higher technical 2,753 0.27 0.92 0.02 69.1% 0.46 0.01
SEC8 Higher managerial and professional 1,428 0.57 0.98 0.02 74.1% 0.44 0.01
SEC3 Long-term unemployed, routine and semi-routine 2,658 -0.43 0.91 0.02 42.1% 0.49 0.01
SEC3 Intermediate 2,832 -0.07 0.91 0.02 55.7% 0.50 0.01
SEC3 Managerial and professional 4,181 0.38 0.95 0.01 70.9% 0.45 0.01
Parent education No qualifications 819 -0.60 0.90 0.04 35.1% 0.48 0.02
Parent education Other qualifications 145 -0.42 0.86 0.08 42.6% 0.50 0.04
Parent education Some GCSE passes or equivalent 1,536 -0.33 0.86 0.02 45.8% 0.50 0.01
Parent education 5 or more GCSE passes at A* to C or equivalent 1,670 -0.19 0.86 0.02 52.7% 0.50 0.01
Parent education A or AS levels, or equivalent 1,384 0.02 0.91 0.02 60.8% 0.49 0.01
Parent education Higher education below degree (for example, HND) 1,489 0.14 0.88 0.02 65.1% 0.48 0.01
Parent education Degree (for example, BA, BSc, MA) 0.54 0.99 0.02 73.5% 0.44 0.01  
Family income Lowest 20% 1,846 -0.41 0.09 0.02 42.9% 0.50 0.01
Family income Next 20% 1,684 -0.27 0.93 0.02 48.2% 0.50 0.01
Family income Middle 20% 1,912 -0.11 0.91 0.02 56.5% 0.50 0.01
Family income Next 20% 1,998 0.17 0.90 0.02 65.5% 0.48 0.01
Family income Highest 20% 2,263 0.52 0.96 0.02 73.0% 0.44 0.01
All pupils   9,704 0.06 0.98 0.01 61.8% 0.49 0.01

Notes: SEC is the ONS Socio-economic classification (SEC) of the occupation of the highest classified parent. Parent Educ. is the highest educational qualification held by the most qualified parent. Family income is average family income expressed in quintiles.

Figure 2: Mean Best 8 points score by ethnic group, sex and parental SEC

Chart showing mean best 8 points scores by ethnic group, sex and parental socio-economic classification (SEC). SEC is taken from the occupation of the highest classified parent.

Figure 3: Mean Best 8 points score by ethnic group, sex and parental SEC

Chart showing mean best 8 scores by ethnic group, level of socio-economic status (SES) and sex.

Ethnicity and socio-economic status (SES)

Considering the 3 factors of ethnic group, sex and SES separately is limited, because there is significant confounding between these variables. Most particularly, levels of socio-economic disadvantage are substantially higher among ethnic minority groups than among the White British majority. Table xxx presents averages for a wide range of socio-economic measures separately for each ethnic group.

The key findings are:

Parental occupation (r= 0.38), parental education (r= 0.38) and family income (r= 0.38) were all positively correlated with KS4 Best 8 score, but the overall SES measure gave the highest correlation (r= 0.45). Therefore, SES is the best single measure in relation to exam success.

In terms of SES, White British (0.22 SD), Indian (0.21 SD) and Asian Other (0.11 SD) had mean SES scores above average, Black Caribbean (-0.15 SD), Black African (-0.12 SD) and White Other (-0.14 SD) were closely grouped, while Pakistani (-0.53 SD) and Bangladeshi (-0.83 SD) had substantially the lowest SES.

The gaps in the underlying measures are often stark:

  • for 20% of White British students the highest parent occupation is ‘LTU, routine or routine occupation’, but this more than doubles to over 40% for each of the Black African, Pakistani and Bangladeshi ethnic groups
  • for 29% of White British students at least one parent has a degree, compared to Black African (40%), Indian (43%) and Asian Other (52%) students, but just 13% of Bangladeshi students
  • White British students had the highest annualised family income (£40,785), followed by Indian (£36,246) and Asian Other (£33,862), but is more than one-third lower for Black Caribbean (£29,485) and Black African (£28,405) students, and half as high for Pakistani (£22,693) and Bangladeshi (£19,828) students
  • 24% of White British students have been entitled to a free school meal at some time in the last 6 years, but this is more than doubled for Black Caribbean (47%), Any Other (49%), Black African (53%) and Bangladeshi (61%) students

While Black Caribbean and Black African students had similar overall SES (-0.15 and -0.12 respectively), they differed in their profile across the 3 underlying components: Black African students have a higher proportion of parents in ‘LTU, routine or semi-routine’ occupations (41% vs. 31%) and slightly lower family annualised income (£28,405 vs. £29,475), but had a higher proportion of parents educated to degree level (40% vs. 23% respectively).

Table 3: socio-economic variation between ethnic groups

You may need to scroll horizontally to see all columns.

Ethnic group Unweighted N SES, mean SES, SD ONS-SEC, LTU to semi-routine ONS-SEC, Intermediate ONS-SEC, Managerial and professional Parental education, % no qualification Parental education, % degree Family income, mean Family income, SD Ever6 % FSM % IDACI, Q1 (least deprived) IDACI, Q4 (most deprived)
White British 7,250 0.22 0.97 19.5% 29.4% 51.1% 4.8% 28.7% 40,785 25,608 24.1% 13.8% 29.8% 17.7%
White Other 284 -0.14 0.99 34.9% 33.8% 31.3% 13.4% 36.6% 31,977 23,443 27.3% 14.6% 11.3% 39.5%
Black Caribbean, and Mixed White and Black Caribbean 438 -0.15 0.93 31.2% 29.7% 39.2% 9.7% 22.8% 29,475 20,917 47.3% 29.0% 8.0% 53.4%
Black African, and Mixed White and Black African 489 -0.12 1.04 40.7% 19.5% 39.8% 11.0% 40.2% 28,405 22,068 52.6% 31.0% 4.5% 66.3%
Indian 221 0.21 0.92 19.7% 27.7% 52.5% 8.1% 43.2% 36,246 22,694 21.9% 9.8% 13.4% 26.4%
Pakistani 337 -0.53 0.92 42.2% 38.7% 19.2% 20.8% 24.0% 22,693 17,820 42.6% 27.9% 4.4% 57.5%
Bangladeshi 230 -0.83 0.84 42.4% 15.2% 32.0% 12.8% 20,340 16,576 61.3% 38.7% x 73.8%  
Asian Other, and Mixed White and Asian 254 0.11 1.02 27.1% 27.1% 45.8% 8.4% 51.6% 33,862 25,176 30.3% 18.4% 18.4% 35.4%
Any other ethnic group 201 -0.12 0.99 32.6% 29.2% 38.2% 9.0% 36.5% 28,228 22,799 48.9% 32.4% 10.7% 48.6%
All pupils 9,704 0.14 0.99 22.7% 29.5% 47.8% 6.6% 30.0% 38,310 25,368 27.7% 16.2% 25.4% 24.5%

Notes. ‘SES’ is a standardised score of the loading on the first factor from a principal components analysis of parental occupation, parental education and average family income. ‘Parental occupation’ as coded by the ONS Socio-Economic Classification (ONS-SEC) 3 category version. ‘LTU’ means long term unemployed, defined as 6 months or more. ‘Parental education’ is the highest qualification assessed on a 7 point scale ranging from no educational qualifications through to university degree. ‘Family income’ is average equivalised income per annum. ‘FSM’ indicates eligibility for free school meals in January of year 11. ‘EVER6’ indicates entitlement to free school meals at any point during the last 6 years (Y6-Y11). ‘IDACI’ is the Income Deprivation Affecting Children Index quartile, based on the proportion of children in the neighbourhood from families entitled to state benefits. ‘X’ indicates fewer than 10 cases in the cell so the value is suppressed following ONS rules.

Interactive effects of ethnicity, sex and SES with achievement

Given these results, we complete a regression analysis to look at the combined associations of achievement with ethnicity, sex and SES. There were several highly significant ethnic and SES interactions, one ethnic and sex interaction and a 3-way ethnic, SES and sex interaction. Therefore, a full-factorial model was specified and effects were assessed using estimated marginal means. The parameters from the model are given in Appendix C.

Table 3 and Figure 4 present the mean Best 8 score for each ethnic, SES and sex combination, along with the ethnic achievement gap showing the difference between the average score for the ethnic minority compared to White British pupils of the same sex and SES.

The key findings are as follows.

Mean Best 8 score

The groups with the lowest achievement at age 16 are White British, and Black Caribbean and Mixed White and Black Caribbean students from low SES backgrounds, who are scoring substantially below the average for all students (which is set at zero). This is most pronounced for boys (-0.77 SD and -0.68 SD respectively), but low SES girls in the Black Caribbean and Mixed White and Black Caribbean, and White British ethnic groups are also the lowest scoring groups of girls (-0.54 SD and -0.39 SD respectively).

Low SES boys in the Pakistani, White Other and Any Other ethnic groups also score well below the mean, but still score substantially higher than comparable White British, and Black Caribbean and Mixed White and Black Caribbean peers.

Among students from average SES backgrounds, only Black Caribbean and Mixed White and Black Caribbean boys and White British boys score below the grand mean.

Beyond the above, no ethnic, SES and sex combination scores substantially below the grand mean, with the majority scoring well above the average.

Ethnic gaps relative to White British

The overwhelming picture is that ethnic minority groups have higher educational achievement at age 16 than White British students of the same sex and SES. This is particularly notable at low and average SES, where no ethnic minority groups have a significantly lower score than White British students, and indeed in 23 of the 32 comparisons the mean score for ethnic minority students is substantially higher than for comparable White British students.

There are only 2 instances of ethnic under-achievement compared to White British students of the same SES and sex. First, Black Caribbean and Black African boys from high SES families score more than 0.20 SD lower than comparable White British boys. Second, Pakistani girls from high SES backgrounds do not achieve as well as White British high SES girls, and substantially below high SES Pakistani boys, who have the highest mean score of all groupings.

Table 4: Mean best 8 score by ethnic group, SES and sex, and ethnic achievement gaps relative to White British

Sex Ethnic group Mean Best 8 score, Low SES (-1SD) Mean Best 8 score, Average SES Mean Best 8 score, High SES (+1SD) Gap vs White British, Low SES (-1SD) Gap vs White British, Average SES Gap vs White British, High SES (+1SD)
Boys Black Caribbean, and Mixed White and Black Caribbean -0.77 -0.41 -0.06 -0.09 -0.19 -0.30
Boys White British -0.68 -0.22 0.24 - - -
Boys Any other ethnic group -0.36 -0.08 0.21 0.32 0.15 -0.03
Boys Black African, and Mixed White and Black African -0.08 -0.03 0.03 0.60 0.19 -0.21
Boys Pakistani -0.44 0.12 0.68 0.23 0.34 0.45
Boys White Other -0.35 0.06 0.46 0.33 0.28 0.22
Boys Asian Other, and Mixed White and Asian -0.11 0.20 0.51 0.57 0.42 0.27
Boys Indian 0.03 0.18 0.33 0.70 0.40 0.10
Boys Bangladeshi 0.07 0.25 0.45 0.75 0.47 0.21
Girls Black Caribbean, and Mixed White and Black Caribbean -0.54 0.01 0.56 -0.15 -0.09 -0.02
Girls White British -0.39 0.09 0.58 - - -
Girls Any other ethnic group -0.12 0.30 0.71 0.27 0.20 0.13
Girls Black African, and Mixed White and Black African 0.12 0.27 0.43 0.52 0.18 -0.15
Girls Pakistani -0.04 0.16 0.36 0.35 0.07 -0.22
Girls White Other -0.20 0.33 0.86 0.19 0.24 0.29
Girls Asian Other, and Mixed White and Asian 0.17 0.49 0.81 0.56 0.40 0.23
Girls Indian 0.18 0.60 1.01 0.58 0.51 0.43
Girls Bangladeshi 0.23 0.62 1.00 0.63 0.53 0.42

Notes: Mean Best 8 scores show the difference between the mean score for the group and the grand mean score across all pupils (which is set to 0). Gap vs White British shows the difference in the mean score between the ethnic minority and White British students of the same sex and SES. Ethnic groups are sorted in order of the mean Best8 score for pupils of average SES.

Figure 4: Mean best 8 score by ethnic group, level of SES and sex

Graphs showing the mean best 8 score by ethnic group, socio-economic group and sex. Mean Best 8 scores show the difference between the mean score for the group and the grand mean score across all pupils (which is set to 0).

Discussion

Ethnicity and low educational achievement

The key finding is that White British and Black Caribbean students, both boys and girls, from low SES backgrounds are the lowest achieving groups of all students. While low SES boys from Pakistani, White Other and Any Other ethnic groups also score below the overall average, they are still scoring significantly higher than White British and Black Caribbean low SES boys. It is also notable that at mean SES, it is again only White British and Black Caribbean boys who score substantially below the average. A key question therefore is why most ethnic minority groups are so much more resilient compared to White British and Black Caribbean students.

The ‘immigrant paradigm’ (Kao and Thompson, 2003) suggests that recent immigrants devote themselves more to education than the native population because they lack financial capital and see education as a way out of poverty. In a similar vein, Ogbu (1978) makes a distinction between ‘voluntary minorities’ (such as immigrant groups who may be recent arrivals to the country and have very high educational aspirations) and ‘involuntary’ or ‘caste like’ minorities (such as African Americans or Black Caribbean and White working class pupils in England) who hold less optimistic views around social mobility and the transformative possibilities of education.

This theory can, for example, account for the substantial contrast between Black Caribbean and Mixed White and Black Caribbean pupils on the one hand and Black African and Mixed White and Black African pupils on the other, whose achievement is substantially higher despite the same or higher levels of risk in terms of low SES, neighbourhood deprivation, and poverty. Most Black Caribbean and Mixed White and Black Caribbean pupils are third generation UK born, while many Black African pupils are more recent immigrants, some of whom have arrived directly from abroad. For example, the 2011 national population Census indicates that one-third (66.7%) of the Black African population were born outside of the UK, compared to 39.8% of the Black Caribbean population (ONS, 2013).

But if ‘immigrant optimism’ is the explanation, why does the achievement of Black Caribbean and Mixed White and Black Caribbean students more closely match that of White British students, particularly at low SES, rather than matching other ethnic minority groups? Partly this may be because they are one of the longer-standing migrant groups, with the largest waves of migration in the 1950s and early 1960s.

Ogbu (1978) suggests that those minorities who have been longest established in a country, particularly in a disadvantaged context, may be the least likely to be optimistic about the possibilities of education to transform their lives, and several studies have noted this ‘second generation’ gap (for example, Rothon et al, 2009). But Indian and Pakistani migration was also high during the 1950s and 1960s, why is the achievement profile for these ethnic groups not also closer to White British students?

Perhaps relevant here is “selective assimilation theory”. Black Caribbean migrants in the 1960’s predominantly moved into poor urban and inner city areas populated by the White British working class. The intersecting of the communities is reflected in the high level of inter-ethnic partnerships and births, with there now more being students in school from the Mixed White and Black Caribbean ethnic group than there are from the Black Caribbean ethnic group (1.6% vs. 1.1% of the school population) (DfE, 2019). Thus, Black Caribbean and Mixed White and Black Caribbean students may have cultural attitudes that parallel their (predominantly) White British working class neighbours.

In contrast, other long standing ethnic minority groups have different patterns of migration. Indian migrants were more likely to be of high SES in their host countries, many were professionals and managers, and migrated to a more varied and diverse selection of geographical areas. Other groups such as Pakistani migrants, while also tending to move predominantly to poor areas of inner cities where housing was cheap, tended to have higher levels of ethnic segregation, retaining greater cultural homogeneity.

The most direct support for the ‘immigrant optimism’ thesis comes from Strand (2011; 2014), in his analysis of the original LYSPE, which identified 4 key factors underlying the greater resilience of low SES ethnic minority pupils:

  • high educational aspirations on the part of students to continue in education post-16 and to attend university, placing education in central role for achieving their future goals
  • high educational aspirations by parents and strong ‘academic press’ at home
  • high levels of motivation and homework completion
  • strong academic self-concept

There is insufficient time to undertake further analysis at present before the deadline for this report, but further analysis will be completed later in the year to see if these results from LSYPE are replicated for LSYPE2.

Ethnic minority underachievement

The overwhelming picture is that ethnic minority groups have higher average levels of achievement than White British peers of the same SES and sex. While they were very much exceptions to the rule, there were 2 specific instances of ethnic under-achievement.

First, Black Caribbean and Black African boys from high SES homes underachieved relative to White British high SES boys. What underlies this particular finding is not known, and worthy of further investigation. Previous research has indicated that Black Caribbean pupils are under-represented by their teachers in entry to higher tier examinations, after a wide range of controls for prior attainment, SES, attitudes and behaviour (Strand, 2012), and that Black Caribbean and Mixed White and Black Caribbean pupils are more often subject to disciplinary sanctions like exclusion than other ethnic groups, again after control for covariates (Strand and Fletcher, 2014).

It may be that in school settings, negative expectations about Black boys lead to greater surveillance and pre-emptive disciplining by teachers, which may be particularly disproportionately felt by Black middle class boys (Gillborn et al, 2012). Alternatively, it may be that White British middle class families use their financial resources to purchase advantages, like private schooling, to a greater extent than Black middle class families. In the LSYPE2 we found 6.7% of White compared to 2.2% of Black pupils attended independent schools, although analysis of the British Social Attitudes survey suggests no significant difference (Evans and Tilley, 2012).

Out of school factors may also be influential. For example, Foster et al. (1996) and Sewell (2009) argue that Black boys experience considerable pressure by their peers to adopt the norms of an ‘urban’ or ‘street’ subculture where more prestige is given to unruly behaviour with teachers than to high achievement or effort to succeed (for example, Foster et al., 1996; Sewell, 2009). Gangster culture and hyper-masculinity may be shared to greater extent by White and Black boys within working class contexts, more so than in middle class spaces. Issues of identity could also be felt particularly by Black middle class boys, with some researchers suggesting Black middle-class families often express “an unease about middleclassness which was viewed by some as a White social category” (Ball et al, 2013, p270, see also Archer, 2010; 2011). Of course, these arguments are not mutually exclusive, both in-school and out-of-school factors may well play a role.

Second, Pakistani high SES girls underachieved compared both to White British high SES girls, and indeed achieved less well than high SES Pakistani boys. It may be that traditional attitudes to gender roles, lower perceived benefits of daughters’ relative to sons’ education, and threats to respectability and modesty expressed by parents in Pakistan (Purewal and Hashmi, 2015) also apply in England. However, Fleischmann and Kristen (2014) looking at second generation immigrants in 9 European countries (including England and Wales) indicate that gender gaps favouring males in countries of origin are largely reversed in the second generation, transforming to the patterns of female achievement advantage seen in the host countries. This is a small group within the LSYPE2 dataset, because of the very skewed SES distribution for Bangladeshi and Pakistani students. For example, the number of Pakistani pupils in the top top 20% of SES is just 17 and fewer than 10 Bangladeshi pupils (the comparable figure for White British pupils is 1667 cases). The finding should therefore be treated with caution, but is worthy of further investigation.

Conclusion

These results indicate that ethnic minority groups on average achieve higher levels of success in education at age 16 than White British pupils. To the extent that there is a small gap for Black Caribbean students, this seems to reflect structural inequality in SES, with fewer parents in managerial and professional roles and lower average family income. Gaps in achievement at age 16 related to SES are large and persistent, and represent by far the greatest challenge to equity and social mobility agendas.

Educational achievement at age 16 is crucial, in that it acts as a gatekeeper to higher education and employment opportunities later in life. Nevertheless, ethnic variation in outcomes at later ages still remains. For example, in access to high-tariff universities (Boliver, 2016), in entry to work (Heath and Di Stasio, 2019) and to the highest occupational groups (UK Government, 2020).

Detailed methodology

The measures

Ethnic minority groups

Table xxx indicates the unweighted number of pupils within each ethnic group as recorded in the LSYPE2 wave 3 dataset and with valid linkage to the NPD. The third column of the table shows the percentage that each ethnic group represents in the whole school population, sourced from the 2019 school census. This shows that one-third of the school population in England (32.9%) are from an ethnic minority group (DfE, 2019).

Table 5: Ethnic coding for purposes of analysis of LSYPE2

Table 5(a): Full set of ethnic codes

Ethnic group LSYPE2 Unweighted N % of England school population (2019)
White British 7,250 67.1%
White Irish 24 0.3%
Irish Traveller (a) 0.1%
Gypsy Roma (a) 0.3%
White Other 260 6.7%
Mixed White and Black Caribbean 151 1.6%
Mixed White and Black African 63 0.8%
Mixed White and Asian 105 1.4%
Mixed Other 94 2.2%
Indian 221 3.2%
Pakistani 337 4.5%
Bangladeshi 230 1.8%
Chinese 27 0.5%
Asian Other 122 1.9%
Black African 426 3.9%
Black Caribbean 287 1.1%
Black Other 30 0.8%
Any Other ethnic group 77 2.0%
Total 9,704 100%

Table 5(b): Ethnic groups used in the analysis

LSYPE2 analytic groups LSYPE2 Unweighted N % of England school population (2019)
White British 7,250 67.1%
White Other 284 7.3%
Black Caribbean, and Mixed White and Black Caribbean 438 2.7%
Black African, and Mixed White and Black African 489 4.7%
Indian 221 3.2%
Pakistani 337 4.5%
Bangladeshi 230 1.8%
Asian Other, and Mixed White and Asian 254 3.8%
Any other ethnic group 201 5.0%
Total 9,704 100.1%

Notes: (a) less than 10 pupils so number suppressed.

In analysing the LSYPE2 data, a balance needed to be struck between the number of ethnic groups, the size of these groups in the school population and the number of cases in the specific LSYPE2 sample.

The largest ethnic minority groups (Indian, Pakistani, Bangladeshi, Black African, Black Caribbean, White Other and Asian Other) were retained.

The Mixed ethnic groups have been shown to be extremely heterogenous with little in common in terms of the achievement profile among the sub-groups (see Strand, 2015). In term of their achievement profile, there is greater similarity with the ethnic minority side of their Mixed ethnicity. For example, the achievement of Mixed White and Black Caribbean pupils is similar to that of Black Caribbean pupils, the achievement of Mixed White and Black African pupils is similar to the Black African, and the achievement of Mixed White and Asian (MWAS) pupils is similar to that of Asian Other pupils. This is shown in Figure xxx, which is drawn from Strand (2015), p32.

Figure 5

Graph showing ethnicity, deprivation and educational achievement at age 16 in England over time.

Source: Strand (2015). ‘Ethnicity, deprivation and educational achievement at age 16 in England: trends over time.’ DfE Research Report 439B, p32.

Therefore, to more accurately reflect the patterns of achievement, and to maximise the analytic samples, the Mixed ethnic groups were included with the relevant ethnic minority group.

Smaller ethnic groups were merged. Thus, White Irish and Gypsy Roma Travellers (GRT) were included in White Other; Chinese were included in Asian Other and MWAS; and Black Other and Mixed Other groups were included in Any Other ethnic group.

Table 5(b) shows the 9 ethnic groups used for this analysis, the unweighted number of cases in each group and the percentage the groups represent in the whole school population (school census 2019).

Family socio-economic classification (SEC)

We utilised the ONS Socio-Economic Classification (SEC). A family SEC variable is included in LSYPE2 based upon the household reference person (HRP), but in a large number of cases the HRP was not interviewed (n=487) or the individual was not classifiable (n=121). We therefore created our own family SEC measure. First, we took the SEC for the main parent, which had fewer missing or unclassifiable instances (n=116). Second, to create a family measure, we substituted the SEC of the second parent (if present) if it was higher than for the main parent. As a robustness check we completed the same process taking the highest of the mother’s or father’s SEC. This measure was very highly correlated (r=0.996) with the MP/SP version, but the MP/SP version had fewer missing cases (n=116 as opposed to n=502) so was preferred.

Table 6: ONS Socio-economic classification (SEC) categories: LSYPE2 Sample

Code SEC8 category SEC 3 category
8
7
Higher managerial and professional
Lower professional and higher technical
Professional
6
5
4
Intermediate occupations
Small employers and own account workers
Lower supervisory and technical
Intermediate
3
2
1
Semi-routine occupations
Routine occupations
Never worked or long-term unemployed
Low

We also looked in wave 2 and wave 3 for SOC2010 values if there was no SEC record in the wave 1 file. These employ 9 major groups and 25 sub-major groups (see SOC2010 volume 1: structure and descriptions of unit groups). We converted codes between SOC2000 and SOC2010 where needed (see https://www.bls.gov/soc/soc_2000_to_2010_crosswalk.xls). We were able to find valid values for all but 33 cases.

Parental educational qualifications

We took the highest educational qualification of the main parent, substituting the highest qualification of the second parent (where present) if it was higher, termed the dominance method (Erikson, 1984). If we could not find a value in the wave 1 file we again sourced the variable from the wave 2 or wave 3 file. We were able to find valid values for all but 27 cases. A small number of cases (n=37) which were coded as ‘entry level qualifications’ were combined with ‘Other qualifications’. This created a 7 point scale ranging from ‘No educational qualifications’ through to ‘Degree or equivalent’. Descriptive statistics showing the relationship with student achievement are given in Table 1.

Family income

Household income is based on a survey response, with respondents picking a band from a list to represent the annual household income from all sources. The results have been edited to take account of implausible responses, primarily through the use of self-reported earnings data.

Earnings data was generally more credible, not least because parents reported their own earnings, over the time period of their choice, rather than having to combine sources and annualise the results. This data has also been edited where implausible, such as where what looked like an annual salary for the stated occupation was reported as being paid weekly.

Where the plausible earnings of a household were greater than the annual income selected, the earnings have been used instead. This is likely to underestimate the true income, as it excludes other sources such as benefits, but should still represent an improvement on the self-reported estimate.

The data was collected in 15 bands allowing a high degree of differentiation. For descriptive purposes we used the midpoint of the ranges as the data value rather than the band number to give a mean income in pounds per annum. It should be noted that income data is notoriously difficult to collect accurately via household surveys, and LSYPE2 is no exception, with a high level of non-response. To deal with this, we took the average income over all 3 waves of the LSYPE2, this reduced the missing cases to n=437 (or 4.5%) of our sample. To avoid losing these cases, we imputed the value predicted from a regression of income on other variables closely related to income (entitlement to a FSM, IDACI score and parental SEC), so only had one missing value in the final analysis.

Income deprivation affecting children index (IDACI)

IDACI is produced by the Ministry of Housing, Communities and Local Government. The index is based on 32,482 super output areas (SOAs) in England, which are geographical regions of around 1,500 residents, designed to include those of similar social backgrounds.

The IDACI score is the percentage of under-16s in the SOA living in income deprived households (primarily defined by being in receipt of certain benefits). This variable is highly skewed and so for the purpose of the current analysis the measure was normal score transformed to give a variable with a mean of 0 and SD=1. A score above 0 indicate greater than average deprivation, and score below 0 indicate less than average deprivation, relative to the average for the LSYPE2 sample. Both 2001 and 2007 IDACI measures were included in the LSYPE2 file. The means of the 2 were nearly identical (24.7% and 25.7%) and they correlated r=0.97, so the more recent 2007 values were used. You can see more information about IDACI.

FSM and EVER6

We took from the January census of year 11 whether the pupil was entitled to a free school meal (FSM) or had ever been entitled over the last 6 years (EVER6).

The LSYPE2 sample

The primary sample frame for LSYPE2 was the England school census, which was used to identify sample members in state-funded education. This provides access to pupil-level characteristics information about these young people, which was used to stratify the sample.

The stratification has been designed to maintain minimum numbers in certain subgroups of interest right through to the planned end of the survey, to ensure robust analyses of these groups can continue. These subgroups include those with free school meals, those with special educational needs (SEN), and certain ethnic groups. The sample also included pupils from independent schools and pupil referral units (PRUs), these schools and settings were sampled first and then asked to supply contact details for pupils.

Interviews took place with both the young person and at least one parent in the first 3 waves (until the young person was 15 or 16 years old). In wave 1 the interviews took place over a 5-month period, starting in early April 2013 and finishing in early September 2013. In wave 1 LSYPE2 achieved a response rate of 71%, representing an achieved sample of 13,100.

The analytic sample

As stated, there were 13,100 responding young people in wave 1 of LSYPE2. Of these, 12,152 responded in wave 2 and 10,396 in wave 3. Of those responding in wave 3, a total of 9,307 gave permission for linkage and were matched to results in the NPD. Some of those giving permission were in independent schools (n=410) who were missed by the DfE in the initial data match, and so are not yet included in our analysis (at 18/12/20). 9.307 was the total sample available, and we had complete observations for ethnic group and sex, but a small number of cases that were missing parental SEC (n=49), parental education (n=22), family income (n=26), SES (n=69), entitlement to a FSM/EVER6 (n=17) or IDACI (n=7), had to be excluded on a pairwise basis. The ONS-SRS does not have the SPSS Missing Values module, so we cannot impute missing values for these cases, but we will explore whether this might be possible through other means at a later date.

Approach to analysis

We were primarily interested in the relationship between variables, not in simply recapturing descriptive statistics for the relevant population. In these cases, the use of weights is sometimes argued to be problematic (Solon, Haider and Woodridge, 2015). However, given the extent of attrition from wave 1 to wave 3 of LSYPE2, we considered it important to use weights that are meant to limit the effect of differential attrition, and used the combined design and non-response scaled sampling weights from wave 3 in all analyses (LSYPE2_W3_Weight_scaled).

The ONS-SRS has not purchased the SPSS Complex Samples module, and so, despite the software being available to university staff and students throughout the country, we were not able to use it to simultaneously account for weight and for clustering at the school level.

However, we also ran all our models using a complex survey design using the svydesign() and svyglm() functions contained within version 3.35-1 of the Survey package (Lumley, 2019) in version 3.6.1 of R (R Core Team, 2019). These models used the students’ KS4 school URN as the cluster ID and the LPYSE2_W3_Weight_scaled as the sampling weight. In all cases there were no substantive differences in results, means were near identical. Although SEs tended to be marginally higher, all results that were statistically significant in our SPSS regressions were also significant in the R versions. Therefore, we do not consider this a problem for the analysis.

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Appendix A: Age 16 points score by ethnic group, gender and SES from LSYPE (Strand, 2014)

The KS4 exam results for all pupils in England are available as part of the National Pupil Database (NPD), but there is only very limited data on socio-economic status (SES). The NPD contains only a single measure of SES sourced directly from the pupil, which is whether the pupil is, or is not, entitled to a free school meal (FSM), or whether they have ever been entitled to a FSM at some time in the last 6 years (EVER6). There are often criticisms that some pupils do not claim a FSM even if entitled because of the stigma, but perhaps more problematic is that a simple binary measure tells us nothing about the huge differences in home circumstances among the 85% of pupils who are not entitled to a FSM, which can range from families only just over the income threshold for FSM to those from extremely well-off circumstances.

Fortunately, there is good data on both ethnicity and SES is some of the England longitudinal datasets. For example, Strand (2014) used the Longitudinal Study of Young People in England (LSYPE) to draw on data on parents’ occupational classification, their educational qualifications, whether they owned their own home, the deprivation of the neighbourhood in which they lived as well as whether the student was entitled to a FSM, in order to create a robust and differentiated measure of the family socio-economic status (SES). The LSYPE also includes ethnic minority boosts with a target of 1,000 respondents from each of the main ethnic minority groups, so that the sample size is large enough to support robust national estimates for ethnic minority groups.

The results of the analysis are presented below.

Graphs showing the mean best 8 score by ethnic group, socio-economic group and sex. Mean Best 8 scores show the difference between the mean score for the group and the grand mean score across all pupils (which is set to 0).

Notes: (1). The outcome (total points score) was drawn from examinations completed in 2006, and is a measure of achievement based on all examinations completed by the young person at age 16, expressed on a scale where 0 is the mean (average) score for all Young People at age 16 and two-thirds of YP score between -1 and 1. (2). The SES measure also has a mean (average) of zero and the effects for low SES are estimated at -1SD and of high SES at +1SD. Source: See Strand (2014) for full details.

Appendix B: Indicative examples of professions in the ONS statistics socio-economic classification (ONS-SEC)

Table 7: Indicative examples of professions in each reduced NS-SEC class

NS-SEC class Examples of jobs
1. Higher managerial and professional Lawyers, architects, medical doctors, chief executives, economists
2. Lower managerial and professional Social workers, nurses, journalists, retail managers, teachers
3. Intermediate Armed forces up to sergeant, paramedics, nursery nurses, police up to sergeant, bank staff
4. Small employers and own account workers Farmers, shopkeepers, taxi drivers, driving instructors, window cleaners
5. Lower supervisory and technical Mechanics, chefs, train drivers, plumbers, electricians
6. Semi routine Traffic wardens, receptionists, shelf stackers, care workers, telephone salespersons
7. Routine Bar staff, cleaners, labourers, bus drivers, lorry drivers

Table source: Office for National Statistics

Long Term Unemployed (LTU) are defined as those who have been out of work for 6 months or longer and are included as an eighth category.

Most recently this has been highlighted in the Government’s Racial Disparity Audit (RDA), as reported on the government’s Ethnicity fact and figures website. Black African pupils are 3 times more likely than White British pupils to be entitled to a free school meal, Black Caribbean pupils are 3 times more likely to live in persistent poverty than White British pupils, pupils in the Pakistani and Bangladeshi ethnic groups are more likely than other groups to live in the most disadvantaged neighbourhoods, and so on (for example, Strand, 2011).

Appendix C: Full factorial regression of Best8 score: regression coefficients and parameters

Model parameters B SE sig.
Constant 0.097 0.019 0.000
Boy -0.300 0.024 0.000
White Other 0.252 0.085 0.003
Black Caribbean, and Mixed White and Black Caribbean -0.062 0.065 0.343
Black African, and Mixed White and Black African 0.131 0.063 0.037
Indian 0.528 0.078 0.000
Pakistani 0.059 0.096 0.542
Bangladeshi 0.548 0.128 0.000
Asian Other, and Mixed White and Asian 0.451 0.118 0.000
Any other ethnic group 0.235 0.106 0.027
SES 0.483 0.020 0.000
White Other * Boy 0.035 0.119 0.770
Black Caribbean, and Mixed White and Black Caribbean * Boy -0.120 0.094 0.203
Black African, and Mixed White and Black African * Boy 0.000 0.091 0.996
Indian * Boy -0.159 0.131 0.226
Pakistani * Boy 0.241 0.113 0.033
(statistically significant)
Bangladeshi * Boy -0.251 0.184 0.173
Asian Other, and Mixed White and Asian * Boy -0.022 0.151 0.886
Any other ethnic group * Boy -0.108 0.154 0.482
Boy * SES -0.031 0.033 0.347
White Other * SES 0.080 0.095 0.402
Black Caribbean, and Mixed White and Black Caribbean * SES 0.051 0.064 0.428
Black African, and Mixed White and Black African * SES -0.315 0.062 0.000
(statistically significant)
Indian * SES -0.092 0.088 0.301
Pakistani * SES -0.258 0.084 0.002
(statistically significant)
Bangladeshi * SES -0.071 0.097 0.465
Asian Other, and Mixed White and Asian * SES -0.191 0.091 0.037
(statistically significant)
Any other ethnic group * SES -0.071 0.099 0.473
White Other * Boy * SES -0.142 0.123 0.251
Black Caribbean, and Mixed White and Black Caribbean * Boy * SES -0.143 0.097 0.144
Black African, and Mixed White and Black African * Boy * SES -0.039 0.091 0.672
Indian * Boy * SES -0.171 0.122 0.163
Pakistani * Boy * SES 0.344 0.114 0.003
(statistically significant)
Bangladeshi * Boy * SES -0.272 0.155 0.081
Asian Other, and Mixed White and Asian * Boy * SES 0.013 0.130 0.919
Any other ethnic group * Boy * SES -0.039 0.150 0.795

Notes: Estimated with adjustments for LSYPE3 weights and clustering at the school level.