Corps de l’article

There now exists a substantial body of research on the relative earnings of visible minorities in Canada. Most recently, studies by Baker and Benjamin (1997), Pendakur and Pendakur (1998), and Hum and Simpson (1999) appear, in general, to confirm the designation of visible minorities as one of the four disadvantaged groups in the Canadian labour markets. However, there remain disagreements concerning the magnitude of this labour market disadvantage, its inter-generational tenacity, and its source. At least some of the disparate findings may be due to different methodologies, ethnic minority focus groups and data sources.

Baker and Benjamin (1997), for example, investigate the relative earnings of Black, South Asian, Southeast Asian, Chinese and aboriginal immigrant and native-born men using wage-gap decomposition procedures applied to data from the 1991 Census. They find that, among immigrant men, the adjusted minority/white earnings differentials are highest for Chinese (95.6 percent) and lowest for Blacks (80.6 percent). Across generations, from immigrant to native-born, the differentials are essentially static for Black and Chinese men, but substantially higher for Southeast Asian men and substantially lower for South Asian men. While observable differences in productivity-related characteristics explain a substantial component of the raw differentials, the authors note that the persistence of ethnic effects may well reflect embedded discriminatory attitudes that are not easily eradicated.

Pendakur and Pendakur (1997) likewise rely on 1991 Census data for their estimates of ethnic earnings effects, but their analysis, except for the aggregated samples of minority immigrants and Canadian-born individuals, is dependent on single equation log-earnings regressions. For the aggregate samples, wage-gap decomposition results suggest that ethnic effects are strongest among immigrant men and non-existent among Canadian-born women. The results for individual ethnic minority groups are very mixed: among immigrants, the ethnic effects are strongest for Black men and women, but these effects are also acute for a number of detailed ethnic minority groups, including South Asian, West Asian and Vietnamese men and West Asian and Vietnamese women. Their results also show that the economic prospects do not improve markedly, or they may even fall as in the case of Chinese men, between immigrant and native-born generations. However, the sample sizes are too small to yield reliable estimates of inter-generational ethnic effects for most minority ethnic groups. Nonetheless, the findings in Pendakur and Pendakur would appear consistent with the findings in Baker and Benjamin: economic discrimination may play a role in Canadian labour markets. At the very least, although there is considerable heterogeneity among minority ethnic groups, some of these groups must contend with significant negative earnings effects relative to their white counterparts.

Hum and Simpson (1999) sound an even stronger caution against treating visible minorities as a homogeneous group for public policy purposes. They find, using data from the first wave of the Survey of Labour and Income Dynamics and selectivity-corrected log-earnings function estimation procedures, that there are significant wage disadvantages for visible minority foreign-born men relative to white foreign-born men. Coefficient estimates indicate an earnings deficit of 23 percent for non-Chinese oriental men, 21 percent for Black men, 16 percent for Chinese men, and 15 percent for Indo-Pakistani men. With the exception of Black men, the coefficient estimates for Canadian-born men are not statistically significant. The estimated earnings deficit for native-born Black men is 24.1 percent, a finding that suggests persisting, and possibly even diverging, Black ethnic earnings effects. However, Hum and Simpson also note that, with the exception of non-Chinese oriental immigrants, there is little statistical evidence suggesting that foreign-born or Canadian-born women experience a significant earnings deficit relative to white women.

This article presents new evidence on the labour market disadvantages associated with visible minority status in Canada using data from the 1996 Census. Our study, which relies on wage-gap decomposition methodology, provides analysts with a longer time frame over which to assess the persistence of wage discrimination against visible minorities. Moreover, not only does our study conduct the usual analysis for visible minority aggregates and selected individual ethnic minorities differentiated by immigrant status, it also investigates the relative earnings of visible minority immigrants differentiated by age at immigration. This is an important extension to existing research on the labour market disadvantages of visible minorities since this group of men and women appears most at risk in the labour markets. It also enables us to probe more deeply into the sources of labour market discrimination. More specifically, it enables us to ascertain the effect of foreign and Canadian-based work experience and schooling on the relative earnings of visible minorities. Finally, because the findings may be sensitive to research methodology, we conduct an exhaustive analysis, experimenting with different model specifications and sample definitions.

We find that, in 1996, labour market disadvantages associated with visible minority status are largely confined to immigrant men. With the exception of the Black ethnic minority, we fail to find inordinately large gaps in earnings between white and visible minority immigrant women, native-born men, or native-born women. Even in the case of immigrant men, labour market disadvantages are apparent primarily among minority men who were older when they immigrated to Canada.

The following section contains a discussion of the data and the earnings model, the third section sets out the OLS earnings estimates, while the fourth section presents the basic earnings-gap decompositions for immigrant and native-born paid workers. The next section presents the decomposition results for individual ethnic minority groups. The findings of this study are summarized in the last section.

Data and Model Specification

Data for this study are obtained from the 1996 Census Public Use Microdata File (PUMF) on individuals. To construct the working samples of males and females we retain observations only if the individual is between 15 and 64 years of age, is non-native (i.e., not of Aboriginal origin), was a paid worker (not self-employed) in 1995, had nonzero earnings and weeks of work, was not a student for the past nine months, and did not reside in the Atlantic region, Yukon or the Northwest Territories. This latter exclusion is necessary because several key explanatory variables (e.g., years since migration) are not available or are available in only highly aggregated form for these regions. Although there are sound reasons for limiting the analysis to full-time/full-year paid workers, we do not restrict our working sample to this smaller, more cohesive group; to do so would render the native-born ethnic minority samples too small for meaningful analysis.

The above restrictions result in working samples of 142,459 male paid workers (89.6 percent of whom are white and 10.4 percent visible minorities) and 131,790 female paid workers (89.3 percent of whom are white and 10.7 percent visible minorities).[1] Table 1 shows that visible minority men are predominantly immigrants. Only 1,595 (10.8 percent) of all visible minority men in the sample are native-born: The remaining 13,214 (89.2 percent) are immigrants. The working sample of minority immigrant men includes 1,953 Black (14.8 percent of the minority immigrant sample), 3,364 Chinese (25.4 percent), 3,257 South Asian (24.6 percent), and 4,640 other and multiple response (35.1 percent) paid workers.[2] Among native-born minority men the corresponding numbers are 456 Black (28.5 percent of the minority native-born sample), 514 Chinese (32.2 percent), 183 South Asian (11.5 percent), and 442 other and multiple response (27.7 percent) paid workers. The white-minority, native-born-immigrant, and ethnic distributions of the working sample of female paid workers are very similar and do not require additional comment.

Table 1

Sample Size and Weekly Earnings by Immigrant and Visible Minority Status

Sample Size and Weekly Earnings by Immigrant and Visible Minority Status

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Table 1 also shows that in 1995 the average weekly earnings of visible minority immigrant men were 28.6 percent lower than average weekly earnings of white immigrant men ($658 vs. $922).

Relative earnings were lowest for Blacks (67.6 percent) and highest for South Asians (77.3 percent). Native-born visible minority men earned an average of $672 weekly, or 17.0 percent less than white Canadian-born paid workers. However, the unadjusted relative earnings ranged from 70.2 percent for native-born Blacks to 92.6 percent for other and multiple response visible minority native-born Canadians.

The unadjusted earnings differentials are significantly different for women. While minority immigrant women earn 8.9 percent less than white immigrant women ($520 vs. $571), native-born minority women earned the same average weekly wage as native-born white women ($543 vs. $545). Among native-born women the white/minority earnings differential ranges from 81.8 percent for South Asian women to 115.9 percent for Chinese women. For immigrants, the corresponding differentials range from 86.3 percent for South Asian women to 96.7 percent for Black women.[3]

OLS earnings equations are estimated separately for the immigrant and native-born samples of paid workers differentiated by visible minority status.[4] These structural wage equations are used to analyze the observed white-visible minority earnings gaps for the identified groups, using the wage-gap decomposition techniques developed in Oaxaca (1973). The log-earnings equations take the form (subscripts for individuals are suppressed):

where ln E is the natural log of average weekly earnings (annual earnings divided by weeks worked), X is a row vector of productivity-related explanatory variables, β is a vector of corresponding coefficients, and u is an error term. Although annual earnings is generally the preferred specification for the dependent variable, our analysis is based on average weekly earnings; this latter specification eliminates any ambiguity in the interpretation of the decomposition results (see De Silva 1999: 73). The earnings model controls for work experience, region, urban-rural location, marital status, children present (in female equations only), schooling, years since migration (YSM), full-time/part-time (FTPT) status, commuting distance, mobility, language proficiency, industry and occupation.[5]

Most of the explanatory variables are fairly standard and have been used in other relative wage studies that employ census data (see, for example, Shapiro and Stelcner 1987), but several require additional comment. Labour market experience is defined as (age – years of formal schooling –6), but it is well known that the traditional Mincer proxy over-estimates accumulated labour market experience for women. We experimented with an alternative measure of labour market experience for women using an imputational method proposed in Zabalza and Arrufat (1985).[6] However, since the final estimates of labour market discrimination were affected only marginally by this alternative variable derivation, we present results based only on the Mincer proxy for experience.

Baker and Benjamin (1994) have pointed out that Canadian employers may not attach the same value to education and work experience obtained in the home country as in the adopted country. Although this non-equivalence may simply reflect discriminatory employer behaviour, it may also be a recognition that the human capital acquired in the home-country may have a country-specific component that would be lost on arrival in Canada (Baker and Benjamin 1994: 396). Pendakur and Pendakur (1998) find that employers indeed differentiate between foreign and Canadian schooling, but such differentiation appears very erratic and does not necessarily focus on visible minorities.[7] However, Hum and Simpson (1999), using data that enables them to distinguish between work experience and schooling acquired in Canada and the home country, find that while education matters regardless of its source, work experience has a positive effect on earnings only if it is obtained in Canada.

Although our data does not permit us to separate foreign and Canadian schooling and work experience, we attempt, following the work in Li (2001), to test the non-equivalence hypothesis by sorting the sample of immigrants into age groups that would possess entirely Canadian credentials and those whose experience and schooling credentials would be heavily weighted by the home-country. Li (2001), analyzing the market worth of immigrants educational credentials, notes that the older the immigrant on arrival in Canada, the lower the market returns to a university degree. Compared with native-born degree holders, the returns to a university education are lowest for visible minority immigrants who were age 25 and over at immigration and highest for minority immigrants who were under 13 years of age at immigration. Presumably the credentials for the former are primarily foreign and primarily Canadian for the latter.

Several recent studies, for example Rivera-Batiz (1990), have linked the labour market earnings of immigrants with proficiency in the official language of the host country. In our study the two variables designed to capture language proficiency include knowledge of an official language (English, French, English and French, or neither) and usage of a heritage (non-official) language as a common home language. Since census information on official language competence is not objective, our earnings equation includes home language as a check on the self-reported fluency in English or French. It can be safely argued that individuals, but especially immigrants, whose mother tongue is not English or French, and who habitually use a heritage language in their non-work setting, are less likely to have acquired competence in one of the two official languages. Finally, labour supply theory predicts that the reservation wage should rise with fixed time costs of employment: Commuting distance is a proxy for such costs.[8]

Labour market disadvantages can be exhibited through wage discrimination, occupational segregation, or both. In this article we emphasize estimates of labour market discrimination under the assumption that occupational choice is unconstrained; that is, labour market discrimination manifests itself only through the wage structures within occupations. However, we also estimate, but do not report in detail, the degree of labour market discrimination that is exhibited through both wage discrimination and occupational segregation under the assumption that occupational choice is constrained. In the latter estimates the log-earnings equation does not control for industry and occupation.[9]

OLS Regression Results

Estimated OLS earnings equations for all male paid workers, differentiated by immigrant and by visible minority status, are presented in Table 2. Similar estimates for women are presented in Table 3. The overall fit of each reported earnings equation is acceptable given the micro nature of the data, and the estimated coefficients generally have the expected signs and are significant at the 5 percent level. Summarizing the results for immigrant men, labour market experience has a positive, but nonlinear, effect on average weekly earnings, earnings in Ontario are higher than in other regions of Canada, urbanized white immigrants have higher earnings but urbanized minority immigrants have lower earnings, and married, common-law and other (divorced, separated, widowed) marital states are correlated positively with earnings.

Table 2

OLS Log-Earnings Regressions by Visible Minority and Immigrant Status: Men

OLS Log-Earnings Regressions by Visible Minority and Immigrant Status: Men

Table 2 (suite)

OLS Log-Earnings Regressions by Visible Minority and Immigrant Status: Men

Table 2 (suite)

OLS Log-Earnings Regressions by Visible Minority and Immigrant Status: Men

a Equations include controls for 25 occupations and 16 industries.

b Omitted categories: Ontario; Single (Never Married); 0–5 yrs; English; 0–4km.

c Equations exclude YSM, YSM2, Neither.

* Significant at the 5% level. t-scores are given in brackets.

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Table 3

OLS Log-Earnings Regressions by Visible Minority and Immigrant Status: Women

OLS Log-Earnings Regressions by Visible Minority and Immigrant Status: Women

Table 3 (suite)

OLS Log-Earnings Regressions by Visible Minority and Immigrant Status: Women

Table 3 (suite)

OLS Log-Earnings Regressions by Visible Minority and Immigrant Status: Women

Table 3 (suite)

OLS Log-Earnings Regressions by Visible Minority and Immigrant Status: Women

a Equations include controls for 25 occupations and 16 industries.

b Omitted categories: Ontario; Single (Never Married); 0–5 yrs; English; 0–4 km, No Children.

c Equations exclude YSM, YSM2, Neither.

* Significant at the 5% level. t-scores are given in brackets.

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Our results also show that years since migration has a positive, but nonlinear, effect on the weekly earnings of immigrant men; schooling, especially at the university level, is associated with higher earnings, and immigrants who lack proficiency in either of the official languages have lower average weekly earnings than immigrants who have made an investment in one of the official languages. Finally, interprovincial mobility is not a significant determinant, but fixed time-costs and full-time status are both correlated positively with weekly earnings.

Several of these results, however, merit additional comment. An additional year of work experience has a significantly greater impact on the earnings of white immigrants. To illustrate, the 5th year of experience would raise the earnings of white immigrant men by roughly 2 percent compared with 1.5 percent for minority immigrant men; the 20th year of experience would raise weekly earnings by 1 and .4 percent, respectively. On the other hand, an additional year since immigrating to Canada increases the weekly earnings of visible minority men by more than twice the increase for white men. As well, schooling, especially at the university level, has a much stronger effect on the weekly earnings of minority than white immigrant men. For example, an undergraduate degree increases the earnings of minority immigrants by 39.8 percent compared with 18.3 percent for white immigrants.

Since the regression results for native-born men essentially resemble the results for immigrant men, there is little to be gained from detailed discussion. It should be noted, however, that not only are the returns to schooling, as in the immigrant results, higher for minority men than for white men, but the marginal effects of work experience, contrary to the immigrant results, are also slightly higher. Although there are several interesting variations, the estimated immigrant and native-born regressions for women yield results that are essentially the same as those presented for men. The most notable difference is that the effects of work experience are very similar for white and minority women in both immigrant and native-born regressions.

Decomposition Results

While the immigrant and native-born OLS regression results for both men and women show marked differences in the pay structures for several of the productivity-related characteristics of white and visible minority paid workers, the two groups also differ in the average endowments of productivity characteristics. For example, as Table 4 shows, visible minorities, whether immigrant or native born, have fewer years of labour market experience than white men and women, but they are more likely to have a university education. As well, mean years since migration are significantly lower for visible minorities than for white immigrants. These endowment differences may provide a partial explanation of the observed earnings differentials between white and minority paid workers. The Oaxaca (1973) decomposition expression (2) provides a convenient method for decomposing algebraically the observed earnings gaps into a portion attributable to differences in average characteristics and a portion attributable to differences in labour market compensation for each characteristic. The algebraic expression is given as:

where ln E is the log of earnings, βi is the estimated coefficient for the ith characteristic Xi, and superscripts w and v refer to white and visible minority workers, respectively. Bold script indicates the mean of a variable. The regression constants are included in the second term on the right-hand side. The first, or explained, component measures the cumulative, inter-group, differences in the means of the independent variables weighted by the estimated regression coefficients of the group (e.g. white immigrants) with higher observed average earnings. The latter, or unexplained, component measures the cumulative inter-group differences in the coefficients of the estimated earnings equations weighted by the means of the disadvantaged group’s (e.g. visible minority immigrants) independent variables.[10] It is this latter, unexplained component which has been associated with wage discrimination.[11]

The earnings-gap decompositions for the aggregated samples are reported in Table 5. Column 2 shows the proportion of the observed mean log-earnings gap (given in column 1) that is explained by differences in productivity characteristics; the proportion attributable to differences in rewards to productivity characteristics is not shown since it is merely the residual of the former. Column 3, however, gives the adjusted minority/white earnings differential derived from the unexplained component.[12]

Table 4

Sample Means of Selected Variables

Sample Means of Selected Variables

a Sum of occupations coded 1–11.

b Sum of occupations coded 19–25.

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Rows 1(a-d) present the basic wage-gap decomposition results (i.e., results based on regressions reported in Tables 2 and 3). Endowment differences account for more than half (60.8 percent) of the observed white/minority earnings differentials for all immigrant male paid workers: The unexplained component accounts for the remaining 39.2 percent of the observed differential: It implies an adjusted minority/white earnings ratio of 85.7 percent. Several details associated with these results are of particular interest. For example, while the returns to work experience and full-time work status tend to be lower for minority immigrant men, the returns to education and YSM tend to be higher. More than 80 percent of the observed log-earnings differential for native-born men can be explained by differences in productivity-related characteristics: 19.0 percent of the differential is attributable to a different minority-white pay structure. Nonetheless, minority males tend to earn higher returns to work experience and university education. Accounting for differences in productivity characteristics raises the native-born minority/white earnings differential from 83.0 to 95.1 percent.

Table 5

Decomposition of Observed Mean Log-Earnings Differentials

Decomposition of Observed Mean Log-Earnings Differentials

Table 5 (suite)

Decomposition of Observed Mean Log-Earnings Differentials

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Row 1(c) shows that the observed earnings differential between minority and white immigrant women is due largely to differences in mean productivity characteristics. The earnings of minority immigrant women are only 2.9 percent lower than the earnings of white immigrant women once these differences are taken into account. The analysis for native-born women is somewhat more complicated. Although native-born minority women actually earn marginally more than white native-born women, the relative distribution of endowments suggests that their weekly earnings should have been marginally lower.[13] Had the pay structures for white and minority women been the same, the weekly earnings of minority native-born women would have been roughly one percent lower. However, the observed log-earnings differential and the estimated explained and unexplained components are exceedingly small, and it is difficult to have much confidence in the results.

Our aggregated sample results are consistent with the earnings-gap decomposition results reported in the earlier Pendakur and Pendakur (1998) study which draws on data from the 1991 Census. In 1991, visible minority immigrant men reportedly had an earnings deficit of 14.2 percent relative to their white counterparts,[14] a finding virtually identical to that in the present study based on 1996 Census data. They estimate somewhat higher earnings deficits for native-born minority men (8.3 versus 4.9 percent) and immigrant minority women (7.4 versus 2.9 percent): These comparisons suggest an upward trend in the relative earnings of these two visible minority groups. Native-born women appear to enjoy an earnings surplus of roughly one percent, a finding consistent with that reported in the present study.

The findings reported in rows 1(a-d), Table 5, suggest that the question of labour market disadvantages arises primarily among visibly minority immigrant men. There appears to be remarkable stability in this result regardless of model specifications and sample restrictions.[15] The decomposition results, reported in rows 2(a-d), are basically unaffected when the potentially contentious distance, mover and children (for women) variables are excluded from the earnings regression model.[16] The wage-gap decomposition results also appear largely unaffected by the re-specification of the earnings variable to annual earnings. The results reported in rows 3(a-d) show that, although the observed differential and the corresponding explained component are higher for all groups, the effects of wage discrimination on the earnings of visible minority paid workers are almost identical to the basic results in rows 1(a-d). The observed log-earnings differentials for all four comparison groups appear to be dominated by intra- rather than inter-occupational earnings effects. This result is consistent with the findings reported in Baker and Benjamin (1997) and Howland and Sakellariou (1993). As rows 4(a-d) show, the unexplained component of the observed differential tends to rise for all comparison groups, but the effect of occupational segregation on the earnings of visible minorities, with the exception of immigrant men, is fairly modest. For immigrant men occupational segregation reduces relative earnings by roughly 3.3 percent. Finally, except for native-born men, the decomposition results are not significantly different when the sample analyzed is restricted to full-time/full-year paid workers (rows 5(a-d)). Although the proportion of the observed earnings differential that can be explained by differences in productivity-related characteristics falls sharply for native-born males, because the observed differential is relatively small, the effect of wage discrimination on the relative earnings of FTFY native-born minority men is fairly modest.

To explore the sources of the labour market disadvantages experienced by visible minority immigrants, especially men, we partitioned the samples of white and minority immigrants into three categories contingent on age at immigration: Immigrants aged 15 and under, immigrants aged 16-24, and immigrants aged 25 and over.[17] We focus on the youngest and oldest groups. Most of the schooling and work experience of the former group would have been acquired in Canada, whereas most of the schooling and a significant portion of the work experience of the latter group would have been acquired in the home country. If employers regard the work experience and education that visible minority immigrants acquire in the home country to be relatively inferior, this attitude should manifest itself in the estimated log-earnings equations and the ensuing wage-gap decomposition results.

The decomposition results for immigrant men reported in 6(a-c) support the non-equivalence hypothesis. Productivity-related characteristics explain only 51.3 percent of the observed log-earnings differential between white and minority immigrants who were 25 or older at arrival, 59.6 percent for immigrants 16-24 at arrival, and 88.8 percent for immigrants 15 or younger at arrival. Had the pay structures for white and minority immigrant men been identical the relative weekly earnings of the younger and older arrival groups of visible minority men would have been higher by 4.7 and 18.1 percent, respectively. A detailed examination of the white/minority pay structures shows that the work experience of older arrival visible minority immigrants is significantly undervalued relative to that of white immigrants.[18] There is, however, no evidence that compensation for schooling or years in Canada is lower. For the younger arrival group, there is no evidence that compensation for experience, schooling or years since migration is significantly different for white and minority immigrant men. This finding is not only consistent with the finding, based on the same data source, reported in Li (2001), it is also consistent with the finding, based on detailed information on the amount of foreign and Canadian experience and schooling, reported in Hum and Simpson (1999).

The wage decomposition results for immigrant women segregated by age at immigration are less definitive. Nonetheless, the results reported in panel 7(a-c), show that the explained component is significantly lower for the oldest arrival than for the youngest arrival group (71.5 vs. 85.7 percent): The corresponding adjusted minority/white earnings differentials are, however, only marginally different (97.3 and 98.6 percent, respectively). The unexpected and highly suspect result for the 16–24 year group is likely due to the very small observed earnings differential that is being decomposed. As with immigrant men, our results show that the work experience, but not education or years since migration, of older arrival visible minority women is significantly undervalued. For the under 15 year group, there are no significant differences between white and minority women in compensation for experience or schooling.

Analysis of Individual Ethnic Minority Groups

Although the aggregated results suggest that, with the exception of immigrant men, the earnings deficits associated with visible minority status are fairly modest, certain ethnic groups may face significant earnings deficits relative to their white counterparts. Information contained in the 1996 Census PUMF on Individuals enables us to categorize visible minorities into three ethnic origin groups: Black, South Asian, and Chinese. Unlike Baker and Benjamin (1997), we restrict the ethnic samples to individuals who provide single responses to the ethnic origin question.[19] The earnings-gap decomposition results derived from white and ethnic-specific OLS earnings equations are presented in Table 6.[20] The underlying OLS equations are too numerous to report: However, it should be noted that, as in Baker and Benjamin (1997), many of the estimated coefficients in the ethnic-specific equations are not statistically significant.[21]

Table 6

Decomposition of Observed Mean Log-Earnings Differentials for Selected Ethnic Minorities

Decomposition of Observed Mean Log-Earnings Differentials for Selected Ethnic Minorities

Table 6 (suite)

Decomposition of Observed Mean Log-Earnings Differentials for Selected Ethnic Minorities

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Differential white-minority pay structures for Black, South Asian and Chinese immigrant men imply adjusted minority/white earnings differentials of 80.0, 87.9 and 89.1 percent (or earnings deficits of 20.0, 12.1, and 10.9 percent) for the three minority ethnic groups, respectively. Among native-born men, differential pay structures reduce the relative earnings of Black and Chinese men by 14.0 and 5.7 percent, respectively, but increase the relative earnings of South Asian men by 2.0 percent. South Asian men differ most across immigrant and native-born generations. The deficit in earnings attributable to different pay structures falls by 6 percent for Blacks, 6.4 percent for Chinese, and 12.9 percent for South Asians. Except for native-born South Asians, our findings are very similar to the findings reported in Baker and Benjamin (1997). The relatively minor discrepancies in the estimated ethnic effects may be due to differences in the choice of earnings (average weekly versus annual) or identification of ethnic minorities (inclusion or exclusion of individuals who have multiple ethnic origins). However, the two studies yield vastly different estimates of the earnings deficit for native-born South Asians: While we find that the earnings of native-born South Asians converge sharply with the earnings of whites, Baker and Benjamin (1997) find a sharp divergence. The findings in Pendakur and Pendakur (1998) are more consistent with our findings, but it should be noted that all three estimates are based on very small sample sizes.

Significantly, there is broad support for the finding that Black men, whether immigrant or native-born, not only face the largest earnings deficit but also the smallest inter-generational improvement in their economic position. Baker and Benjamin (1997) (specification 3) estimate earnings deficits of 19.4 and 15.7 percent, respectively, for immigrant and native-born men, Pendakur and Pendakur (1998), 22.2 and 17.4 percent, respectively, and Hum and Simpson (1999), 21.3 and 24.1 percent, respectively. It thus appears that there has been little change between 1991–96 in the relative returns Black men receive for their productivity-related characteristics.

The earnings effects of differential pay structures are relatively modest for South Asian and Chinese immigrant and native-born women. However, the relative earnings of Black immigrant and native-born women are lower by 8.8 and 5.8 percent, respectively, due to less favourable pay structures. By contrast, native-born Chinese women receive a 3.7 percent premium for their productivity characteristics. The increase in the inter-generational earnings deficit for South Asian women is atypical and inconsistent with the findings reported in Pendakur and Pendakur (1998). However, both findings are highly suspect because of small sample size.

There appears no readily obvious pattern to the white-minority differences in the pay structures of Black, Chinese and South Asian immigrant men: Blacks have relatively lower returns to work experience and full-time status, Chinese to full-time status, and South Asians to schooling, full-time status and YSM. However, among native-born men, returns to schooling are lower for all three minority ethnic groups: The returns are especially low for Black native-born men. Chinese women, whether immigrant or native-born, tend to have higher returns to schooling relative to their white counterparts.

Since some of the ethnic-specific wage-gap decomposition results are derived from estimated equations that have small sample size and limited explanatory power, we also estimated separate log-earnings regressions with intercept-shift dummy variables representing individual ethnic minorities for all immigrant men, immigrant women, native-born men and native-born women. The estimated coefficients for the Black, South Asian and Chinese ethnic identifiers in each of the four equations are reported in Table 7: They are remarkably consistent with the implications of the decomposition results reported in column 3, Table 6. Black, South Asian and Chinese immigrant men, Black immigrant women, and Black native-born men have significantly lower earnings than corresponding white paid workers. Except for Black men, there is little evidence that the ethnic effects observed for immigrants persist into the native-born generation.

Rows 5–7, Table 6, provide additional information on the nature of the labour market disadvantages encountered by immigrant men. Chinese, South Asian, and, especially, Black immigrants who were aged 25+ at arrival all suffer significant losses in earnings (12.9, 17.5, and 25.4 percent, respectively). By contrast, among immigrants who were aged 15 or under at arrival, only Blacks appear to be affected by wage discrimination. Surprisingly, this wage disadvantage is not as pronounced as the disadvantage encountered by native-born Blacks. The single equation ethnic group estimated coefficients reported in Table 7 corroborate these findings. Similar decomposition results are not reported for women; the small observed differentials and sample sizes yield very unstable results. However, single equation estimates reported in the lower panel of Table 7 show that earnings are significantly lower only for Black immigrant women who were 16–24 or 25+ years old at the time of immigration.

Summary and Conclusions

This study employs wage-gap decomposition procedures to analyze observed differentials in average weekly earnings between white and visible minority paid workers using data from the 1996 Census Public Use Microdata File on Individuals. The central question is whether visible minority men and women are denied fair opportunities for full economic participation in the workplace. Although visible minorities, along with women, aboriginal peoples and persons with disabilities, have been designated as being disadvantaged in the labour markets, critics of the Employment Equity Act (Bill C62) have challenged the “fundamental premise of employment equity programs, namely that inequalities exist between groups and reflect systemic discrimination” (Boyd 1992: 281).[22]

Table 7

Visible Minority Ethnic Group Estimated Coefficients and t-Statistics Derived from Single Equation Models

Visible Minority Ethnic Group Estimated Coefficients and t-Statistics Derived from Single Equation Models

* Denotes significance at the 5 percent level.

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Our findings, which are generally consistent with the findings in earlier studies, affirm the designation of visible minorities as one of the disadvantaged groups in the Canadian labour market, but not without major qualifications. Minority immigrant men experience a significant wage disadvantage relative to white immigrant men: The observed white-minority earnings differential cannot be justified by differences in relative endowments of productivity-related characteristics. The wage disadvantages of minority native-born men and immigrant women are not only modest, they are almost entirely attributable to the Black ethnic minority. There is no evidence of wage discrimination for native-born minority women. These basic findings are not undermined by different methodologies, model specifications, or sample definitions.

We also find that wage disadvantages are far more pronounced among visible minority immigrant men who were older at the time of immigration. This finding is not conditional on ethnic origin. Visible minority women who were older when they immigrated must likewise contend with wage discrimination, but such discriminatory behaviour appears to be directed largely against Black women. The available evidence suggests that the foreign work experience of older visible minority immigrant men and women is relatively undervalued; there is, however, little evidence to suggest that visible minority immigrant men or women receive lower compensation for foreign-based schooling than white immigrant men. These findings, although they need far more exploration and elaboration, suggest that public policy designed to achieve racial wage equality in the labour market should perhaps focus on the integration of older minority immigrants into the Canadian labour market.

Our findings suggest that, in general, the labour market disadvantages associated with visible minority status are not so profound that they warrant deep concerns about racial divisions in our society. There are, indeed, aggregate and individual ethnic earnings effects, but they are not homogeneous, ranging from an earnings deficit of 20.0 percent for Black immigrant men to an earnings premium of 3.7 percent for native-born Chinese women. Moreover, where they do exist, such earnings disadvantages are generally not persistent: They tend to be substantially moderated when transmitted across generations. There are nonetheless individual minorities that have to contend with significant wage discrimination in their labour market activities. The earnings deficits appear to be particularly acute for the Black ethnic minority. Wage discrimination persists among Black immigrant men regardless of age at immigration, among Black native-born men, and, to a lesser extent, among Black immigrant women. The tenacity of this labour market disadvantage is disturbing and needs to be explored in much more detail.

Our findings reinforce the observations made in several earlier studies: the labour market experiences of Canadians who are visible minorities are not homogeneous. This implies that public policy strategies, for example, employment equity programs, which focus on labour market discrimination need to be more precisely structured. They need to target immigrants and ethnic minorities most susceptible to discriminatory labour market practices.