Longitudinal Immigration Database (IMDB) Technical Report, 2024
7 Data evaluation and quality indicators

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7.1 Error sources

Because the IMDB is the product of several record linkages, it is subject to different sources of errors, including record linkage errors, measurement errors, and coverage errors. In this section, the sources of errors are explained and the prevalence of some of these errors is presented.

It is to be noted that, given that it is a census of immigrant taxfilers who were admitted in 1980 or thereafter, no weights are created in the IMDB. No adjustments are made for the missing tax years of filers or for linkage errors; no sampling is performed; and every linked taxfilers is kept in the final dataset. However, the linkage itself presents a form of sampling error when links are missed.

7.1.1 Record linkage errors

Datasets produced from the results of record linkages are subject to record linkage errors. Two types of errors are possible—false positives (false matches) and false negatives (false non-matches). A link is considered a false positive when two records not belonging to the same person are deemed a match. A link is considered a false negative when two records belonging to the same person are deemed a non-match.

It is possible to miss part of an immigrant’s fiscal history since some immigrants have more than one social insurance number (SIN) through time (a temporary SIN assigned at arrival to the individual as a non-permanent resident, and later a permanent SIN assigned after admission). Both SINs are required in order to have a complete fiscal history from arrival in Canada. The SDLE (described in Sections 2.3) allows for identification of these SINs. It is possible that, in a few instances, some SIN connections are missed or false connections are made.

7.1.2 Measurement errors

Measurement error is the difference between a variable’s measured value and its true value. This type of error can be attributed to a number of factors, including data capture (e.g., typos) and respondent error (e.g., misinterpretation of the question asked). This type of error was taken into account in the creation of the Integrated Permanent and Non-permanent Resident File (PNRF) to avoid conflicting information for any individual. For example, when a person has a record on both the ILF and the NRF, and the sociodemographic variables have inconsistent values, the values at admission (in the ILF) are kept. See sections 7.2 and section 7.5 for some counts.

7.1.3 Coverage errors

Coverage errors are the result of omissions, erroneous additions, duplicates, and errors of classification of records in the database. Coverage errors can result from inadequate coverage of the population. They can create biased estimates, and the impact can vary for different sub-groups of the population. These errors often result in undercoverage. Undercoverage in the IMDB is in part the result of the exclusion of tax files of immigrant taxfilers from the database. Immigrants who do not file taxes for a given year or who file late would not have an IMDB_T1FF record although linked to tax and part of the population of interest. If, for any reason, an immigrant record was not included in the Immigrant Landing File (ILF), it would not be part of the IMDB. Overcoverage is the result of the addition to the database of records excluded from the target population. An immigrant could have more than one ILF record as a result of multiple admissions not identified as such, for example. Please refer to Section 7.4 and Appendix B for more information on IMDB coverage.

7.2 Data accuracy

This section will discuss the accuracy of the immigration data. For details on the accuracy of the T1 Family File (T1FF), please refer to the T1FF entry (record number 4105).

The accuracy of the IMDB is dependent on the representativeness of the population included in it. A study conducted in the first years of the IMDB concluded that the IMDB “appears to be representative of the population most likely to file tax returns. Therefore, the results obtained from the IMDB should not be inferred to the immigrant population as a whole, but rather to the universe of tax-filing immigrants” (Carpentier and Pinsonneault 1994).

The reasons for the differences between taxfilers and the entire foreign-born population are explained in an article by Badets and Langlois (2000) describing the challenges of using the IMDB:

The characteristics of the immigrant taxfiler population will differ from those of the entire foreign-born population because the tendency or requirement to file a tax return will vary in relation to a person’s age, family status, and other factors. One would expect a higher percentage of males to file a tax return, for example, because males have higher labour force participation rates than females. The extent to which immigrants are “captured” in the IMDB will also be influenced by changes to the income tax. For example, the introduction of federal and provincial non-refundable tax credit programs encourage individuals with no taxable income to file a return to qualify for certain tax credits. (Badets and Langlois 2000)

7.2.1 2023 IMDB: Linkage rates

This section is based on the 2024 IMDB. The overall linkage rate between IRCC immigration file and the SDLE Derived Record Depository was 97.1% (see Section 4). A link does not necessarily mean that a tax file is available since it is possible to link dependents of taxfilers or immigrants who have yet to file taxes. This SDLE theoretical linkage rate mostly informs on how well IRCC files could be associated within a larger repository environment.

Of the immigrants who landed in any year from 1980 to 2024, 85.6% were linked to at least one T1FF record. This rate represents the effective coverage of immigrant linkage to tax files. As presented in the following statistics, this coverage rate may change according to gender and age.

The proportion of linked taxfilers by age group at admission and sex is shown in Table 4. The lower rates for the 0-to-14 age group are expected since those in this age group are not of working age. See Appendix B for rates by sex, age group and admission cohort.

Table 4
Proportion of linked taxfilers by age group at landing and sex Table summary
This table displays the results of Proportion of linked taxfilers by age group at landing and sex Age at landing, 0 to 14, 15 to 24 , 25 to 34, 35 to 49, 50 to 64, 65 and older and Total, calculated using percent units of measure (appearing as column headers).
  Age at landing
0 to 14 15 to 24 25 to 34 35 to 49 50 to 64 65 and older Total
percent
Source: Statistics Canada, 2024 Longitudinal Immigration Database.
Male 57.4 89.9 91.9 91.6 87.7 74.7 83.4
Female 56.6 89.2 91.2 92.1 85.7 73.6 83.3
Total 57.0 89.5 91.5 91.8 86.6 74.1 83.4

As immigrants become older, they start filing taxes and are included in the IMDB. Chart 1 shows that, among immigrants who landed at any age from birth to age 14, the proportion of linked taxfilers is higher for immigrants who landed prior to 2000 than for immigrants who have landed since 2000. Recent immigrants also have lower linkage rates. See Appendix B for table showing the proportion of linked taxfilers by age group at admission, sex and admission decade.

Chart 1 Proportion of linked taxfilers by age groups at landing and landing decade

Data table for Chart 1
Data table for chart 1 Table summary
The information is grouped by Cohorts (appearing as row headers), Age groups, 0 to 14 years, 15 to 24 years, 25 to 34 years, 35 to 49 years, 50 to 64 years and 65 years and older, calculated using proportion units of measure (appearing as column headers).
Cohorts Age groups
0 to 14 years 15 to 24 years 25 to 34 years 35 to 49 years 50 to 64 years 65 years and older
proportion
Source: Statistics Canada, 2024 Longitudinal Immigration Database.
1980 to 1989 cohorts 0.82 0.93 0.94 0.93 0.83 0.61
1990 to 1999 cohorts 0.81 0.92 0.93 0.93 0.89 0.76
2000 to 2009 cohorts 0.80 0.93 0.92 0.93 0.93 0.88
2010 to 2019 cohorts 0.37 0.96 0.96 0.95 0.93 0.86
2020 to 2023 cohorts 0.02 0.82 0.92 0.93 0.81 0.70

Chart 2 illustrates the proportion of filers, and the number of filers and non-filers by landing year, where the term “non-filer” means that no T1FF records are available. For the 2024 IMDB, the filing rate varies by landing year, ranging from 67.3% for those who landed in 2023 to 91.3% for those who landed in 1989. The filing rates increase with the number of years that immigrants stay in Canada; this may explain why the linkage rates are higher for those who landed in the 1990s and early 2000’s. See Appendix B, tables 14 and 15, for detailed distribution numbers by landing year.

Chart 2 	Distribution of taxfilers compared to non-taxfilers, by landing year

Data table for Chart 2
Data table for chart 2 Table summary
The information is grouped by Landing Year (appearing as row headers), Taxfilers, Non-taxfilers and Rates, calculated using number of immigrants and percent units of measure (appearing as column headers).
Landing Year Taxfilers Non-taxfilers Rates
number of immigrants percent
Source: Statistics Canada, 2024 Longitudinal Immigration Database.
1980 120,470 22,530 84.2
1981 107,740 20,730 83.9
1982 103,440 17,520 85.5
1983 77,140 11,820 86.7
1984 77,520 10,430 88.1
1985 75,110 8,780 89.5
1986 89,140 9,540 90.3
1987 137,660 13,340 91.2
1988 146,260 14,240 91.1
1989 173,890 16,490 91.3
1990 192,200 22,850 89.4
1991 208,620 22,800 90.1
1992 228,730 24,780 90.2
1993 230,760 24,360 90.5
1994 198,580 24,360 89.1
1995 188,620 22,920 89.2
1996 198,370 26,170 88.3
1997 189,190 25,440 88.1
1998 155,380 17,770 89.7
1999 168,910 19,910 89.5
2000 203,760 22,300 90.1
2001 225,000 23,870 90.4
2002 204,920 22,380 90.2
2003 198,130 21,450 90.2
2004 212,770 22,580 90.4
2005 235,630 26,060 90.0
2006 226,760 24,350 90.3
2007 212,760 23,560 90.0
2008 219,500 27,190 89.0
2009 224,010 27,730 89.0
2010 244,740 35,350 87.4
2011 214,090 33,920 86.3
2012 221,470 35,430 86.2
2013 220,850 37,350 85.5
2014 223,030 36,750 85.9
2015 229,130 42,100 84.5
2016 239,450 56,090 81.0
2017 236,450 48,720 82.9
2018 255,880 63,550 80.1
2019 265,810 73,740 78.3
2020 146,940 36,690 80.0
2021 332,060 71,930 82.2
2022 312,040 123,410 71.7
2023 316,020 153,480 67.3

7.2.2 Availability of date of death

The year and month of death, as well as a death flag, are included in the PNRF. Starting in 2018, these variables were linked by using the Canadian Mortality Database (CMDB). In the past, these variables were based on Statistics Canada’s Amalgamated Mortality Database (AMDB), which is a retired dataset that combined records between CMDB and vital statistics and tax files. The CMDB is an administrative database that collects information on death dates and cause of death from all provincial and territorial vital statistics registries in Canada. Some undercoverage, while minimal, exists in the database as it does not include deaths of Canadians (1) who died outside of Canada, with the exception of United States; (2) who served as members of the Canadian military, or (3) whose bodies were unidentified. Note that the CMDB does not include deaths which were reported in the tax files.

Chart 3 describes the general trend in the number of deaths per year since 1974 for immigrants admitted since 1952. The availability of data for pre-1980 admission was recently added to the IMDB. The value “9999” represents the records of deceased immigrants for which the year of death is not available.

Chart 3 Permanent and non-permanent residents, by year of death

Data table for Chart 3
Data table for chart 3 Table summary
The information is grouped by Year of death (appearing as row headers), Permanent residents from 1952 to 1979 and Permanent residents since 1980, calculated using number of deaths units of measure (appearing as column headers).
Year of death Permanent residents from 1952 to 1979 Permanent residents since 1980
number of deaths
Note .

not available for any reference period

Note: The value 9999 is assigned when the date of death is missing.
Source: Statistics Canada, 2024 Longitudinal Immigration Database.
1974 4,840 . not available for any reference period
1975 5,270 . not available for any reference period
1976 5,580 . not available for any reference period
1977 6,220 . not available for any reference period
1978 6,530 . not available for any reference period
1979 7,090 . not available for any reference period
1980 7,700 90
1981 7,620 300
1982 7,940 510
1983 8,510 740
1984 8,920 950
1985 9,350 1,110
1986 10,060 1,340
1987 10,420 1,630
1988 11,040 1,900
1989 11,490 2,210
1990 11,790 2,450
1991 12,570 2,910
1992 13,130 3,210
1993 13,900 3,740
1994 14,390 4,280
1995 15,170 4,730
1996 15,610 5,120
1997 16,040 5,440
1998 16,610 5,760
1999 17,370 6,180
2000 17,390 6,400
2001 17,840 6,930
2002 18,560 7,320
2003 19,030 8,100
2004 19,250 8,280
2005 19,990 8,650
2006 20,230 9,140
2007 21,160 9,850
2008 21,690 10,280
2009 22,210 10,760
2010 22,560 11,120
2011 22,820 11,920
2012 23,390 12,180
2013 24,680 13,190
2014 25,220 14,100
2015 26,110 15,010
2016 26,730 15,850
2017 27,550 17,200
2018 27,860 18,130
2019 28,000 19,040
2020 31,180 23,350
2021 30,590 24,660
2022 32,250 25,690
2023 31,370 24,700

7.2.3 Prefilers compared to records on the Non-permanent Resident File (NRF)

The results included in this section are drawn from a study based on the 2014 IMDB. Prefilers are immigrants who filed taxes prior to their landing year. It is sometimes assumed that all prefilers are immigrants who were non-permanent residents prior to admission. This section discusses why it is not the case. A total of 1.26 million individuals filed taxes before officially admission in 1980 or a subsequent year—of these, 212,500 are not linked to a non-permanent resident record as may otherwise be expected. Upon further investigation, it has been discovered that most permanent resident prefilers not linked to a non-permanent resident record are likely immigrants who have filed taxes when not required: 96% of these prefilers filed taxes only for the year prior to admission, and 75% reported no income (96% had no wages ). As shown in Chart 4, most of these prefilers landed in the first months of the year, prior to the deadline to file taxes for the previous year. It appears some immigrants who landed prior to the month of May filed taxes for the year prior to their landing year, for which they were not required to file.

Given these findings, whether it is appropriate to remove records with Prefiler_ind=1 and FIRST_EFFECTIVE_YEAR=. from studies on immigrants with pre-admission experience depends on the analysis since FIRST_EFFECTIVE_YEAR=. means no record is available on the non-permanent permit file.

Chart 4 	Distribution of prefilers without a non-permanent resident permit, by landing month

Data table for Chart 4
Data table for Chart 4 Table summary
The information is grouped by Landing month (appearing as row headers), , calculated using (appearing as column headers).
Landing month Number of immigrants
Source: Statistics Canada, 2014 Longitudinal Immigration Database.
January 32,300
February 36,100
March 35,500
April 24,100
May 20,500
June 18,200
July 16,100
August 11,200
September 9,800
October 5,500
November 2,000
December 1,200

Not all immigrants with pre-admission experience are identified as prefilers: 478,100 immigrants have non-permanent resident records with Prefiler_ind=0. Depending on the subject of interest, using the FIRST_EFFECTIVE_YEAR<>. or the number of temporary resident permits (variable NUMBER_ALL_PERMITS) is more appropriate to study immigrants with pre-admission experience. Prefiler_ind=0 indicates that no tax records have been filed prior to admission, but this does not mean that the individual had no pre-admission Canadian experience.

7.2.4 Spouse indicator

The IMDB contains variables that enable data users to obtain information on marital status and spouses. The following section contains results of a study done on the 2012 IMDB. No major changes have occurred since then in the marital status codes or family flag.

The spouse identification number (SP__IDI) is derived from tax files. This information can be derived only when the respondent claims his or her spouse or common-law partner while filing taxes; this causes an underestimation of couples as compared to the marital status declared in the tax files. From the T1FF, it is also possible to obtain the marital status at time of filing.

Prior to 1991, the “single” category was not available as marital status (MSTCO). The “common-law” status was made available as of 1992 for all datasets (1982 to 2012). Since 1992, the proportion of IMDB records indicating marital status as “single” has ranged from 20% to 30%. The proportion of “separated” has declined from 30% prior to 1992 to 4% after. The other marital status categories have not been affected by pattern changes.

Analysis done on the distribution of marital status (MSTCO from tax files) and the spouse ID (SP__IDI) shows differences between the two variables. This is because values for marital status are missing for some records. In a perfect situation, the records of all married persons would have spousal information, and the records of all single persons would have no spousal information. This analysis shows data quality to be better after 1992, when separate statuses for “common-law” and “single” were introduced.

Presence of spouse reporting gaps

Further to a review of the longitudinal history of immigrants on the 2012 IMDB, some cases where the spouse or common-law partner is missing (or different) for a given year and the same spouse is declared two or three years later have been found. The Chart 5 gives a summary of these gaps.

Chart 5 Proportion of cases with inconsistent spouse identification number, (SP__IDI) by landing year

Data table for Chart 5
Data table for Chart 5 Table summary
The information is grouped by Tax year (appearing as row headers), , calculated using (appearing as column headers).
Tax year Percent
Source: Statistics Canada, 2012 Longitudinal Immigration Database.
1980 16.8
1981 16.6
1982 17.1
1983 17.7
1984 17.4
1985 17.7
1986 17.7
1987 16.9
1988 14.4
1989 13.9
1990 13.4
1991 14.4
1992 13.5
1993 12.7
1994 9.8
1995 9.4
1996 8.7
1997 8.1
1998 7.8
1999 7.1
2000 6.3
2001 5.6
2002 5.0
2003 4.6
2004 4.0
2005 3.1
2006 2.9
2007 2.4
2008 1.8
2009 1.1
2010 0.7
2011 0.5

Most immigrants on the file have one or no spouse in the years from 1980 to 2012 according to the IMDB_T1FF files. It is to be noted that no marital status (and no spouse info) is available for 1.2 million immigrants out of approximately 6 million immigrants.

7.3 Imputed variables

7.3.1 Imputation of education variables

A data quality issue regarding the variables for education qualifications and years of schooling was identified. A non-negligible proportion of individuals who did not state their education qualifications or years of schooling were coded as “0” or “None” instead of “Missing” on EDUCATION_QUALIFICATIONS and YEARS_OF_SCHOOLING. This problem was prevalent from 2011 to 2014. In 2011, 35% of immigrants stated that they had no education qualifications, compared to roughly 10% in the 1990s.

This issue was resolved by imputing the education variables by means of values for education variables from 2008 to 2010 to model the most recent year’s education variables. For the imputation, variables such as admission age, immigration_category_rollup2, intended occupation, gender and country of last permanent residence were used. The nearest-neighbour imputation method was employed. The variable Education_imputation_ind (0: no; 1: yes), available in the PNRF, was created to identify records with imputed education variables.

For immigrants admitted in 2016, the number of cases where a non-stated education was coded to “0” or “None” instead of “Missing” was reduced. However, a non-negligible number of records had a missing education qualification with a valid number of years of schooling. For these records, years of schooling was used to impute a value for education qualifications.

For principal applicants admitted since 2015, under the express entry, the year of schooling in most cases are underestimated.

For the 2024 IMDB, those who were admitted between 2015 and 2024 and who were connected to an Express Entry record had their education imputed using values found in the Express Entry file. A more comprehensive education variable called Education_Derived was created, combining data from Education_Qualification, for those who were not found in the Express Entry file, and the new values from Express Entry. Users should note that the values from the Express Entry file are based on the immigration officer’s assessment of the educational qualifications of the applicant in the context of a Canadian equivalency, whereas the values from Education_Qualification are self-declared by the applicant, and do not necessarily reflect a Canadian equivalency.

Education_Derived was set to missing for those admitted in 2025 or later.

7.3.2 Imputation of language variables

For the 2019 IMDB, two new language variables were added, English_IND and French_IND, reporting the first official language known at admission. For those who were admitted in 2018 or earlier, they are defined as permanent residents having English (French) as their mother tongue or having a mother tongue other than English or French while declaring English only (French only) as their knowledge of official language at admission.

For those admitted in 2019 or later, they are defined as permanent residents having declared English only (French only) as their knowledge of official language at admission or having declared English and French as their knowledge of official language at admission and reporting English (French) as the language in which they are most at ease.

7.4 Coverage

7.4.1 Coverage of the Integrated Permanent and Non-permanent Resident File (PNRF)

The 2024 Integrated Permanent and Non-permanent Resident File (PNRF) contains over 10.2 million records (Table 5); of these, over 8.7 million records (85.6%) are linked to at least one tax file. It is to be noted that immigration data belonging to non-taxfilers and taxfilers alike are included in a file named PNRF_1980_2024. The following table shows the distribution of records depending on their presence in the different immigration and tax files. Over 2.8 million records belong to immigrants who were temporary residents prior to becoming permanent residents; over 2.6 million of these records are linked to at least one tax file. See Appendix B for detailed distribution numbers by landing year.

Table 5
Coverage of permanent residents since 1980 Table summary
This table displays the results of Coverage of permanent residents since 1980 Permanent resident, Permanent resident with non-permanent resident permit and Total, calculated using number, and percent units of measure (appearing as column headers).
  Permanent resident Permanent resident with non-permanent resident permit Total
number
Source: Statistics Canada, 2024 Longitudinal Immigration Database.
Total filers 6,041,480 2,647,430 8,688,910
Total non-filers 1,307,380 159,330 1,466,710
Total 7,348,860 2,806,760 10,155,620
  percent
Percent taxfilers 82.2 94.3 85.6

Data on immigrants with non-permanent resident permits are available. The proportion of immigrants with pre-admission experience varies by landing year (Chart 6); it ranges from 3.8% in 1980 to 69.2% in 2021. As a result, the proportion of immigrants with pre-admission experience in the early 1980s is underrepresented. The proportion of immigrant filers with pre-admission experience (solid line) is higher than the overall proportion of immigrants with pre-admission experience (dotted line) because the linkage rate for these immigrants is higher than that for immigrants without pre-admission experience.

Chart 6 Percentage of immigrants with non-permanent resident permits, by admission year

Data table for Chart 6
Data table for chart 6 Table summary
The information is grouped by Landing Year (appearing as row headers), All Immigrants, Taxfilers and Non-taxfilers, calculated using percent units of measure (appearing as column headers).
Landing Year All Immigrants Taxfilers Non-taxfilers
percent
Source: Statistics Canada, 2024 Longitudinal Immigration Database.
1980 3.8 4.0 2.5
1981 11.3 12.4 5.6
1982 14.2 15.5 6.7
1983 17.3 18.8 7.4
1984 19.8 21.3 8.7
1985 20.0 21.3 8.4
1986 24.7 26.4 9.3
1987 23.4 24.8 8.1
1988 11.5 12.0 5.9
1989 13.6 14.3 6.8
1990 16.5 17.6 7.8
1991 32.0 34.2 12.5
1992 34.7 36.9 14.5
1993 26.8 28.4 12.0
1994 18.1 19.4 7.4
1995 19.9 21.4 7.3
1996 19.6 21.3 6.4
1997 17.4 19.0 5.5
1998 19.3 20.7 6.8
1999 19.0 20.5 6.4
2000 18.2 19.6 6.0
2001 16.3 17.4 5.6
2002 15.1 16.3 4.7
2003 15.7 17.0 4.5
2004 19.1 20.6 5.1
2005 20.0 21.7 5.3
2006 22.7 24.5 5.4
2007 23.3 25.3 5.2
2008 23.2 25.5 4.9
2009 24.2 26.5 5.2
2010 23.0 25.7 4.3
2011 23.6 26.5 4.8
2012 25.4 28.7 4.7
2013 26.9 30.5 5.2
2014 34.1 38.8 5.9
2015 33.2 38.2 5.9
2016 30.0 35.8 5.4
2017 37.9 44.1 7.9
2018 37.3 44.0 10.1
2019 36.9 44.3 10.5
2020 47.4 54.6 18.5
2021 69.2 75.9 38.5
2022 41.5 51.0 17.6
2023 45.6 58.7 18.7

7.4.1.2 Coverage of non-permanent residents

This section describes the coverage of individuals who only had non-permanent resident permits since 1980, overall tax records are available for 35.4% of them. Among individuals who have not become permanent residents, work permit holders have the highest coverage rate, tax records are available for 44.3% of them (see table 6). There is a wide variety of non-permanent resident permits; some permits are as short as one day.

Table 6
Coverage of non-permanent residents who never became permanent residents by type of permit Table summary
This table displays the results of Coverage of non-permanent residents who never became permanent residents by type of permit With work permit, With study permits, Asylum claimants and Total, calculated using number, and percent units of measure (appearing as column headers).
  With work permit With study permits Asylum claimants Total
number
Source: Statistics Canada, 2024 Longitudinal Immigration Database.
Total filers 2,404,820 1,176,830 308,380 2,767,060
Total non-filers 3,024,280 2,103,090 451,460 5,039,830
Total 5,429,100 3,279,920 759,840 7,806,890
  percent
Percent taxfilers 44.3 35.9 40.6 35.4

7.4.2 T1 Family File (T1FF) size and coverage by year

Tax files for 1982 and subsequent years are available for linked non-permanent and permanent residents. Some permanent residents were non-permanent residents prior to admission. Table 7 gives details on the distribution of linked permanent residents with and without non-permanent permits prior to admission, by tax year. At least one tax file is available for the 82.2% of permanent residents without a non-permanent permit prior to admission and for the 94.3% of permanent residents who were non-permanent residents prior to admission. The fact that permanent residents with pre-admission temporary permits have a higher rate of filing taxes than permanent residents without pre-admission permits can be explained by a requirement in the permanent resident application process with respect to non-permanent residents. Non-permanent residents who apply for permanent residency are required to fulfil their obligation to file tax in Canada. The number of taxfilers on the IMDB_T1FF increases as the years pass since the size of the in-scope population increases.

Table 7
Permanent and non-permanent residents by tax year Table summary
This table displays the results of Permanent and non-permanent residents by tax year Permanent resident admitted prior to 1980, Permanent resident since 1980, Permanent resident with non-permanent resident permit, Non-permanent resident only and Number of taxfilers, calculated using number, and percent units of measure (appearing as column headers).
  Permanent resident admitted prior to 1980 Permanent resident since 1980 Permanent resident with non-permanent resident permit Non-permanent resident only Number of taxfilers
number
Note ...

not applicable

Notes: Pemanent resident statistics are for people who were admitted between 1980 and 2024.
Non-permanent residents statistics are for people who obtain their first permits between 1980 and 2024.
Source: Statistics Canada, 2024 Longitudinal Immigration Database.
1982 1,640,170 190,520 56,290 25,550 1,912,530
1983 1,621,410 226,310 66,230 23,720 1,937,670
1984 1,616,890 265,570 80,720 24,130 1,987,300
1985 1,597,810 299,850 95,810 22,830 2,016,300
1986 1,652,690 358,040 125,890 26,880 2,163,500
1987 1,632,210 417,670 159,370 27,080 2,236,320
1988 1,651,650 510,050 201,270 36,150 2,399,120
1989 1,678,010 623,990 264,770 48,470 2,615,240
1990 1,686,250 745,400 312,270 51,840 2,795,750
1991 1,682,940 843,040 361,030 51,620 2,938,620
1992 1,688,930 949,170 404,990 51,160 3,094,240
1993 1,720,640 1,093,340 444,380 51,150 3,309,500
1994 1,705,170 1,214,690 469,850 50,290 3,440,000
1995 1,688,910 1,326,850 495,210 52,630 3,563,590
1996 1,669,930 1,434,370 516,150 54,520 3,674,970
1997 1,645,470 1,548,780 536,770 56,520 3,787,530
1998 1,621,470 1,648,640 557,000 55,450 3,882,550
1999 1,615,090 1,773,070 592,980 60,060 4,041,200
2000 1,597,430 1,916,670 633,670 67,920 4,215,700
2001 1,583,980 2,073,580 683,020 77,920 4,418,490
2002 1,554,090 2,203,520 720,910 83,550 4,562,060
2003 1,534,170 2,325,690 758,320 86,800 4,704,980
2004 1,518,200 2,456,570 800,470 89,350 4,864,600
2005 1,493,190 2,572,470 834,440 96,040 4,996,140
2006 1,475,520 2,721,580 892,030 100,510 5,189,630
2007 1,456,800 2,844,920 961,410 113,270 5,376,390
2008 1,436,650 2,969,650 1,040,590 135,820 5,582,710
2009 1,416,330 3,084,830 1,108,740 144,990 5,754,890
2010 1,391,660 3,210,440 1,167,800 152,820 5,922,720
2011 1,372,720 3,340,860 1,236,470 159,680 6,109,730
2012 1,346,180 3,458,930 1,309,920 168,790 6,283,830
2013 1,327,870 3,591,820 1,393,780 182,940 6,496,410
2014 1,306,330 3,711,190 1,487,260 190,490 6,695,270
2015 1,279,170 3,838,540 1,567,920 188,550 6,874,170
2016 1,251,110 3,960,620 1,663,680 194,220 7,069,630
2017 1,225,360 4,064,740 1,799,650 226,280 7,316,030
2018 1,202,230 4,206,730 1,972,840 279,280 7,661,080
2019 1,163,530 4,343,590 2,143,010 368,7s20 8,018,850
2020 1,141,140 4,413,450 2,209,760 383,520 8,147,870
2021 1,110,790 4,501,100 2,278,510 550,370 8,440,780
2022 1,081,440 4,666,900 2,349,240 984,410 9,081,990
2023 1,051,040 4,811,070 2,374,220 1,585,930 9,822,260
Total taxfilers 2,047,030 6,041,480 2,647,430 2,753,640 ... not applicable
Total non-taxfilers 2,046,620 1,307,380 159,330 4,244,340 ... not applicable
  percent
Percent taxfilers 50.0 82.2 94.3 39.3 ... not applicable

Chart 7 shows the proportion of permanent residents who were non-permanent residents prior to admission. This varies by tax year from a low of 22.6% for the 1983 tax year to a high of 33.6% for the 2021 tax year.

Chart 7 Percentage of permanent residents who were non-permanent residents prior to landing, by tax year

Data table for Chart 7
Data table for chart 7 Table summary
The information is grouped by Tax year (appearing as row headers), , calculated using (appearing as column headers).
Tax year Percent
Source: Statistics Canada, 2024 Longitudinal Immigration Database.
1982 22.8
1983 22.6
1984 23.3
1985 24.2
1986 26.0
1987 27.6
1988 28.3
1989 29.8
1990 29.5
1991 30.0
1992 29.9
1993 28.9
1994 27.9
1995 27.2
1996 26.5
1997 25.7
1998 25.3
1999 25.1
2000 24.8
2001 24.8
2002 24.7
2003 24.6
2004 24.6
2005 24.5
2006 24.7
2007 25.3
2008 25.9
2009 26.4
2010 26.7
2011 27.0
2012 27.5
2013 28.0
2014 28.6
2015 29.0
2016 29.6
2017 30.7
2018 31.9
2019 33.0
2020 33.4
2021 33.6
2022 33.5
2023 33.0

An immigrant who filed taxes for a given year will not necessarily file taxes the next year. For example, if Person A landed in 1983, this individual might be found on tax files from 1984 to 1999, but not be found on the 2000 file, and again be found on the 2001 to 2013 files. For example, 24.8% of filers from the 1980 cohort had tax files available for all years. Out-migration, death and late filing are some of the reasons immigrant filers might stop filing permanently or for some years.

Most immigrants file taxes for the first time in the year they land or one year before or after. For example, of the 251,120 immigrants who landed in 2006, 100,490 (40.0%) filed taxes for the first time in 2006, while 15,560 (6.2%) did so in 2007 and 3,190 (1.3%) did so in 2015 .

7.5 Quality assessment of immigration data

7.5.1 Quality assessment of the Integrated Permanent and Non-permanent Resident File (PNRF)

A validation of the content of the PNRF_1980_2024 was done. While admission and tax data are collected mandatorily from those in scope, some fields may not have been completed. They could be left empty because the response was unknown, or for other reasons unbeknownst to database users (e.g., refusal) (McLeish 2011). Item non-response can present issues when one is considering the IMDB for statistical purposes, including the following:

  1. If the database user is interested in producing a sample based on characteristics for which there are missing records, there will be coverage error (i.e., those being included in the sampling frame may not be representative of the target population).
  2. If the non-response is non-ignorable (i.e., the fact that information is missing is not a random occurrence; the fact that there is no response is indicative of what the response would have been), any analysis using those variables would be biased.

The presence of missing variables and invalid values was assessed. The numbers presented in this section are rounded. Invalid values are either inconsistent or not listed in the metadata tables available to users (see the immigration component of the data dictionary appendix). Most of the quality issues listed in Table 8 are for data collected in the 1980s and 1990s. It should be noted that some seemingly valid values may be erroneous as well.

The variable Case Identification Number (CASE_ID) has item response rates generally in the high 90% range (usually over 99%). However, for some landing years, the response rate drops significantly (to as low as 80% in 1991 and 1992). Therefore, any analysis using this variable for all landing years will under-represent those years where the item non-response is higher (e.g., 1986, 1987 , 1991, 1992, 1993, 2020). No detection of invalid values was performed for the variable Case Identification Number (CASE_ID).

The variable Landing_age was defined as invalid when it was greater than 100, although it is possible in some instances that these values are accurate. It should be noted that, according to the values for this variable, the number of immigrants who landed after age 100 was much higher between 1987 and 1995 than the other landing years. This could be the result of a data capture issue.

In the PNRF of the 2024 IMDB, 25 records had a birth year prior to 1880, with 15 records having birth year 1753 with corresponding landing years that are post 1985.

The variables related to country have quality issues as well. The country of birth is missing for some records in almost all landing years. For example, values are missing for over 100 records in each of the years from 1985 to 1993. The country of citizenship is missing for fewer than 20 records per landing year for most years (with the major exceptions between 2004-2007, where over 100 records were missing per landing year). The country of residence is missing for many admission records from 2011 (this value is missing for 1810 records, or 0.7% of admissions taking place that year), 2012 (this value is missing for 5015 records, or 1.9% of admissions taking place that year) and 2013 (missing for 2375 records, or 0.9% of admissions in that year).

The education variables, prior to the 2017 cohort, after imputation (see Section 6.3), have over 150 missing values per landing year from 1980 to 1984; this translates as a rate of missing values per landing year of less than 0.5%. A new derive variable using Express Entry data was used to help fill some missing data for the education variables for those admitted from 2015 to 2020.

The percentage of valid responses for the occupation variables is above 99% for all landing years.

The variables Family_Status and CSQ_IND have most of their missing values for records with a landing year prior to 1999.

Mother_Tongue is missing for a few hundred records between 1990 and 1995 admission years.

The variable Official language has an increasing number of missing values; from 2016 to 2024, between 1,820 and 10,815 missing values per cohort.

The variable Marital_Status has over 200 missing values per cohort since 2012.

The variables Destination_CD, Destination_CMA, Destination_CSD and Destination_province have few missing values; the 2023 IMDB uses the Standard Geographical Classification (SGC) to update the geographical region and code.

The year and month of death was missing or inconsistent for some individuals identified as deceased (Death_Indicator=1). The value “9999” was assigned to Death_Year and the value “99” was assigned to Death_Month in cases where the year and month of death were unknown or inconsistent.

Table 8
Quality assessment of the Integrated Permanent and Non-permanent Resident File since 1980 Table summary
The information is grouped by PNRF variables (appearing as row headers), Valid responses, Blanks / missing and Invalid responses, calculated using number, percent, number, percent, number and percent units of measure (appearing as column headers).
PNRF variables Valid responses Blanks / missing Invalid responses
number percent number percent number percent
Notes: PNRF: Integrated Permanent and Non-permanent Resident File. NPR: non-permanent resident. Only variables with missing or invalid values were included in the table. All numbers are rounded.
Source: Statistics Canada, 2024 Longitudinal Immigration Database.
Case_ID 10,455,100 98.28 182,980 1.72 0 0.00
Landing_age 10,636,970 99.99 380 0.00 730 0.01
Birth_Year 10,637,880 100.00 180 0.00 20 0.00
Gender 10,638,080 100.00 0 0.00 0 0.00
Country_Birth 10,635,200 99.97 2,880 0.03 0 0.00
Country_Citizenship 10,636,560 99.99 1,520 0.01 0 0.00
Country_Residence 10,624,690 99.87 13,390 0.13 0 0.00
Education_Qualification 9,682,680 91.02 955,400 8.98 0 0.00
Level_of_Education 10,635,000 99.98 1,670 0.02 0 0.00
Years_of_Schooling 10,634,210 99.98 2,460 0.02 0 0.00
Education_Derived 10,127,590 95.20 510,490 4.80 0 0.00
Landing_age_6_groups 10,637,700 100.00 380 0.00 0 0.00
Landing_age_9_groups 10,637,700 100.00 380 0.00 0 0.00
Occupation_CD 10,630,530 99.93 7,550 0.07 0 0.00
NOC5-NOC2 10,582,050 99.47 56,030 0.53 0 0.00
Skill_level_CD21 10,630,520 99.93 7,560 0.07 0 0.00
Family_Status 10,635,490 99.98 2,590 0.02 0 0.00
Family_Status_rollup 10,635,490 99.98 2,590 0.02 0 0.00
Marital_status 10,631,810 99.94 6,270 0.06 0 0.00
Marital_status_rollup 10,631,810 99.94 6,270 0.06 0 0.00
Mother_Tongue 10,635,970 99.98 2,110 0.02 0 0.00
Official_Language 10,579,990 99.45 58,090 0.55 0 0.00
Special_Program 2,295,360 21.58 8,342,720 78.42 0 0.00
CSQ_ind 10,637,850 100.00 230 0.00 0 0.00
Destination_CD 10,637,710 100.00 370 0.00 0 0.00
Destination_CMA 10,637,710 100.00 370 0.00 0 0.00
Destination_CSD 10,637,710 100.00 370 0.00 0 0.00
Destination_Province 10,637,710 100.00 370 0.00 0 0.00
Permits and NPR-specific variables 3,026,840 100.00 0 0.00 0 0.00
Death_Year 10,637,420 99.99 660 0.01 0 0.00
Death_Month 10,637,370 99.99 710 0.01 0 0.00

7.5.2 Quality assessment of the Non-permanent Resident File (NRF)

A validation of the content of the NRF_PERMIT_1980_2024 and NRF_PERSON_1980_2024 files was done. These files contain different sets of variables from each other. In Table 8B, variables Landing_Year to Number_All_Permits appear on the person file, while the remainder appear on the permits file. While admission and tax data are collected mandatorily from those in scope, some fields may not have been completed. They could be left empty because the response was unknown, or for other reasons unbeknownst to database users (e.g., refusal) (McLeish 2011). Item non-response can present issues when one is considering the IMDB for statistical purposes, including the following:

  1. If the database user is interested in producing a sample based on characteristics for which there are missing records, there will be coverage error (i.e., those being included in the sampling frame may not be representative of the target population).
  2. If the non-response is non-ignorable (i.e., the fact that information is missing is not a random occurrence; the fact that there is no response is indicative of what the response would have been), any analysis using those variables would be biased.

The presence of missing variables and invalid values was assessed. The numbers presented in this section are rounded. Invalid values are either inconsistent or not listed in the metadata tables available to users (see the immigration component of the data dictionary appendix). It should be noted that some seemingly valid values may be erroneous as well.

The variable Landing_Year has a high percentage of missing values ( 72.1%). This is normal as only landed individual will have a landing year, and the NRF includes all non-permanent residents, both landed and un-landed.

In the NRF_PERSON of the 2024 IMDB, 260 records had a birth year prior to 1880, with 250 records having birth year 1753.

While most records have a birth country, those with a missing Country_Birth also have a missing landing year.

The variables Effective_Date and Valid_Date don’t have invalid responses themselves, but when compared together can produce invalid responses. For example, the Valid_Date must always appear after the Effective_Date. Records that have the Valid_Date appear before the Effective_Date could be considered as invalid responses for one or both of these variables. Additionally, any record that has a duration of 5 or more years between the Effective_Date and the Valid_Date are suspicious and are likely to include an invalid value for one of the variables. Overall, 0.005% of effective/valid date comparisons could be considered invalid because of these 2 issues.

Over 99% of missing Valid_Date occur when the Document_Type variable is 46 (refugee claim).The reason for this is because refugee claims are not assigned an end date.

The variables Destination_CD, Destination_ER, Destination_CMA, Destination_CSD and Destination_province have a smaller proportion of missing values than other variables, but much larger than the PNRF. Most years below 2004 (based on the effective_date variable) have a very low missing variables rate, around 1%. However, year 1989, has about a 12% missing rate. After 2004 the missing rate fluctuates between 2% and 13%. The 2023 IMDB uses the Standard Geographical Classification (SGC) to update the geographical region and code.

Table 8B
Quality assessment of the Non-permanent Resident Files Table summary
The information is grouped by NRF variables (appearing as row headers), Valid responses, Blanks / missing and Invalid responses, calculated using number, percent, number, percent, number and percent units of measure (appearing as column headers).
NRF variables Valid responses Blanks / missing Invalid responses
number percent number percent number percent
Notes: NPR: non-permanent resident. Variables come from either the person level file or the permit level file. Only variables with missing or invalid values were included in the table. All numbers are rounded.Effective_date and Valid_date variables can be invalid when compared against each other. See Section 7.5.2 paragraph for details.
Source: Statistics Canada, 2024 Longitudinal Immigration Database.
Landing Year 3,026,840 27.94 7,806,890 72.06 0 0.00
birth_year 10,832,160 99.99 1,320 0.01 260 0.00
birth_month 10,832,360 99.99 1,370 0.01 0 0.00
gender 10,833,730 100.00 0 0.00 0 0.00
COUNTRY_BIRTH 10,815,840 99.83 17,890 0.17 0 0.00
NUMBER_OTHER_PERMITS 10,833,730 100.00 0 0.00 0 0.00
NUMBER_REFUGEE_CLAIMS 10,833,730 100.00 0 0.00 0 0.00
NUMBER_WORK_PERMITS 10,833,730 100.00 0 0.00 0 0.00
NUMBER_STUDY_PERMITS 10,833,730 100.00 0 0.00 0 0.00
NUMBER_ALL_PERMITS 10,833,730 100.00 0 0.00 0 0.00
COUNTRY_RESIDENCE 24,579,570 95.58 1,137,450 0.04 0 0.00
COUNTRY_CITIZENSHIP 25,671,780 99.82 45,230 0.00 0 0.00
LEVEL_OF_STUDY_ROLLUP 9,116,510 35.45 16,600,500 64.55 0 0.00
LEVEL_OF_STUDY 9,116,510 35.45 16,600,500 64.55 0 0.00
SKILL_LEVEL_CD21 16,874,530 65.62 8,842,480 34.38 0 0.00
OCCUPATION_CD 16,879,190 65.63 8,837,820 34.37 0 0.00
NOC5_CD21 17,608,930 68.47 8,108,080 31.53 0 0.00
NOC4_CD21 17,608,930 68.47 8,108,080 31.53 0 0.00
NOC3_CD21 17,608,930 68.47 8,108,080 31.53 0 0.00
NOC2_CD21 17,608,930 68.47 8,108,080 31.53 0 0.00
DESTINATION_CSD 24,274,020 94.39 1,442,990 5.61 0 0.00
DESTINATION_CMA 24,274,020 94.39 1,442,990 5.61 0 0.00
DESTINATION_PROVINCE 24,274,020 94.39 1,442,990 5.61 0 0.00
DESTINATION_CD 24,274,020 94.39 1,442,990 5.61 0 0.00
DESTINATION_ER 24,274,020 94.39 1,442,990 5.61 0 0.00
effective_date 25,717,010 100.00 0 0.00 0 0.00
valid_date 24,350,730 94.69 1,366,280 5.31 0 0.00
DOCUMENT_TYPE 25,717,010 100.00 0 0.00 0 0.00
SPECIAL_PROGRAM 5,835,000 22.69 19,882,010 77.31 0 0.00
CLASSIFICATION_ID 10,365,640 41.21 14,789,780 58.79 0 0.00
LMIA_EXEMPTIONS 11,443,610 44.50 14,273,400 55.50 0 0.00

7.6 Quality assessment of the Province of Residence Variable (PRCO_)

A validation of the geography variables included in the IMDB tax files was done. This section discusses how the variable Province of Residence (PRCO_) was derived and its quality.

The Province of residence (PRCO_) is based on information from taxfilers when available. Missing information from the province of residence is replaced by information collected on the postal code of the mailing address either from the individual (PSCO_I), if available, otherwise from the family (PSCO_F).


Table 9
Concordance between PRCO and PSCO_
Table summary
This table displays the results of Concordance between PRCO and PSCO_. The information is grouped by PRCO (appearing as row headers), Province and Territories and First character of the postal code (PSCO) (appearing as column headers).
PRCO Province and Territories First character of the postal code (PSCO)
0 Newfoundland and Labrador A
2 Prince Edward Island B
1 Nova Scotia C
3 New Brunswick E
4 Quebec G, H, J
5 Ontario K, L, M, N ,P
6 Manitoba R
7 Saskatchewan S
8 Alberta T
9 British Columbia V
10 Northwest Territories X
11 Yukon Territories Y
12 Non-residents missing
14 Nunavut X

While the Province of residence (PRCO_) is more reliable than the Taxing province (TXPCO_), some abnormalities were observed mostly on the non-resident code in the reporting for taxation years 1989, 1993, and 1998. These may impact specific provinces.

For the 1993 tax year, IMDB_T1FF includes anomalies for the province of Manitoba with an unusual number of residents (48,130 in 1993, compared to 33,650 the tax year before, and 37,365 the tax year after). Similar changes are observed for the Northwest Territories. Additionally, 740 individuals are coded as residing in Nunavut while Nunavut was created in 1998. 725 individuals are coded as residing in multiple jurisdictions. Users can use the information from the variable PSCO_F to diminish the effect of the anomalies on their analyses that include province of residence. However, as stated above, the time are different between PSCO_ (based residence at time of filling) and PRCO_ (residence on December 31st).

Non-resident (PRCO_=12) records appear to be overestimated in the 1989 IMDB_T1FF. It includes 79,210 non-residents of Canada, with many of them having a non-permanent residency status. Users can decide to use the postal code of the mailing address (PSCO_ at the individual or family level) to derive the value of PRCO_ or remove the non-residents from their analysis.

In the 1998 IMDB_T1FF, a higher than expected number of records are assigned to Newfoundland and Labrador (PRCO_). In these cases the place of residence of the family at the time of filing is also Newfoundland based on variable PSCO_F.


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