The Importance of Financial Resources for Student Loan Repayment

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The Importance of Financial Resources for Student Loan Repayment Lance Lochner, Todd Stinebrickner and Utku Suleymanoglu CIBC Centre for Human Capital & Productivity Department of Economics University of Western Ontario November 26, 2015 Abstract: Government student loan programs must balance the need to enforce repayment among borrowers who can afford to make their payments with some form of forgiveness or repayment assistance for those who cannot. Using unique survey and administrative data from the Canada Student Loan Program, we show that nearly all recent borrowers with annual incomes above $40,000 make their standard loan payments while repayment problems are common among borrowers earning less than $20,000. Still, over half of all low-income borrowers manage to make timely payments. Using unique survey and linked administrative data on borrowers, we demonstrate that other financial resources in the form of savings and family support are key to understanding this repayment problems are rare among low-earners with access to savings and family support. This has important policy implications for many recent proposals that advocate for expansions in income-based repayments. Under a universal income-based repayment system, many low-income borrowers that currently make their payments (enabled by savings and/or family support) would pay less, while little new revenue would likely be generated from inducing payment among those that are currently delinquent or in default given their low income levels. We show that expanding Canada s income-based Repayment Assistance Plan to automatically cover all borrowers could reduce revenue by nearly one-half over the first few years of repayment. Although a sizeable group of recent borrowers would benefit from improved repayment assistance, our results suggest caution before broadly expanding assistance to all low-income borrowers, many of whom already benefit from informal insurance provided by savings and their families. 1 Introduction Rising costs of higher education, student debt levels and student loan default rates have heightened tensions inherent in post-secondary student loan programs (Avery and Turner, 2012, Lochner and Monge-Naranjo, forthcoming). The central objective of these programs is to ensure 1

that students have access to the funds needed to benefit from higher education. However, with students borrowing more than ever and tight fiscal budgets, governments must ensure that loans are repaid whenever possible. With three-year student loan cohort default rates of nearly 15% (in both the U.S. and Canada), concerns naturally arise that some students may be choosing not to repay their loans even when they are in a position to do so. At the same time, there are growing concerns due to rising labor market instability (Gottschalk and Moffitt 2008, Lochner and Shin 2014) that many low-income borrowers in delinquency or default may be financially unable to meet their loan obligations through no fault of their own. High rates of prolonged unemployment even among college graduates throughout and following the Great Recession have only heightened these concerns, prompting calls for expanding repayment assistance and income-based repayment schemes. 1 It is well-understood that an efficient student loan program should provide at least some insurance to borrowers against adverse labor market outcomes by reducing repayment amounts as in income-based repayment schemes (Friedman and Kuzenets 1945, Nerlove, 1975, Chatterjee and Ionescu, 2012, Lochner and Monge-Naranjo, forthcoming). In the absence of adequate formal insurance mechanisms, borrowers with low post-school income will be less likely to maintain their payments. Indeed, previous studies document higher student loan delinquency and default rates among borrowers with low earnings (e.g. Gross, et al., 2008; Lochner and Monge-Naranjo, 2015). Although labor market income is an important financial resource, access to other resources like personal savings, loans/gifts from families, or other in-kind assistance from families (e.g., the opportunity to live at home) may also provide valuable insurance against adverse labor market outcomes, enabling loan repayment. In determining appropriate payment amounts for borrowers, these additional resources should be taken into account whenever possible. Of course, it can be quite difficult for lenders or the government to monitor personal savings and family support in order to set student loan payments. As discussed in the literature on unemployment insurance, 1 The U.S. introduced the Pay as you Earn Repayment Plan for recent borrowers in 2012, while Canada introduced the Repayment Assistance Plan (discussed further below) in 2009-10. More recently, a majority of the 15 proposals for the Bill and Melinda Gates Foundation s effort to redesign the financial aid system in the U.S. (i.e., the Reimagining Aid Design and Delivery project) argue for a universal income-contingent repayment system. See Nelson (2013) for a short summary of the proposals. 2

access to these types of hidden resources can have important implications for the optimal design of insurance contracts (Abdulakadiroglu, et al., 2002; Kocherlakota 2004; Abraham, et al., 2011). At a more basic level, the extent to which these resources enable student loan repayment even when earnings are low has direct budgetary implications for the expansion of income-based student loan repayment schemes. Despite their potential central importance, very little is known about the broad set of resources available to recent college students and how those resources affect loan repayment, since previous data containing measures of student borrowing and repayment have little information about financial resources other than personal earnings. While some data (e.g., Baccalaureate and Beyond, Beginning Postsecondary Students) contain limited information about parental income when borrowers attended college (usually from financial aid applications), little is known about whether this information is a strong indicator of post-school access to parental transfers or personal savings. Combining administrative data on student loan amounts and repayment with data from a new survey we designed to measure a broad array of available resources (including post-school earnings, savings, and family support), we provide the first available evidence on the important linkages between these resources and student loan repayment. Because our data also contain innovative questions soliciting borrower s views on the importance of repaying student loans and the potential consequences of not doing so, we are able to account for heterogeneity in these factors when assessing the importance of financial resources. Our administrative and survey data come from the Canada Student Loans Program (CSLP), which services all provinces and territories in Canada except Quebec and faces repayment problems comparable to those observed in the U.S. 2 These data reveal that more than one-infour CSLP borrowers in their first two years of repayment is experiencing some form of repayment problem at the time of the CSS. Among these (non-paying) borrowers, available resources are extremely scarce: 77% have annual earnings below $20,000, 83% have little or no savings of their own, and 88% have little or no access to parental assistance. 2 In 2010-11, the CSLP provided loans to approximately 425,000 full-time students (Human Resources and Skills Development Canada 2012). The official three-year cohort default rate of 14.3% for loans with repayment periods beginning in 2008-09 was very similar to the corresponding rate of 13.4% for the U.S. 3

We begin by showing that repayment problems are strongly related to all types of available financial resources: own income, own savings, and parental assistance. Taking into account other potential determinants of repayment, we find that conditional on student debt levels, educational attainment, beliefs about the importance or repaying student loans, and other personal characteristics, borrowers with post-school annual earnings of $10-20 thousand are 26 percentage points more likely to experience a repayment problem relative to those earning over $40,000 per year, 3 while borrowers with little or no personal savings (family support) are 25 (14) percentage points more likely to experience repayment problems than their counterparts with savings (family support). Highlighting the importance of considering financial resources other than post-school earnings, accounting for differences in personal savings and family support explains more of the variation in repayment problems than does accounting for differences in earnings. One might expect parental income to serve as a good proxy for both personal savings and family support; however, we find that parental income (measured at the time students first started borrowing) is unrelated to personal savings and family support after students leave school. As such, we estimate weak effects of parental income on post-school repayment problems. 4 While repayment problems are primarily concentrated among borrowers with low post-school earnings, many of these borrowers still manage to make timely CSLP payments. We show that additional financial resources in the form of savings and parental assistance are crucial for these low-income borrowers. Only 4% of low-income borrowers with access to (at least) a modest amount of savings and family assistance experience repayment problems, while 60% of lowincome borrowers with negligible savings and little family support fail to make regular payments. Taking other factors into account does not change this basic result. Together, these findings demonstrate that (Canadian student) borrowers with the resources to pay their loans almost always do and that resources other than labor market income play an important insurance role for many borrowers who experience adverse labor market outcomes. 3 The estimated relationship between earnings and student loan non-payment is stronger than that found in studies using earlier cohorts in the U.S. and Canada (Dynarski 1994; Flint 1997; Lochner and Monge-Naranjo 2015; Schwartz and Finnie 2002). See Gross, et al. (2009) for a recent survey of this literature. 4 This is consistent with heterogeneity in parental altruism, as emphasized in Park (2015). 4

These findings have important implications for policy proposals based on the premise that labor income is a sufficient measure of the resources available for repayment. To study this issue, we consider moving from the current CSLP environment, in which income-based payments are offered as an option to low-income borrowers under Canada s Repayment Assistance Program (RAP), to one in which all borrowers are automatically enrolled in RAP. The current CSLP environment is very similar to that in the U.S., where borrowers can make standard debt-based payments or can sign up for one of many optional income-based repayment plans. The counterfactual environment, a Universal RAP, would be more similar to the income-contingent loan schemes of Australia and New Zealand (Chapman 2006) or those under discussion in the U.S. 5 This policy change could have important budgetary implications, because many lowincome borrowers currently make their standard loan payments, even though they are eligible for much lower payments under RAP. The fact that many borrowers do not take advantage of lower RAP payments may reflect high costs associated with program enrollment or a lack of information about the program coupled with access to other resources like savings and family support that make lower payments unnecessary. We consider the effects of reducing payment levels to the income-based RAP amounts for all low-income borrowers whose standard (debt-based) payment would be higher. Our finding that many low-income borrowers have access to other resources and continue to make standard loan payments suggests that program losses from lowering their payments are likely to be substantial. Our finding that most borrowers in delinquency or default have low earnings suggests that any potential increase in revenues from inducing them to make smaller RAP payments is likely to be quite small. Indeed, our calculations suggest that even if all borrowers in poor standing were induced to pay the RAP amount (an optimistic scenario), the policy of making RAP universal would lead to sizeable revenue losses for CSLP, at least in the short-run. 6 5 For example, the majority of proposals for the Bill and Melinda Gates Foundation s Reimagining Aid Design and Delivery project argue for a federal student loan system with income-based payments for all borrowers. 6 A pure accounting approach of the nature we consider likely under-states the costs of an income-contingent lending program, because it abstracts from any behavioral responses by (potential) borrowers related to moral hazard and adverse selection. For example, additional repayment assistance (or lower payments) for low-income borrowers may encourage students with weaker labor market prospects to borrow, adversely affecting the pool of borrowers (i.e., adverse selection). It may also encourage borrowers to reduce study, job search, and work efforts or to choose less lucrative majors and careers (e.g., see the survey by Lochner and Monge-Naranjo (forthcoming)). Other than Rothstein and Rouse (2011), who find that student loan amounts can affect early career choices, there is little evidence on the likely importance of these effects. 5

This paper proceeds as follows. The next section discusses the data we use from CSLP administrative records and Client Satisfaction Surveys. Section 3 contains our main analysis documenting the importance of post-school earnings, personal savings, and family support for student loan repayment. In Section 4, we show that savings and parental support are largely unrelated to parental income, so parental income is a poor proxy for these additional resources and has little effect on loan repayment. In Section 5, we consider the implications of moving to a universal income-based repayment scheme for the distribution of borrower payments and the CSLP budget. Section 6 concludes with some broader lessons for government student loan programs. 2 Data Our analysis involves merging CSLP administrative data with data from the CSLP Client Satisfaction Surveys (CSS), which are traditionally used to gauge borrowers general satisfaction with the CSLP program. For the years 2011 and 2012, new survey questions were included on the survey in an effort to understand why some people experience repayment problems for their student loan obligations while others do not. The CSS is an annual telephone survey of roughly 2,700 borrowers of all ages (in-study and inrepayment). 7 The 2011 and 2012 surveys used in this study elicit unique information about background characteristics (e.g., gender, province of residence, education level, and field of study), financial resources (e.g., income, savings, and family/parental support), and perceptions about the consequences of not repaying loans. We match respondents from the CSS with their administrative records from the CSLP, which provide information regarding their loan balances and repayment outcomes (i.e., loan status) throughout the entire time they were clients. Administrative records also contain information about dependency status and parental income levels (for dependent students) at the time of student aid application. 7 Survey response rates were 50% and 52%, respectively, in 2011 and 2012. The survey administrator conducted an analysis of non-response to see whether responders and non-responders differed in the following dimensions relevant to our analysis: loan amount, repayment status (current, in arrears, on IR), institution type (private vs. public), province, and age. Nearly all of these differences were statistically insignificant at the 5% level in both survey years; however, responders were 3-4 percentage points less likely to be in arrears in both surveys, suggesting that students having repayment problems are slightly under-represented. 6

CSLP borrowers are not required to begin making payments on their loans until six months after they are last enrolled in school. After this grace period, all CSLP loans are consolidated and repayment begins. We focus attention on the final loan repayment period, beginning six months after borrowers complete their most recent schooling spell. This avoids issues associated with school re-entry, since borrowers need not make payments on previous loans while enrolled. We restrict our sample to borrowers who entered their final loan repayment period no more than two years prior to answering the CSS. 8 Borrowers in the early stages of repayment are of particular interest, because most repayment problems surface relatively quickly roughly 80% of all CSLP defaults occur within the first three years after consolidation with the majority coming in year three (Office of the Chief Actuary 2011). We also restrict our sample to borrowers under age 30 to ensure a more homogeneous group of respondents. Descriptive statistics for the variables used in our analysis are reported in Table 1. For comparability across analyses, we restrict our sample throughout the paper to the 689 borrowers who had non-missing responses to baseline variables likely to influence repayment (panel B) and our main financial resource variables of interest: current income, expected parental support, and savings (panel C). Sample weights are used for all calculations (here and in following tables) to account for stratified sampling by province, loan type, and repayment status (within the CSS sampling frame). Repayment Outcomes Our analysis focuses on two measures of repayment problems at the time of the CSS. 9 The first of our two dependent variables is a serious repayment problem indicator which has a value of one if the CSLP administrative data indicates that the borrower is delinquent or has a loan status of bankruptcy, claim submitted, consumer proposal, return-to-government, aging default, or 8 To determine the final repayment period, we examine their status as of two months after the CSS. Restricting the sample to those entering repayment within two years of the CSS also helps mitigate concerns about the sampling nature of the CSS, which did not survey borrowers who had fully repaid their loans nor those who were already in default (those in delinquency were surveyed). We study the implications of this sampling scheme in Appendix A, and obtain very similar results to those presented in the paper when we limit our sample to those who had consolidated their loans within one year (rather than two years) of the CSS. 9 The 2011 and 2012 CSS surveys took place in January and February of both years. We examine repayment status as of February 2011 and 2012. 7

other defaults. 10 The second dependent variable is an indicator for any repayment problem, which is set to one whenever a serious repayment problem exists or if an individual is taking advantage of repayment assistance offered by the CSLP: Interest Relief (IR), Debt Reduction in Repayment (DRR), or the Repayment Assistance Program (RAP). 11 While borrowers on formal repayment assistance are generally considered to be in good standing, these outcomes are of interest because they are predictive of more serious longer term repayment problems like default (see Appendix B). These programs are also costly even when borrowers do not ultimately default, since interest payments are often covered by CSLP and loan amounts may be forgiven. In 2010-11, nearly 90% of RAP recipients made no monthly payments, so CSLP covered associated interest payments at an estimated cost of $83 million (Human Resources and Skills Development Canada 2011). Another $36 million was budgeted to cover future unpaid principal amounts associated with the RAP program for CSLP loans disbursed in 2010-11. Table 1 shows that 26% of borrowers had some form of repayment problem at the time of the CSS, while 10% were experiencing more serious repayment problems. Determinants of Repayment Problems A range of factors may influence student loan repayment. Not surprisingly, previous studies have found student debt levels to be an important factor (e.g., see Gross, et al. 2009). We measure the total CSLP loan amount outstanding at the beginning of the repayment period (summing across all loans) based on administrative data. Table 1 shows that, on average, CSLP borrowers owed nearly $14,000. For information about other factors that may influence repayment behavior, we turn to the CSS. As reported in Panel B of Table 1, our sample contains more women than men and has an average age of twenty-four. Aboriginals make up slightly less than 10% of our sample. Roughly 40% of borrowers had earned at least a university degree (from four-year institutions), while 10 We observe a very small number of defaults in our sample, since the sampling frame (which excluded borrowers in default) was determined a couple months before the CSS was administered. 11 Introduced in 2009, RAP reduces CSLP loan payments for eligible borrowers to affordable amounts no greater than 20% of gross family income. Eligibility is restricted to borrowers with low family income (adjusted by family size) relative to their standard loan repayment amount. We discuss RAP further in Section 5 and Appendix D. Prior to RAP, the CSLP offered IR and DRR to eligible low-income borrowers. The government made all interest payments for borrowers on IR, while it paid down the principal (in multiple stages up to a maximum of $26,000) for borrowers on DRR who had exhausted their 54 months of eligibility on IR. 8

80% had a vocational/technical degree (from less than four-year institutions) or higher. Only 14% had attended a private for-profit institution, almost exclusively at the vocational/technical level. The CSS contains a unique survey question eliciting beliefs about the importance of repaying student loans. Specifically, the survey asks borrowers which type of loan (e.g. CSLP, credit cards, home mortgage) they would repay first if financial difficulties prevented them from paying them all. Table 1 shows that roughly 40% of all respondents report that they would stop paying their CSLP loans first. This suggests that many individuals view that failure to make CSLP payments is less harmful than failing to repay other forms of debt. 12 With respect to available financial resources (panel C), about 85% of our sample of recent school-leavers earned less than $40,000 annually, while nearly half of all borrowers earned less than $20,000. Given our sample restrictions (recent school-leavers under age 30), it is not surprising that respondents typically have few assets of their own only half report $1,000 or more in savings. Many respondents are also unable to count on their family for financial help. When asked how much their parents or other family would be willing to give them if they needed money over the next six months, only 30% reported that they could obtain at least $2,500. 13 Finally, panel D of Table 1 shows that roughly 40% of our sample attended school as a dependent student. Among these students, about 30% had parents with annual income of less than $25,000. 12 The CSS also asks respondents what they think would happen to their credit rating if they did not repay their CSLP loans. We have created an indicator equal to one if they report that not paying would make borrowing much more difficult or impossible. Using this indicator in place of the indicator variable based on which loan they would stop paying first yields very similar conclusions to those reported in the text. 13 Specifically, the CSS asks: If you needed money during the next six months, how much would parents or other family be willing and able to give you? Respondents are given the choice between 8 categories with 0 and $1-2,499 being the two lowest. We focus on whether the borrower reports that he/she could expect to receive $2,500 or more from family/parents a modest sum but enough to cover up to a year of typical monthly loan payments. In Appendix C, we consider a broader measure of family assistance that includes the ability of students to move back in with their parents. Based on this broader measure of family assistance, approximately 85% of all borrowers can count on financial transfers of at least $2,500, can move back in with their parents, or already live with them. Results using this alternative measure are qualitatively consistent with those discussed in the paper. 9

3 Importance of Post-School Earnings, Savings, and Family Transfers for Student Loan Repayment Previous studies have demonstrated that student debt, educational attainment, and post-school income are all important determinants of student loan default. 14 For comparison, we briefly discuss the relationship between these factors and our measures of student loan repayment problems. More importantly, we document the importance of post-school savings and access to parental support for student loan repayment. Table 2 shows that our broad measure of repayment problems (that includes individuals on repayment assistance) is increasing in student debt levels; however, there is little systematic relationship between student debt and more serious repayment problems. Consistent with prior research, Table 2 documents that repayment problems are less common among borrowers with more post-secondary schooling. For example, serious repayment problems are roughly twice as likely for borrowers with no post-secondary degree compared to those with a university degree or higher. The most striking relationships in Table 2 and the primary focus of this paper are those between repayment problems and different forms of available financial resources. Panel C shows that repayment problems are extremely rare among individuals earning more than $40,000 per year, while they are quite common for those with earnings levels below $20,000. The existence of any repayment problem is 17 times more likely for borrowers earning less than $20,000 annually than for those earning more than $40,000 (41.0% vs. 2.4%). Serious repayment problems are 7 times as likely for borrowers earning less than $20,000 than those earning more than $40,000 (16.2% vs. 2.2%). Differences in repayment problems are also quite large between low- and middle-income borrowers (i.e., annual income less than $20,000 vs. $20-40,000). Panels D and E show how repayment problems vary with access to personal savings and family support. Borrowers who cannot rely on much parental support are three times as likely to experience repayment problems as those who can expect some help from parents if they need it. 14 See Gross, et al. (2009) for a recent review of this literature. Most of this literature examines loan repayment and default in the U.S.; however, Schwartz and Finnie (2002) and Kapsalis (2006) study repayment and default in Canada. 10

Borrowers with little or no savings are roughly five times as likely to experience repayment problems as those with at least $1,000 in savings. Finally, panel F of Table 2 shows that the combination of low current income, little parental support, and negligible savings is a recipe for repayment difficulties. Borrowers with low levels of savings and little parental support are equally likely to experience a repayment problem as not. The same is true among those with low earnings and either low savings or little parental support. Next, we take advantage of the rich survey data from the CSS to incorporate a broader range of factors that may affect student loan repayment than has been considered in previous studies. This helps address concerns that savings and family assistance may be correlated with the amount students borrow in the first place, the type of school they attend, their educational attainment, or their views about the importance of repayment. Tables 3A and 3B report ordinary least squares (OLS) estimates for a linear probability model using our two repayment problem measures ( any problem in Table 3A and serious problem in Table 3B) as dependent variables. 15 All specifications control for important demographic characteristics, educational attainment, student debt, a measure of beliefs about the importance of repaying student loans, an indicator for whether the borrower had attended a private post-secondary institution, and province indicators. We refer to these as baseline determinants below (see panel B of Table 1). Briefly consider the effects of our baseline determinants on repayment problems in the first two columns of Tables 3A and 3B. Consistent with Table 2, the probability of any repayment problem is significantly increasing in student debt levels, while the likelihood of serious repayment problems is not. The estimated effect of educational attainment is modest and statistically insignificant once we condition on post-school income and student debt. This is not surprising, since one might expect the main channels through which educational attainment affects repayment are through earnings and accumulated debt. Repayment problems are more likely among borrowers who attended a private for-profit post-secondary institution even after conditioning on post-school earnings. 16 Other factors, including reported beliefs about the 15 Average marginal effects from analogous Probit models are similar. 16 The estimated effects of private for-profit attendance are significant at the.05 level in column 1 of Table 3A and all columns of Table 3B. The effect in column 2 of Table 3A is significant at the 0.10 level. 11

importance of student loan repayment, have only modest effects on repayment problems, none of which is statistically significant. Our main focus is on the importance of financial resources. The specifications in column (2) of Tables 3A and 3B include indicator variables for all annual income categories reported in the CSS in addition to the baseline determinants. Even after conditioning on student debt, educational attainment, and beliefs about repayment, we estimate strong effects of annual income on student loan repayment problems with a sizeable jump occurring around $20,000. Borrowers earning less than $20,000 per year are 37-55 percentage points more likely to have some form of repayment problem than borrowers earning more than $40,000 (the omitted category). The difference in serious repayment problems for these income groups is 11-13 percentage points. 17 These differentials are extremely large given the rates of repayment problems (26% for any problem and 10% for serious problems) in our sample. Despite the importance of post-school earnings for student loan repayment, Table 2 shows that nearly 60% of borrowers with annual earnings below $20,000 still manage to make timely CSLP payments. Why do some low-income borrowers choose to make their loan payments (many who would qualify for RAP as we discuss in the next section), while others do not? The next few columns of Tables 3A and 3B begin to provide an answer. Additional resources in the form of personal savings and family support also play a very important role in enabling repayment. As we show below, this is especially true among low-income borrowers. Column 3 includes measures of personal savings (at least $1,000) and access to family support (at least $2,500) in addition to the baseline determinants (without controlling for own post-school earnings). Access to both savings and parental support substantially reduce the likelihood of repayment problems, with the effect of the former roughly twice that of the latter. Perhaps more surprisingly, the R-squared statistics at the bottom of the tables reveal that accounting for savings and family support explains more of the variation in repayment problems than does accounting for post-school earnings (i.e., compare columns 2 and 3). In column 4, we simultaneously control for post-school earnings, savings, and parental support. Access to savings reduces the 17 Using very similar data from the CSLP s Defaulter Survey, we have also shown elsewhere that defaulters are significantly more likely to return to good standing if they experience increases in earnings relative to when they entered default (Lochner, et al., 2013). 12

likelihood of any repayment problem by 25 percentage points and serious repayment problems by 12 percentage points. Access to parental support reduces the likelihood of any repayment problem by 14 percentage points and serious repayment problems by 4 percentage points. The estimates in column 5 suggest that the added benefit from having access to both savings and parental support (vs. just one of these) is modest, since the interaction of both indicators is positive. This is more clearly demonstrated in column 6, which explores an alternative specification in which we control for an indicator for access to either savings or family help (but not both) and an indicator for access to both savings and family help. These estimates suggest that access to one non-income-based form of financial resources significantly reduces the likelihood of any (serious) repayment problems by 30 (12) percentage points, while access to a second has much more modest effects. We next show that savings and parental support are particularly important for borrowers with low post-school earnings. In Table 4, we document repayment problems by borrower income and access to personal savings and/or family assistance. Focus on results for low-income borrowers first. Column 1 shows that low-income borrowers with access to both savings and family assistance are very unlikely to experience repayment problems. Rates of any (serious) repayment problems are only 4% (1%) for these borrowers. Column 2 shows that repayment problems become much more likely (rates of 26% (8%) for any (serious) repayment problems) for low-income borrowers with access to only one form of additional financial resources (i.e., some savings or family assistance but not both). Column 3 shows that nearly 60% (25%) of borrowers with negligible savings and little family support experience any (serious) repayment problems. Results for borrowers with incomes of at least $20,000 also suggest a role for savings and family assistance; however, the role is much more muted, especially for more serious repayment problems. For these borrowers, access to at least one form of additional resources (savings or family support) appears to reduce the likelihood of repayment problems, but there is little marginal benefit from having access to both forms since repayment problems are already quite unlikely with access to at least one form. In Table 5, we estimate the importance of savings and family assistance for low-income borrowers (income less than $20,000/year) accounting for other possible determinants of 13

repayment problems (as studied previously in Table 3). Consistent with the results in Tables 3 and 4, we estimate that both savings and parental transfers substantially reduce the likelihood of repayment problems, with the estimated impacts of savings roughly twice those of parental transfers. 18 Based on the specifications in column 1 (column 3), access to at least $2,500 in parental transfers reduces the likelihood of (serious) repayment problems by 15 (6) percentage points, while personal savings of $1,000 or more reduces the likelihood of any (serious) repayment problems by 38 (15) percentage points. Consistent with Table 4, the specifications in columns 2 and 4 suggest that the main benefits in terms of maintaining loan payments comes from having access to at least one of these additional resources; however, the interaction effects of having both savings and parental support are imprecisely estimated. To better understand the extent to which savings and family assistance serve as insurance mechanisms against adverse labor market outcomes, Table 6 estimates the effects of post-school income (conditional on baseline determinants) after stratifying the sample based on whether individuals have access to both savings and parental support, access to only one of these additional resources, or access to neither. Differences in the effects of income across these three groups are striking. Income has small and statistically insignificant effects on repayment problems for borrowers with access to both savings and family assistance. By contrast, borrowers with neither savings nor family support are 62 percentage points (17 percentage points) more likely to experience any (serious) repayment problem(s) if their income is less than $20,000 relative to those with incomes above $40,000. Altogether, these results suggest that savings and family assistance serve as critical sources of insurance for borrowers in the event that they experience periods of low income or unemployment after leaving school. Borrowers with low income and no access to other resources (from savings or family) are more likely than not to experience some form of repayment problem. However, low-income borrowers with modest savings and family support are very unlikely to experience repayment problems. These findings, combined with the finding 18 One might be concerned that our measures of savings and family assistance reflect differences in willingness to repay despite the fact that we control for self-reported views on the importance of CSLP repayment. It is worth noting that we obtain similar results when we restrict the sample to those with current income less than $10,000/year. These borrowers are very unlikely to be able to afford timely payments without some form of savings or outside assistance even if they have a strong desire to do so. In this case, access to savings or parental support appears to make repayment feasible for many borrowers. 14

that high income borrowers with access to modest savings or family support are also very unlikely to experience repayment problems, implies that access to some form of financial resources from work, savings, or family is critical in determining which borrowers experience repayment difficulties. 4 Parental Income and Repayment Problems In this section, we explore whether it is possible to proxy for family support or savings using administrative data on borrower dependency status and parental income. As is typical in the literature, our data only contain measures of parental income for dependent students based on their application for financial aid. Returning to Tables 3A and 3B, column 7 shows that parental income reduces repayment problems (conditional on post-school income and our baseline determinants); however, the effects are much weaker than those observed for our more direct measures of savings and parental assistance. Based on the estimates in Table 3A, dependent students with parental income of at least $25,000 are about 13 percentage points less likely to experience repayment problems compared to independent students. The R-squared statistics for these specifications are only slightly larger than those in column 2, suggesting that controlling for parental income provides little additional explanatory power. Table 7 documents the extent to which parental income (for dependent students) can explain repayment behavior for borrowers with high and low post-school income levels. Column 3 shows results for independent students. Among dependent student borrowers with low postschool earnings, those with parental income of less than $25,000 are 1.3 (2.5) times as likely as those with parental income greater than $25,000 to have any (serious) repayment problem, but these estimated differences in repayment problems by parental income are not statistically significant. Altogether, these results suggest that parental income is a poor predictor of family support and personal savings once children have left school. Table 8 shows that this indeed the case. Columns 1 and 3 report results from regressions of access to parental support and personal savings on parental income (independent students are the omitted category) and our baseline 15

determinants of repayment. Column 2 adds controls for post-school income and an indicator for savings, while column 4 adds controls for post-school income and an indicator for parental assistance. Parental income has modest and statistically insignificant effects on our measures of both parental support and savings. A few other results are worth brief comment. Table 8 reveals that parental support is negatively related with the amount of student debt suggesting that (conditional on parental income) parents who are more willing to provide transfers after school may also have provided more aid during school reducing the student s borrowing needs. The fact that our measure of access to parental support is largely unrelated to post-school income suggests that the former does not represent actual parental support but the ability to access that support when needed as the question was designed. Finally, we see that savings is strongly increasing in post-school income as one would expect. Conditional on post-school income and student debt, Table 8 shows that it is difficult to predict which borrowers have access to parental support or savings. This provides a challenge in the design of student loan programs, since parental support and savings appear to be so important for repayment behavior but are quite difficult for government loan programs (or private lenders) to measure. 5 Implications for Repayment Assistance Programs Our results on the importance of savings and family support have direct implications for the design of government student loan programs. An important feature of income-contingent repayment schemes is to provide explicit insurance for borrowers when they experience adverse income shocks or unemployment. This contrasts with the implicit insurance associated with delinquency and default, which typically trigger penalties like reporting to credit bureaus, legal proceedings, and sometimes wage garnishments. In both the U.S. and Canada, student loan borrowers can choose to enroll in income-contingent repayment programs if they are currently in good standing on their loan and have sufficiently low income. Under Canada s RAP, eligible borrowers are expected to pay a fraction of their current income above a threshold from zero to 20% based on their income towards their 16

CSLP loan. As documented in Appendix D, these income-based payment amounts are greater than under the analogous American Pay-as-you-Earn (PAYE) income-contingent repayment scheme and in other countries with universal income-contingent loan programs like Australia and the United Kingdom. 19 If the income-based payment amount exceeds the standard debt-based amount, RAP recipients are only responsible for the lower standard amount. Expected RAP payments are currently zero for single (childless) borrowers with monthly income below $1,685 (annual income of roughly $20,000). 20 During the early portion of the repayment period (Stage 1 of RAP), if the calculated RAP payment is less than the interest accumulating on their debt that period, the federal government pays the remaining interest amount, so the principal does not grow. After five years of reduced payments, borrowers move to Stage 2 of RAP, and the government effectively forgives the full difference between any reduced RAP payment and the expected standard repayment amount. 21 Participating borrowers are debt-free after fifteen years. In recent years, the CSLP has undertaken several initiatives to streamline application for and to facilitate use of RAP. An extreme version of this would be to automatically enroll everyone in RAP. This would reduce enrolment costs associated with applying for and participating in RAP and would also alleviate concerns that some eligible borrowers are unaware of the option. In principle, this policy would share key features of universal income contingent loan schemes in countries like Australia and the U.K. In this section, we consider the potential implications of moving to a Universal RAP for CSLP revenues. In particular, we examine how payments (based on income and debt levels as of the CSS) would change if all borrowers were automatically enrolled in RAP and made the expected payments under RAP (i.e., the lesser of the RAP amount based on their income and the standard payment). Two groups of borrowers would be most directly affected by such a move. First, many lowincome borrowers may see their payments lowered. Under the current system, many of these 19 The American PAYE plan links payments to earnings for 20 years, forgiving any remaining debt. 20 In 2010-11, nearly 90% of the 165,000 RAP recipients were not required to make a monthly payment (Office of the Chief Actuary 2011). 21 In stage 1 of RAP, the government makes interest payments for the borrower if earnings are low enough such that payments do not cover the full interest amount. Borrowers move to stage 2 after the government pays 60 months of interest or after 120 months after the borrower has left school. During stage 2, the government covers any difference between the full payment amount and the calculated RAP income-based payment amount, effectively forgiving part of the borrower s debt. See Appendix D for further details. 17

borrowers make their standard payments even though they are eligible for much lower (or zero) payments under RAP. This may reflect high costs associated with RAP enrollment or a lack of information about the program coupled with access to other resources like savings and family support that make lower payments unnecessary. Second, many low-income borrowers that are currently delinquent or in default may instead choose to make lower income-based payments. The main revenue implications of moving to a Universal RAP program, therefore, depend on the balance of reduced payments from low-income borrowers currently making standard payments against the potential increased revenue from encouraging current delinquents/defaulters to make some (potentially small) payments. We use two data sources to explore the potential CSLP revenue effects of moving to a Universal RAP. We begin by using our 2011 and 2012 CSS sample. These data are ideally suited for this task, since we can determine current loan payments (using administrative records on loan amounts and repayment status) as well as counterfactual payments under Universal RAP (using survey reports of income and administrative loan amounts). The main limitation of these data is that we do not have information on income beyond the first two years of repayment for our sample respondents; yet, income may be unusually low during these early years due to the transition from school to work. We, therefore, exploit Canada s Survey of Labour and Income Dynamics (SLID) to study potential repayment and revenue effects of a Universal RAP over the first five years of borrowers post-school labor market experience. These longitudinal data contain information on the amount borrowed for school and annual post-school earnings; however, they do not contain information on actual payments. With these data, we compare potential payments under a Universal RAP with standard debt-based payments. 5.1 Using the CSS to Study a Universal RAP We use the administrative loan records combined with income reported in the CSS to measure the revenue effects under a Universal RAP relative to the current CSLP regime. We consider a best case scenario for Universal RAP by assuming that all borrowers would make their calculated payments under this counterfactual regime. That is, payments under Universal RAP are set equal to the lesser of the income-based RAP amount and their actual scheduled payment, 18

regardless of the borrower s current repayment status. 22 In calculating payments under the current regime, we use borrowers scheduled payment as given by administrative records if they are currently in good standing or on RAP and zero if they are currently delinquent or in default. Figure 1 reports the distribution of monthly payments under these two regimes. Our calculations suggest that the fraction of borrowers paying zero would nearly double under a Universal RAP regime, since many low-income borrowers currently making their loan payments would not be expected to make any income-based payments. This highlights the role of additional resources (i.e., savings and family support) in enabling repayment for many low-income borrowers. Automatically placing all of these borrowers on RAP would significantly reduce their repayment obligations. Our calculations further suggest that average monthly payments (including payments of zero) over the first two years of repayment would decline by nearly half from $130 to $68 for recent school-leavers if RAP were made universal. If persistent, a decline in revenue of this magnitude would likely threaten the viability of CSLP. Of course, the long-run picture may look much different from this two-year snapshot comparing the current CSLP regime with a Universal RAP. If most borrowers that experience difficulties transitioning from school to work eventually settle down in higher paying jobs, these short-term losses may be compensated for with higher loan payments in subsequent years. Indeed, if a Universal RAP keeps borrowers better connected with CSLP, it may ultimately result in higher total lifetime payments among borrowers who temporarily experience poor labor market outcomes right out of school. 23 While this possibility is beyond the scope of the current paper, we turn to SLID to study earnings dynamics and potential Universal RAP payments over the first five years of borrowers post-school careers. 5.2 Using the SLID to Study a Universal RAP We next use longitudinal data on student loan debt and post-school earnings from Panel 5 of SLID. These data contain information about earnings, schooling, and the amount borrowed for post-secondary education covering the years 2005-2010. For comparability with our previous 22 To simplify the calculation of payments under RAP, we focus on single borrowers with no children (the majority our sample), since the threshold income level above which RAP payments begin depends on household size. See Appendix D for further details. 23 Even in this case, however, government interest payments made on behalf of many RAP recipients may be substantial. 19