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Feeling comfortable with a mortgage: The impact of framing, financial literacy and advice

Published online by Cambridge University Press:  28 April 2023

Susan Thorp*
Affiliation:
The University of Sydney Business School, Sydney, NSW, Australia
Junhao Liu
Affiliation:
The University of Sydney Business School, Sydney, NSW, Australia
Julie Agnew
Affiliation:
The College of William and Mary, Williamsburg, VA, USA
Hazel Bateman
Affiliation:
UNSW Sydney and CEPAR, Sydney, NSW, Australia
Christine Eckert
Affiliation:
University of Technology Sydney, Sydney, NSW, Australia
Fedor Iskhakov
Affiliation:
The Australian National University, Canberra, ACT, Australia
*
*Corresponding author. Email: susan.thorp@sydney.edu.au
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Abstract

The family home is the most important asset on household balance sheets, aside from human capital. Choosing a suitable mortgage is therefore critical to financial well-being but households often make costly mistakes. We collect data in an online survey to test borrowers’ comfort with, and understanding of, mortgage debt. We analyze the impact of financial literacy, mortgage broker advice and whether the loan is framed as a lump sum debt or an equivalent stream of repayments. We conjecture that participants’ comfort with loans and their ability to match lump sum debt to equivalent repayment streams will help them to choose a suitable mortgage. Results show that participants with high financial literacy are less comfortable with mortgage debt in general and also less sensitive to framing than those with low financial literacy. Literate participants are better able to match repayment streams with the equivalent lump sums. Endogeneity-controlled regression analysis shows that consulting brokers leads to higher comfort with debt and lower sensitivity to framing. Survey responses also indicate more uncertainty about future house prices among borrowers who intend to consult brokers than among those who do not.

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Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2023. Published by Cambridge University Press
Figure 0

Table 1. Lump sum loan and monthly repayment values. This table shows the 10 lump sum debt sizes and equivalent monthly repayment amounts used in tasks 1 and 2. Values were approximately calibrated around average new loan sizes for owner occupied dwellings in Australia in 2020 with each set increasing the loan amount at a constant log linear rate of approximately 35%. Monthly principal and interest payments repayments are calculated for a 25 year loan term at an interest rate of 2.9% p.a. and shown in Australian dollars (AUD)

Figure 1

Figure 1. Tasks 1 and 2 screenshots. Panel (a) shows the lump sum condition for task 1 that collects participants’ perceived comfort with a mortgage debt. The monthly repayment condition substituted the words “monthly debt repayments” for “total mortgage debt” and “total debt”. The monthly repayment condition reported the monthly repayments numbers where lump sum debts appear. Panel (b) shows the lump sum condition for task 2 that collects the repayment amount that gave participants an equivalent level of comfort as a mortgage debt framed as a lump sum. Online Appendix A shows screen shots of the survey including the monthly repayment condition where participants gave the lump sum amount they felt provided an equivalent level of comfort as the repayment amount provided. Debt (repayment levels) ranged from $200K to $2979K ($950 to $14,000). Participants were randomly assigned to i) task 1 or task 2; ii) seeing either the lump sum or repayment framing condition first followed by the alternative; and iii) increasing or decreasing sequences of loan amounts. Each participant made 10 (loan amounts) × 2 (frame) ratings.

Figure 2

Table 2. Survey sample descriptive statistics. This table presents descriptive statistics for 999 survey participants, October 2020, n = 999. Population statistics are from the 2021 Australian census

Figure 3

Table 3. Summary statistics: Subjective comfort with mortgage debt. This table shows mean values of ratings from 1 = “Very uncomfortable” to 7 = “Very comfortable” on debt/repayment levels by participant subgroup in the main survey, task 1 (n = 500). Since each participant gave a rating for 10 lump sum debt and monthly repayment levels in two sets, the total number of observations is 20 × 500 = 10,000. Table 4 describes the variables. *p < 0.10, **p < 0.05, ***p < 0.01

Figure 4

Table 4. Variable descriptions. This table reports definitions of variables used in estimation. Variables are computed from responses to an online survey of a sample of Australian adults who are past, current or intended future mortgage holders conducted in October 2020 (n = 999).

Figure 5

Figure 2. Subjective comfort with varying mortgage debts depending on whether they are expressed as a lump sum or equivalent monthly loan repayment. This graph shows the mean comfort level (seven point scale from “Very uncomfortable” to “Very comfortable”) on the vertical axis against monthly repayments (red line) on the horizontal axis and the equivalent lump sums (green line) for Survey 1, task 1. Repayment and debt levels ranged from $950 ($200K) to $14,000 ($2979K). Error bars show one standard deviation around the means.

Figure 6

Table 5. Regression results: Subjective comfort with mortgage debt. This table reports OLS and IV-GMM regressions of participants’ comfort ratings from 1="Very uncomfortable” to 7="Very comfortable” from task 1 on experiment indicators and participant characteristics. Variable definitions are shown in Table 4. Each participant (n = 500) rated their comfort with 10 lump sum debt and monthly repayment levels, making a total number of observations of 20 × 500 = 10,000. Columns 1 and 2 report OLS regression results for all participants who completed task 1. Column 3 reports second stage regression results from IV-GMM estimations where “Used broker” is instrumented by 1) the number of registered financial advisers in the postcode of the participant as supplied by the regulator ASIC, and 2) the number of respondents to a separate survey who reside in the same postcode as the participant and who report having previously consulted a mortgage broker (see Online Appendix D). Online Appendix B reports first stage estimates and test statistics. Column 4 reports OLS estimates for comfort ratings for the subset of task 1 participants who stated that they intended to consult a mortgage broker in the future (n = 218). This group comprises 171 participants who have consulted a broker previously (“Have and will use broker”) and 47 participants who have not consulted a broker previously (“Have not and will use broker”). Robust standard errors in parentheses. *p < 0.10, **p < 0.05, ***p < 0.01

Figure 7

Table 6. Summary statistics: Absolute deviation. This table shows mean values of absolute deviations by participant subgroup in task 2. The absolute deviation is the absolute value of $deviatio{n_{i,l}} = chose{n_{i,l}}/correc{t_l} - 1$ where $chose{n_{i,l}}$ is the value of debt (repayment) selected by participant i for debt or repayment amount $l = 1, \ldots 10$ from Table 1. For 10 lump sum debt levels (monthly repayments), each participant chose a monthly repayment (lump sum debt) with which they felt equally comfortable, making a total number of observations of 20 × 499 = 9980. Table 4 describes the variables. *p < 0.10, **p < 0.05, ***p < 0.01

Figure 8

Figure 3. Subjective equal-comfort lump sum debt or monthly repayment at varying mortgage debts. These graphs show means of responses to task 2. Panel (a) shows the log of mean equivalent repayments that participants selected as being equally comfortable as varying lump sum mortgage debts. The thin line shows the objective equivalent values. Panel (b) shows the log of mean equivalent lump sums that participants selected as being equally comfortable as varying monthly mortgage repayments. The thin line shows the objective equivalent values. Repayment and debt levels ranged from $950 ($200K) to $14,000 ($2979K).

Figure 9

Table 7. Regressions results: Absolute deviations between comfort-equivalent debt or repayments. This table reports OLS and IV-GMM regressions using the data from the main survey, task 2. The dependent variable is the absolute value of proportional deviations of participants’ selections of equal-comfort debt or repayment amounts from objective equivalence on debt/repayment levels. Explanatory variables are experiment indicators and participant characteristics. Variable definitions are shown in Table 4. For 10 lump sum debt levels (monthly repayments), each participant chose a monthly repayment (lump sum debt) with which they felt equally comfortable, making a total number of observations of 20 × 499 = 9980. Columns 1 and 2 report OLS regression results for all participants who completed task 2. Column 3 reports second stage regression results from IV-GMM estimations where “Used broker” is instrumented by 1) the number of registered financial advisers in the postcode of the participant as supplied by the regulator ASIC, and 2) the number of respondents to a separate survey who reside in the same postcode as the participant and who report having previously consulted a mortgage broker (see Online Appendix D). Online Appendix B reports first stage estimates and test statistics. Column 4 reports OLS estimates for absolute deviations for the subset of task 2 participants who stated that they intended to consult a mortgage broker in the future (n = 232). This group comprises 171 participants who have consulted a broker previously (“Have and will use broker"=1) and 61 participants who have not consulted a broker previously (“Have not and will use broker”). Robust standard errors in parentheses. *p < 0.10, **p < 0.05, ***p < 0.01

Figure 10

Table 8. Marginal effects: Logit estimation of broker use. This table reports analysis of mortgage broker use. The model in column 1 is estimated on the full survey sample (n = 999). It shows marginal effects from a logit regression of the indicator for previously consulting a mortgage broker on participant characteristics. Column 2 reports p-values for the tests that the differences in predictive margins reported in column 1 are insignificantly different from zero using delta-method standard errors. The model in column 3 is estimated on the sub-sample of participants who have not previously consulted a mortgage broker (n = 446). It shows marginal effects from a logit regression of an indicator that the participant says that they intend to consult a mortgage broker in the future on participant characteristics. Column 4 reports p-values for the tests that the differences in predictive margins reported in column 3 are zero using delta-method standard errors. Online Appendix C reports the underlying logit estimation results. Variable definitions are shown in Table 4. *p < 0.10, **p < 0.05, ***p < 0.01.

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