How Does Aggregate Tax Policy Uncertainty Affect Default Risk?
Abstract
:1. Introduction
2. Related Literature and Hypothesis Development
3. Research Design
3.1. Data and Sample
3.2. Measuring Tax Policy Uncertainty (TPU)
3.3. Variable Construction and Empirical Model
4. Empirical Results
4.1. Impact of Tax Policy Uncertainty on Default Risk: Main Regression Results
4.2. Impact of Tax Policy Uncertainty on Default Risk Conditioned on Overall Economy
4.3. Impact of Tax Policy Uncertainty on Default Risk Conditioned on Stock Market Conditions
4.4. Impact of Tax Policy Uncertainty on Default Risk Conditioned on Financial Constraints
4.5. Impact of Tax Policy Uncertainty on Default Risk Conditioned on Credit Quality and Access to Debt Market
4.6. Instrumental Variable Analysis
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
Appendix A
Variable | Definition |
---|---|
Tax Policy Uncertainty (TPU) | Our TPU definition is similar to Gulen and Ion’s (2016) definition. Specifically, for each firm, the tax policy uncertainty variable (TPU) is measured as the natural logarithm of the arithmetic average of the Baker et al.’s (2016) index for policy uncertainty related to tax code in each year. We obtain tax policy uncertainty data from: http://www.policyuncertainty.com/index.html |
Expected default frequency (EDF) | Expected default frequency, computed as N(-DD), where N(.) is the cumulative normal distribution function and DD is distance-to-default. DD is calculated following Brogaard et al. (2017) and Bharath and Shumway (2008). |
Equity | Market value of equity (in millions of dollars) calculated as the product of the number of shares outstanding and stock price at the end of the year. |
Debt | Face value of debt, in millions of dollars, computed as the sum of debt in current liabilities (Compustat quarterly data #45) and one-half of long-term debt (Compustat quarterly data #51). |
Excess Return | Annual excess return, calculated as the difference between firm stock return and market return (the CRSP value-weighted market return) over the same period. |
Inverse Stdev (1/ | One divided by annualized stock return volatility (). Annualized stock return volatility computed as the standard deviation of stock monthly returns over the prior year. |
Income/Assets | Ratio of net income (Compustat quarterly data #69) to total asset (Compustat quarterly data #44). |
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1 | The Securities and Exchange Commission (SEC) decreased the minimum tick size from a 16th of a dollar to a 100th of a dollar in 2001. |
2 | Debt financing increases firm value because of the tax shield on interest payments (e.g., Graham 2000). |
3 | We winsorize all variables, except EDF, at 1st and 99th percentiles to mitigate the impacts of outliers. |
4 | We downloaded the TPU index data from Nick Bloom’s Web site (www.policyuncertainty.com). |
5 | (Baker et al. 2016) index is used by many influential studies such as (Pástor and Veronesi 2013; Gulen and Ion 2016). |
6 | The economic significance calculation procedure is the same as the overall sample procedure we explained above. |
7 | We winsorize the ingredients of the index at 1% and 99% before constructing it, as in (Baker et al. 2003). |
8 | The original Nominal Three-Step Estimation (NOMINATE) was developed in the 1980s by Keith T. Poole and Howard Rosenthal (Poole and Rosenthal 1985). |
9 | (Poole and Rosenthal 2000) state that the first dimension of the DW-NOMINATE scores be interpreted as the legislators’ position on government intervention in the economy. |
Panel A: Descriptive Statistics for Tax Policy Uncertainty | ||||||
N | Mean | Min | Median | Max | Stdev | |
Ln(TPU) | 33 | 4.2018 | 1.5796 | 4.2992 | 7.3760 | 1.6707 |
Panel B: Descriptive Statistics for Firm-Level Variables | ||||||
N | Mean | Min | Median | Max | Stdev | |
EDF | 84,132 | 0.0462 | 0.0000 | 0.0000 | 1.0000 | 0.1960 |
Debt | 84,132 | 664.12 | 0.0005 | 59.4100 | 11,199.00 | 1797.45 |
Ln(debt) | 84,132 | 3.8435 | −7.6009 | 3.9636 | 9.32358 | 2.6949 |
Equity | 84,132 | 2911.47 | 2.6600 | 320.45 | 53,823.84 | 8176.10 |
Ln(equity) | 84,132 | 5.7486 | 0.9798 | 5.7100 | 10.8934 | 2.1993 |
Excess Ret. | 84,132 | 0.0329 | −1.5075 | 0.0124 | 1.9407 | 0.5219 |
Inverse Stdev | 84,132 | 10.1572 | 1.7367 | 8.7396 | 32.5912 | 5.9122 |
Income/Assets | 84,132 | −0.0081 | −0.5555 | 0.0086 | 0.1103 | 0.0734 |
Panel C: Pearson Correlation Coefficients | ||||||
EDF | Ln(debt) | Ln(equity) | Excess Ret. | Inverse Stdev | Income/Asset | |
Ln(debt) | 0.0785 | |||||
Ln(equity) | −0.1003 | 0.9443 *** | ||||
Excess Ret. | −0.4416 ** | 0.0397 | 0.1155 | |||
Inverse Stdev | −0.4096 ** | 0.3627 ** | 0.4307 ** | −0.2502 | ||
Income/Asset | −0.5756 *** | −0.1835 | −0.1239 | −0.0434 | 0.4877 *** | |
Ln(TPU) | 0.0149 | 0.6919 *** | 0.7093 ** | 0.2178 | 0.0892 | −0.0734 |
Panel A: Overall Sample | Panel B: Within Industry Regressions. | |||||
---|---|---|---|---|---|---|
Variables | EDF | Industry: Description | TPU | R2 | N | Eco. Imp. |
Nondurables: Food, tobacco, textiles, apparel, leather, toys | 0.0063 *** | 0.1782 | 5790 | 22.78% | ||
TPU | 0.0041 *** | (3.78) | ||||
(8.48) | Durables: Cars, TVs, furniture, household appliances | 0.0104 *** | 0.1992 | 2952 | 37.60% | |
ln(equity) | −0.0245 *** | (3.43) | ||||
(−23.68) | Manufacturing: Machinery, trucks, planes, office furniture, paper, commercial printing | 0.0053 *** | 0.1699 | 11,859 | 19.17% | |
ln(debt) | 0.0142 *** | (4.39) | ||||
(22.42) | Energy: Oil, gas, and coal extraction and products | 0.0030 | 0.2547 | 4768 | 0.00% | |
Inc./Asset | −0.1393 *** | (1.39) | ||||
(−8.10) | Chemicals: Chemicals and allied products | 0.0062 ** | 0.1684 | 2985 | 22.42% | |
Exc. Ret. | −0.1137 *** | (2.74) | ||||
(−47.58) | Business equipment: Computers, software, and electronic equipment | 0.0006 | 0.1086 | 15,259 | 0.00% | |
Inv. Stdev | −0.0034 *** | (0.61) | ||||
(−23.45) | Telecommunications: Telephone and television transmission | 0.0051 | 0.2741 | 3139 | 0.00% | |
(1.54) | ||||||
Utilities: Utilities | 0.0030 * | 0.1975 | 4118 | 10.85% | ||
Constant | 0.1524 *** | (1.91) | ||||
(32.67) | Shops: Wholesale, retail, and some services (laundries, repair shops) | 0.0069 *** | 0.2186 | 9993 | 24.95% | |
(4.62) | ||||||
Obs. | 84,132 | Health: Health care, medical equipment, and drugs | 0.0004 | 0.1011 | 9613 | 0.00% |
R-squared | 0.1676 | (0.40) | ||||
Firm FE | YES | Other: Mines, construction, building materials, transportation, hotels, business services, entertainment | 0.0067 *** | 0.2318 | 13,656 | 24.22% |
Clus. SE | YES | (4.96) |
(1) | (2) | (3) | |||
---|---|---|---|---|---|
Variables | EDF | Variables | EDF | Variables | EDF |
TPU | 0.0024 *** | TPU | 0.0028 *** | TPU | 0.0018 *** |
(4.89) | (6.12) | (4.07) | |||
IPG | 0.0671 *** | Recession | 0.0173 *** | CFI | −0.0042 *** |
(9.15) | (19.93) | (−24.46) | |||
Ln(equity) | −0.0286 *** | Ln(equity) | −0.0237 *** | Ln(equity) | −0.0243 *** |
(−23.38) | (−23.28) | (−23.88) | |||
Ln(debt) | 0.0131 *** | Ln(debt) | 0.0140 *** | Ln(debt) | 0.0128 *** |
(20.71) | (22.10) | (20.58) | |||
Income/Assets | −0.1324 *** | Income/Assets | −0.1346 *** | Income/Assets | −0.1332 *** |
(−7.69) | (−7.91) | (−7.83) | |||
Excess Ret. | −0.1121 *** | Excess Ret. | −0.1125 *** | Excess Ret. | −0.1114 *** |
(−46.97) | (−47.75) | (−47.68) | |||
Inverse Stdev | −0.0034 *** | Inverse Stdev | −0.0031 *** | Inverse Stdev | −0.0032 *** |
(−23.62) | (−22.06) | (−22.22) | |||
Constant | 0.1164 ** | Constant | 0.1389 *** | Constant | 0.1616 *** |
(22.56) | (28.89) | (34.39) | |||
Observations | 84,132 | Observations | 84,132 | Observations | 84,132 |
R-squared | 0.1691 | R-squared | 0.1760 | R-squared | 0.1792 |
Firm FE | YES | Firm FE | YES | Firm FE | YES |
Clustered SE | YES | Clustered SE | YES | Clustered SE | YES |
Economic impact | 8.68% | Economic impact | 10.12% | Economic impact | 6.51% |
Market Conditions | Adjusted P/E | Down Market | Up Market |
---|---|---|---|
Models | (1) | (2) | (3) |
Variables | EDF | EDF | EDF |
TPU | 0.0051 *** | 0.0077 *** | 0.0057 *** |
(10.07) | (5.02) | (11.30) | |
Ln(equity) | −0.0258 *** | −0.0206 | −0.0259 *** |
(−23.56) | (−8.89) | (−23.46) | |
Ln(debt) | 0.0140 *** | 0.0147 *** | 0.0133 *** |
(22.13) | (10.23) | (20.02) | |
Income/Assets | −0.1377 *** | −0.1839 *** | −0.1366 *** |
(−8.01) | (−4.56) | (−6.58) | |
Excess return | −0.1131 *** | −0.1197 *** | −0.1107 *** |
(−47.38) | (−27.43) | (−41.49) | |
Inverse Stdev | −0.0033 *** | −0.0039 *** | −0.0029 |
(−22.71) | (−12.99) | (−19.43) | |
Adjusted P/E | 0.0006 *** | ||
(4.71) | |||
Constant | 0.1411 | 0.1221 *** | 0.1372 *** |
(29.09) | (12.81) | (26.34) | |
Observations | 84,132 | 20,604 | 63,528 |
R-squared | 0.1680 | 0.1813 | 0.1677 |
Firm FE | YES | YES | YES |
Clustered SE | YES | YES | YES |
Economic impact | 18.44% | 27.84% | 20.61% |
Subsamples | (Q1) | (Q2) | (Q3) | (Q4) |
---|---|---|---|---|
Least Constrained | Most Constrained | |||
Models | (1) | (2) | (3) | (4) |
Variables | EDF | EDF | EDF | EDF |
TPU | 0.0013 * | 0.0015 *** | 0.0018 ** | 0.0043 *** |
(1.91) | (2.77) | (2.35) | (3.45) | |
Ln(equity) | −0.0038 *** | −0.0068 *** | −0.0243 *** | −0.0623 |
(−2.63) | (−5.08) | (−10.25) | (−21.31) | |
Ln(debt) | 0.0026 *** | 0.0048 *** | 0.0239 *** | 0.0607 *** |
(3.76) | (6.45) | (9.92) | (17.00) | |
Income/Assets | −0.0209 | −0.0119 | −0.1062 *** | −0.1968 *** |
(−0.55) | (−0.56) | (−3.35) | (−5.94) | |
Excess Return | −0.0273 *** | −0.0231 *** | −0.0667 *** | −0.2140 *** |
(−8.09) | (−9.86) | (−18.15) | (−47.38) | |
Inverse Stdev | −0.0011 *** | −0.0008 *** | −0.0015 *** | −0.0061 *** |
(−5.49) | (−5.17) | (−7.59) | (−14.95) | |
Constant | 0.0382 *** | 0.0410 *** | 0.0761 *** | 0.1799 *** |
(5.23) | (6.89) | (11.01) | (13.63) | |
Observations | 14,597 | 19,809 | 24,993 | 24,201 |
R-squared | 0.0333 | 0.0319 | 0.0992 | 0.3265 |
Firm FE | YES | YES | YES | YES |
Clustered SE | YES | YES | YES | YES |
Economic impact | 4.70% | 5.42% | 6.51% | 15.55% |
Subsamples | Investment Grade | Non-Investment Grade | Firms without Bond Rating | Firms with Bond Rating |
---|---|---|---|---|
Models | (1) | (2) | (3) | (4) |
Variables | EDF | EDF | EDF | EDF |
TPU | 0.0014 ** | 0.0038 *** | 0.0037 *** | 0.0039 *** |
(2.27) | (6.60) | (5.90) | (5.15) | |
Ln(equity) | −0.0113 *** | −0.0245 *** | −0.0206 *** | −0.0372 *** |
(−4.56) | (−21.80) | (−17.87) | (−14.47) | |
Ln(debt) | 0.0072 *** | 0.0143 *** | 0.0125 *** | 0.0229 |
(4.37) | (21.32) | (18.43) | (10.55) | |
Income/Assets | −0.2367 *** | −0.1309 *** | −0.1177 *** | −0.2649 *** |
(−2.86) | (−7.49) | (−6.57) | (−4.79) | |
Excess Return | −0.0754 *** | −0.1169 *** | −0.0998 *** | −0.1647 *** |
(−9.84) | (−46.81) | (−39.83) | (−29.30) | |
Inverse Stdev | −0.0011 *** | −0.0044 *** | −0.0035 *** | −0.0025 *** |
(−6.47) | (−23.85) | (−18.87) | (−11.86) | |
Constant | 0.0754 *** | 0.1606 | 0.1329 *** | 0.2014 *** |
(6.04) | (31.77) | (26.70) | (15.93) | |
Observations | 14,211 | 69,921 | 58,693 | 25,439 |
R-squared | 0.0598 | 0.1767 | 0.1517 | 0.2219 |
Firm FE | YES | YES | YES | YES |
Clustered SE | YES | YES | YES | YES |
Economic impact | 5.06% | 13.74% | 13.38% | 14.10% |
First Stage | Second Stage | ||
---|---|---|---|
Variables | TPU | Variables | EDF |
IV(Polarization) | 6.6334 *** | Fitted TPU | 0.0792 *** |
(57.69) | (10.41) | ||
Ln(equity) | 0.1367 *** | Ln(equity) | −0.0296 *** |
(11.90) | (−21.10) | ||
Ln(debt) | 0.0397 *** | Ln(debt) | 0.0113 *** |
(4.98) | (16.59) | ||
Income/Assets | −0.2819 *** | Income/Assets | −0.1421 *** |
(−2.97) | (−7.32) | ||
Excess Return | 0.0405 *** | Excess Return | −0.1071 *** |
(4.00) | (−41.85) | ||
Inverse Stdev | −0.0224 *** | Inverse Stdev | −0.0031 *** |
(−15.42) | (−21.14) | ||
Constant | −1.5909 *** | Constant | 0.0975 *** |
(−25.54) | (15.51) | ||
Observations | 81,892 | Observations | 72,178 |
R-squared | 0.1768 | R-squared | 0.1641 |
Firm FE | YES | Firm FE | YES |
Clustered SE | YES | Clustered SE | YES |
p-value of F-test for IV validity | 0.0000 |
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Tosun, M.S.; Yildiz, S. How Does Aggregate Tax Policy Uncertainty Affect Default Risk? J. Risk Financial Manag. 2020, 13, 319. https://doi.org/10.3390/jrfm13120319
Tosun MS, Yildiz S. How Does Aggregate Tax Policy Uncertainty Affect Default Risk? Journal of Risk and Financial Management. 2020; 13(12):319. https://doi.org/10.3390/jrfm13120319
Chicago/Turabian StyleTosun, Mehmet Serkan, and Serhat Yildiz. 2020. "How Does Aggregate Tax Policy Uncertainty Affect Default Risk?" Journal of Risk and Financial Management 13, no. 12: 319. https://doi.org/10.3390/jrfm13120319
APA StyleTosun, M. S., & Yildiz, S. (2020). How Does Aggregate Tax Policy Uncertainty Affect Default Risk? Journal of Risk and Financial Management, 13(12), 319. https://doi.org/10.3390/jrfm13120319