The Negative Impact of Uncertainty on R&D Investment: International Evidence
Abstract
:1. Introduction
2. Literature Review and Hypothesis Development
2.1. Literature Review
Literature | Sample | Period Covered | Measurement of Uncertainty | Estimated Effect |
---|---|---|---|---|
Arif Khan et al. [5] | 2542 listed firms in China | 2000–2017 | (1) firm-specific uncertainty (residuals’ moving standard deviation obtained from the AR(1) model of sales), (2) market-based uncertainty (conditional variance obtained from the GARCH model using daily data on stock market returns), (3) economic policy uncertainty (EPU) index | negative |
Atanassov et al. [3] | 90,637 firm-year observations in the US | 1976–2013 | US gubernatorial elections | positive |
Cho and Lee [11] | 6987 manufacturing firms in South Korea | 2008–2014 | firm-specific uncertainty (variation in a firm’s sales revenues) | negative |
Czarnitzki and Toole [8] | 702 manufacturing firms in Germany | 1998, 2000 | firm-specific product market uncertainty (variance of the share of sales achieved with new products per year in the pre-sample period at the firm level) | negative |
Goel and Ram [12] | 9 OECD countries | 1981–1992 | (1) 5-year moving standard deviation of inflation, (2) 5-year moving average of inflation | negative |
Gu et al. [13] | 10,641 firm-year observations in China | 2007–2015 | EPU index | positive |
Han et al. [14] | 872 listed firms in China | 2009–2017 | EPU index | positive |
Ivus and Wajda [1] | 30 countries | 1982–2012 | (1) stock index daily returns volatility, (2) cross-firm daily return spread, (3) sovereign bond yields daily volatility, (4) exchange rate daily volatility, (5) GDP forecast disagreement | negative |
Jiang and Liu [6] | 1163 listed firms in China | 2008–2016 | EPU index | positive |
Jung and Kwak [15] | 6084 firms in South Korea | 2010–2014 | firm-specific uncertainty (squared value of the residual obtained from the AR(1) model of a firm’s profit margins) | negative |
Meng and Shi [16] | 10,514 firm-year observations in China | 2008–2015 | EPU index | positive |
Nan and Han [17] | 351 listed firms in China | 2009–2016 | firm-specific uncertainty (residuals obtained from the AR(1) model of stock return volatility) | negative |
Ross et al. [9] | 551 business divisions of manufacturing firms in Germany | 1995–2008 | industry-level uncertainty (square root of the conditional variance obtained from the GARCH model using monthly data on industry sales) | positive |
Stein and Stone [18] | 3965 listed firms in the US | 2001–2011 | firm-specific uncertainty (volatility consistent with the market price of an exchange-traded option using an inversion of the Black-Scholes formula) | positive |
Tajaddini and Gholipour [7] | 19 countries | 1996–2015 | EPU index | positive |
Vo and Le [19] | 90,650 firm-year observations in the US | 1985–2013 | firm-specific uncertainty (standard deviation of the residuals from the regression model of a firm’s stock returns on market returns over a year) | positive |
Wang et al. [4] | 1868 listed firms in China | 2002–2012 | (1) policy uncertainty (turnover of local government officials), (2) market uncertainty (moving standard deviation of current sales revenues) | negative |
Xu [20] | 12,408 listed firms in the US | 1985–2007 | EPU index | negative |
2.2. Hypothesis Development
2.2.1. Uncertainty May Reduce R&D Investment
2.2.2. Uncertainty May Increase R &D Investment
3. Model, Variable, Furthermore, Data
3.1. Model
3.2. Variable
3.2.1. Dependent Variable
3.2.2. Core Explanatory Variable of Interest
3.2.3. Control Variable
3.3. Data
4. Results
4.1. R&D Investment
4.1.1. Baseline Result
4.1.2. Robustness Check
4.2. R&D Personnel and Patent Applications
4.2.1. R&D Personnel
4.2.2. Patent Applications
4.3. Heterogeneities across Different Country Groups
4.3.1. R&D Investment
4.3.2. Patent Applications
5. Conclusions and Discussion
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable | Definition | Mean | SD | Min | Max |
---|---|---|---|---|---|
Logarithmic value of R&D investment (in constant 2010 US$) | 25.341 | 2.776 | 17.053 | 31.510 | |
Uncertainty index, obtained from the updated dataset of Ahir et al. [2] | 0.172 | 0.137 | 0 | 1.263 | |
Logarithmic value of population | 16.695 | 1.450 | 14.203 | 21.050 | |
Logarithmic value of GDP per capita (in constant 2010 US$) | 9.146 | 1.380 | 5.420 | 11.425 | |
Annual growth rate of real GDP (%) | 3.609 | 3.639 | −14.814 | 25.163 | |
Unemployment rate (%) | 7.821 | 4.879 | 0.170 | 32.456 | |
Financial development index, obtained from the updated dataset of Svirydzenka [51] | 0.442 | 0.245 | 0.040 | 0.985 | |
Financial openness index, obtained from the updated dataset of Chinn and Ito [52] | 0.676 | 0.348 | 0 | 1 | |
Trade openness, measured by international trade volume as a share of GDP (%) | 86.769 | 59.542 | 18.349 | 442.620 | |
Human capital index, obtained from the Penn World Table (PWT) 9.1 | 2.803 | 0.596 | 1.053 | 3.809 | |
Government size, measured by government spending as a share of GDP (%) | 16.507 | 4.750 | 5.398 | 40.444 | |
Control of corruption index, obtained from the Worldwide Governance Indicators (WGI) database | 0.352 | 1.060 | −1.525 | 2.470 | |
Rule of law index, obtained from the WGI database | 0.376 | 0.984 | −1.916 | 2.100 |
Robustness Check | ||||||
---|---|---|---|---|---|---|
Independent Variable | Baseline Result | Winsorize Top and Bottom 1% Sample | y = Logarithmic Value of R&D Investment per million Population | y = Logarithmic Value of R&D Investment per million US$ GDP | = Dummy Variable for Legislative Election | = Economic Policy Uncertainty (EPU) Index |
(i) | (ii) | (iii) | (iv) | (v) | (vi) | |
−0.156 ** | −0.156 * | −0.157 ** | −0.159 ** | −0.0173 * | −0.100 *** | |
[0.0770] | [0.0817] | [0.0768] | [0.0767] | [0.0092] | [0.0324] | |
1.000 ** | 0.986 ** | - | - | 0.588 | 0.697 | |
[0.4487] | [0.4458] | - | - | [0.6568] | [0.5612] | |
1.160 *** | 1.176 *** | 1.158 *** | - | 0.936 *** | 1.477 *** | |
[0.2052] | [0.2039] | [0.2004] | - | [0.1763] | [0.2220] | |
−0.00299 | −0.000776 | −0.00305 | −0.00251 | −0.00168 | −0.00438 | |
[0.0044] | [0.0037] | [0.0047] | [0.0046] | [0.0036] | [0.0026] | |
0.0127 | 0.0132 * | 0.0128 | 0.0114 | 0.0056 | 0.0126 | |
[0.0080] | [0.0080] | [0.0081] | [0.0075] | [0.0070] | [0.0077] | |
0.209 | 0.233 | 0.211 | 0.275 | 0.221 | 0.358 | |
[0.3661] | [0.3658] | [0.3697] | [0.3781] | [0.3601] | [0.3184] | |
0.0327 | 0.0305 | 0.0311 | 0.0423 | 0.219 * | −0.0176 | |
[0.1337] | [0.1341] | [0.1348] | [0.1326] | [0.1314] | [0.1753] | |
0.00227 * | 0.00230 * | 0.00227 ** | 0.00213 * | 0.00363 *** | 0.00185 ** | |
[0.0012] | [0.0012] | [0.0011] | [0.0011] | [0.0013] | [0.0008] | |
0.513 * | 0.563 * | 0.511 * | 0.520 * | 0.485 | 0.175 | |
[0.2893] | [0.2897] | [0.2834] | [0.2839] | [0.3941] | [0.1562] | |
0.0249 * | 0.0262 * | 0.0248 * | 0.0224 | 0.0332 ** | 0.0144 | |
[0.0141] | [0.0141] | [0.0144] | [0.0148] | [0.0161] | [0.0127] | |
0.258 * | 0.261 * | 0.259 * | 0.277 * | 0.201 | −0.0738 | |
[0.1458] | [0.1453] | [0.1477] | [0.1490] | [0.1664] | [0.1029] | |
−0.161 | −0.166 | −0.161 | −0.143 | −0.0942 | −0.0209 | |
[0.1590] | [0.1585] | [0.1618] | [0.1603] | [0.1817] | [0.1627] | |
Country-fixed effect | Yes | Yes | Yes | Yes | Yes | Yes |
Time-fixed effect | Yes | Yes | Yes | Yes | Yes | Yes |
Observations | 1497 | 1497 | 1497 | 1497 | 1179 | 496 |
Countries | 109 | 109 | 109 | 109 | 76 | 26 |
0.555 | 0.559 | 0.490 | 0.154 | 0.592 | 0.892 |
Dependent Variable: R&D Personnel | Dependent Variable: Patent Applications | |||||
---|---|---|---|---|---|---|
Robustness Check | Robustness Check | |||||
Independent Variable | Baseline Result | y = Logarithmic Value of R&D Personnel per million Population | y = Logarithmic Value of R&D Personnel per million US$ GDP | Baseline Result | y = Logarithmic Value of Patent Applications per million Population | y = Logarithmic Value of Patent Applications per million US$ GDP |
(i) | (ii) | (iii) | (iv) | (v) | (vi) | |
−0.0109 | −0.0377 | −0.0228 | −0.227 ** | −0.225 ** | −0.233 ** | |
[0.0725] | [0.0761] | [0.0775] | [0.0939] | [0.1042] | [0.1024] | |
1.682 *** | - | - | 2.610 *** | - | - | |
[0.3488] | - | - | [0.8119] | - | - | |
0.419 ** | 0.341 * | - | 1.887 *** | 1.866 *** | - | |
[0.1812] | [0.1751] | - | [0.4871] | [0.5169] | - | |
0.00325 | 0.00453 | 0.00298 | 0.000596 | 0.00352 | 0.00658 | |
[0.0044] | [0.0044] | [0.0048] | [0.0059] | [0.0061] | [0.0060] | |
0.0127 * | 0.0124 * | 0.0209 *** | 0.0660 *** | 0.0652 *** | 0.0558 *** | |
[0.0066] | [0.0065] | [0.0070] | [0.0165] | [0.0167] | [0.0153] | |
0.868 ** | 0.828 ** | 0.670 * | 0.859 * | 0.745 | 1.053 | |
[0.3579] | [0.3668] | [0.3838] | [0.4368] | [0.4850] | [0.6707] | |
−0.288 ** | −0.338 ** | −0.415 *** | −0.305 | −0.386 * | −0.316 | |
[0.1298] | [0.1320] | [0.1409] | [0.1958] | [0.2021] | [0.1934] | |
0.00331 ** | 0.00276 | 0.00301 * | 0.00286 * | 0.00151 | 0.00105 | |
[0.0017] | [0.0018] | [0.0018] | [0.0017] | [0.0016] | [0.0017] | |
0.529 * | 0.564 * | 0.378 | −0.466 | −0.339 | −0.225 | |
[0.2800] | [0.2856] | [0.2825] | [0.3426] | [0.3970] | [0.3844] | |
0.0402 *** | 0.0421 *** | 0.0530 *** | 0.00917 | 0.0231 | 0.00841 | |
[0.0110] | [0.0099] | [0.0095] | [0.0211] | [0.0250] | [0.0209] | |
0.0576 | 0.0339 | −0.0323 | −0.054 | −0.0618 | −0.0588 | |
[0.1356] | [0.1460] | [0.1488] | [0.2152] | [0.2215] | [0.2344] | |
−0.219 * | −0.243 * | −0.327 ** | 0.070 | 0.0498 | 0.158 | |
[0.1292] | [0.1299] | [0.1315] | [0.1952] | [0.1942] | [0.2202] | |
- | - | - | 0.249 * | 0.195 | 0.373 * | |
- | - | - | [0.1448] | [0.1484] | [0.1962] | |
- | - | - | 0.187 | 0.328 ** | 0.246 | |
- | - | - | [0.1482] | [0.1353] | [0.1516] | |
Country-fixed effect | Yes | Yes | Yes | Yes | Yes | Yes |
Time-fixed effect | Yes | Yes | Yes | Yes | Yes | Yes |
Observations | 1196 | 1196 | 1196 | 1021 | 1021 | 1021 |
Countries | 101 | 101 | 101 | 83 | 83 | 83 |
0.619 | 0.514 | 0.309 | 0.522 | 0.463 | 0.298 |
Dependent Variable: | Dependent Variable: | |||
---|---|---|---|---|
Classification Criterion | High-Group | Low-Group | High-Group | Low-Group |
(i) | (ii) | (iii) | (iv) | |
(a) Level of income per capita | −0.150 ** | −0.151 | −0.205 * | −0.251 ** |
[0.0612] | [0.1255] | [0.1099] | [0.1239] | |
(b) Ratio of R&D Investment to GDP | −0.116 * | −0.171 | −0.0918 | −0.564 *** |
[0.0608] | [0.1668] | [0.0857] | [0.1954] | |
(c) Degree of uncertainty | −0.153 * | −0.119 | −0.223 ** | −0.362 |
[0.0821] | [0.2250] | [0.0985] | [0.2854] | |
(d) Degree of corruption control | −0.097 | −0.299* | −0.133 | −0.466 *** |
[0.0717] | [0.1666] | [0.0917] | [0.1635] | |
(e) Degree of financial openness | −0.159 * | −0.218 * | −0.381 *** | −0.194 |
[0.0879] | [0.1128] | [0.1315] | [0.1341] |
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Lin, Y.; Dong, D.; Wang, J. The Negative Impact of Uncertainty on R&D Investment: International Evidence. Sustainability 2021, 13, 2746. https://doi.org/10.3390/su13052746
Lin Y, Dong D, Wang J. The Negative Impact of Uncertainty on R&D Investment: International Evidence. Sustainability. 2021; 13(5):2746. https://doi.org/10.3390/su13052746
Chicago/Turabian StyleLin, Yuchen, Daxin Dong, and Jiaxin Wang. 2021. "The Negative Impact of Uncertainty on R&D Investment: International Evidence" Sustainability 13, no. 5: 2746. https://doi.org/10.3390/su13052746
APA StyleLin, Y., Dong, D., & Wang, J. (2021). The Negative Impact of Uncertainty on R&D Investment: International Evidence. Sustainability, 13(5), 2746. https://doi.org/10.3390/su13052746