Risk Capital and Emerging Technologies: Innovation and Investment Patterns Based on Artificial Intelligence Patent Data Analysis
Abstract
:1. Introduction
2. Theory Development and Hypotheses
2.1. Search
2.2. Risk Capital and the Emergence of AI
2.3. Peculiarities of Patenting AI Software
2.4. Characteristics of AI Patents That Are Selected by VCs
2.5. Knowledge Coupling across Technological Boundaries
3. Sample and Technology Innovation Characteristics
Technology Innovation Characteristics
4. Globalization, Spillovers, and a Changing Game
5. Methods
5.1. Dependent Variable
5.2. Independent Variables
5.2.1. Technology Classes
5.2.2. Coupling
- Ei is the ease of recombination of technology class i;
- Ej is the ease of recombination of patent j;
- Cx is the coupling of firm x.
5.2.3. Control Variables
5.2.4. Estimation Approach
6. Findings
7. Discussion
7.1. Contributions
7.2. Practical Implications
7.3. Limitations and Future Research
8. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
A61B5/7264 | G01N2201/1296 | G06F17/289 | G06N5/027 | H01J2237/30427 |
A61B5/7267 | G01N29/4481 | G06F17/30029 | G06N5/04 | H01M8/04992 |
A63F13/67 | G01N33/0034 | G06F17/30247 | G06N5/043 | H02H1/0092 |
B23K31/006 | G01R31/2846 | G06F17/30522 | G06N5/048 | H02P21/0014 |
B25J9/161 | G01R31/2848 | G06F17/3053 | G06N7/005 | H02P23/0018 |
B29C2945/76979 | G01R31/3651 | G06F17/30654 | G06N7/02 | H03H2017/0208 |
B29C66/965 | G01S7/417 | G06F17/30663 | G06N7/046 | H03H2222/04 |
B60G2600/1876 | G05B13/027 | G06F17/30702 | G06N7/06 | H042012/5686 |
B60G2600/1878 | G05B13/0275 | G06F17/30705 | G06T2207/20081 | H042025/03464 |
B60G2600/1879 | G05B13/028 | G06F17/30713 | G06T2207/20084 | H04L2025/03554 |
B60W30/06 | G05B13/0285 | G06F17/30743 | G06T2207/30236 | H04L25/0254 |
B60W30/10 | G05B13/029 | G06F2207/4824 | G06T2207/30248 | H04L25/03165 |
B60W30/12 | G05B13/0295 | G06K7/1482 | G06T2207/30268 | H04L41/16 |
B60W30/14 | G05B2219/33002 | G06K9 | G06T3/4046 | H04L45/08 |
B60W30/17 | G05D1/00 | G06N/20 | G06T9/002 | H04N21/4662 |
B62D15/0285 | G05D1/0088 | G06N20/00 | G08B29/186 | H04N21/4666 |
B64G2001/247 | G06F11/1476 | G06N3 | G10H2250/151 | H04Q2213/054 |
E21B2041/0028 | G06F11/2257 | G06N3/004 | G10H2250/311 | H04Q2213/13343 |
F02D41/1405 | G06F11/2263 | G06N3/008 | G10K2210/3024 | H04Q2213/343 |
F03D7/046 | G06F15/18 | G06N3/02 | G10K2210/3038 | H04R25/507 |
F05B2270/707 | G06F17/16 | G06N3/0427 | G10L15/00 | Y10S128/924 |
F05B2270/709 | G06F17/2282 | G06N3/0436 | G10L15/16 | Y10S128/925 |
F05D2270/709 | G06F17/27 | G06N3/0454 | G10L17/00 | Y10S706 |
F16H2061/0081 | G06F17/2795 | G06N3/088 | G10L25/30 | |
F16H2061/0084 | G06F17/28 | G06N5/003 | G11B20/10518 |
Appendix B
- Consider A9.com Inc. patent US9928466 that was granted in 2018. Patent US9928466 is associated with two technological domains as indicated by CPC classes G06F16 and G06N7. Each CPC class represents a knowledge component. Prior to the firm’s use of class G06F16, within the whole set of AI-related patents, it had been recombined 3718 times with 188 other components. This results in an observed ease of recombination score of 188/3718 = 0.051 (see Equation (A1) below). Similarly, CPC class G06N7 had been recombined 1769 times with 176 other components. This results in an observed ease of recombination score of 176/1769 = 0.099 (see Equation (A2) below).
- Using the values calculated above, we can then determine the patent’s observed ease of recombination. This is calculated as the sum of the individual class recombination scores divided by the number of classes assigned to the patent. This results in a patent ease of recombination score of (0.051 + 0.099)/2 = 0.075 (see Equation (A3) below).
- Finally, we compute the firm-level measure of coupling. For example, A9.com Inc. had 9 patents granted up to 2018 and the sum of observed ease of recombination of these patents was 1.439 (following the same procedure as outlined above). Thus, the coupling of A9.com Inc. in 2018 was 9/1.439 = 6.254 (see Equation (A4) below).
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(a) | ||||||||||
Variable | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 |
1. Early Round Investment | 1.000 | |||||||||
2. Technology Classes | −0.017 * | 1.000 | ||||||||
3. Coupling | −0.003 | −0.140 * | 1.000 | |||||||
4. GDP per Capita (ln) | 0.057 * | 0.155 * | 0.006 | 1.000 | ||||||
5. Foreign Investor Ratio | 0.030 * | −0.003 | −0.005 | −0.081 * | 1.000 | |||||
6. U.S. Company | 0.129 * | 0.015 * | 0.016 * | 0.390 * | −0.149 * | 1.000 | ||||
7. Angel | 0.055 * | −0.003* | 0.006 | 0.032 * | 0.191 * | 0.035 * | 1.000 | |||
8. VC | 0.232 * | 0.034 * | 0.006 | 0.139 * | 0.217 * | 0.205 * | 0.127 * | 1.000 | ||
9. CVC | 0.273 * | 0.002 | −0.003 | 0.007 | 0.213 * | 0.012 * | 0.032 * | 0.154 * | 1.000 | |
10. GVC | 0.014 * | 0.033 * | −0.004 | 0.018 * | 0.173 * | 0.002 | 0.080 * | 0.026 * | −0.011 | 1.000 |
Mean | 0.050 | 3.332 | 7.194 | 10.593 | 0.055 | 0.686 | 0.013 | 0.446 | 0.046 | 0.006 |
S.D. | 0.217 | 2.465 | 11.258 | 0.417 | 0.289 | 0.464 | 0.130 | 1.039 | 0.242 | 0.079 |
(b) | ||||||||||
Variable | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | |
1. Early Round Investment | 1.000 | |||||||||
2. Coupling | 0.015 | 1.000 | ||||||||
3. GDP per Capita (ln) | 0.042 * | −0.017 | 1.000 | |||||||
4. Foreign Investor Ratio | 0.076 * | 0.022 | −0.031 * | 1.000 | ||||||
5. U.S. Company | 0.114 * | 0.010 | 0.335 * | −0.134 * | 1.000 | |||||
6. Angel | 0.091 * | 0.027 * | 0.048 * | 0.185 * | 0.055 * | 1.000 | ||||
7. VC | 0.310 * | 0.021 | 0.094 * | 0.268 * | 0.152 * | 0.184 * | 1.000 | |||
8. CVC | 0.141 * | 0.009 | 0.013 | 0.187 * | 0.031 * | 0.060 * | 0.189 * | 1.000 | ||
9. GVC | 0.032 * | 0.014 | 0.031 * | 0.175 * | 0.003 | 0.058 * | 0.041 * | −0.009 | 1.000 | |
Mean | 0.048 | 4.779 | 10.515 | 0.073 | 0.658 | 0.023 | 0.390 | 0.038 | 0.009 | |
S.D. | 0.214 | 7.507 | 0.480 | 0.350 | 0.474 | 0.175 | 1.047 | 0.220 | 0.100 |
Variable | Model 1 Patent-Level | Model 2 Patent-Level | Model 3 Patent-Level | Model 4 Firm-Level | Model 5 Firm-Level |
---|---|---|---|---|---|
Technology Classes | −0.072 | ||||
(0.069) | |||||
Coupling | 0.010 * | 0.020 ** | |||
(0.005) | (0.009) | ||||
Controls | |||||
GDP per Capita (ln) | −1.105 *** | −1.042 *** | −1.125 *** | −0.185 | −0.086 |
(0.290) | (0.297) | (0.289) | (0.198) | (0.372) | |
Foreign Investor Ratio | 0.977 *** | 0.974 *** | 0.978 *** | 0.549 *** | 0.626 *** |
(0.257) | (0.257) | (0.258) | (0.124) | (0.211) | |
U.S. Company | 1.817 *** | 1.793 *** | 1.831 *** | 1.107 *** | 1.383 *** |
(0.579) | (0.573) | (0.581) | (0.241) | (0.438) | |
Angel | 1.575 *** | 1.543 *** | 1.538 *** | 0.882 *** | 1.309 *** |
(0.390) | (0.390) | (0.388) | (0.203) | (0.304) | |
VC | 0.760 *** | 0.766 *** | 0.761 *** | 0.469 *** | 0.332 *** |
(0.097) | (0.098) | (0.097) | (0.041) | (0.058) | |
CVC | 0.161 | 0.219 | 0.166 | 1.021 *** | 1.347 *** |
(0.405) | (0.417) | (0.407) | (0.167) | (0.230) | |
GVC | 2.356 *** | 2.366 *** | 2.333 *** | 0.603 | −0.376 |
(0.466) | (0.462) | (0.466) | (0.399) | (0.917) | |
Intercept | 4.686 * | 4.311 | 4.835 * | −2.551 | −3.829 |
(2.797) | (2.860) | (2.783) | (2.044) | (3.878) | |
N | 6042 | 6042 | 6013 | 5436 | 2284 |
χ2 | 170.25 *** | 170.77 *** | 170.95 *** | 310.47 *** | 134.09 *** |
Mean VIF | 1.180 | 1.170 | 1.120 | 1.140 | 1.120 |
Condition Number | 1.935 | 1.938 | 1.648 | 1.818 | 1.792 |
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Santos, R.S.; Qin, L. Risk Capital and Emerging Technologies: Innovation and Investment Patterns Based on Artificial Intelligence Patent Data Analysis. J. Risk Financial Manag. 2019, 12, 189. https://doi.org/10.3390/jrfm12040189
Santos RS, Qin L. Risk Capital and Emerging Technologies: Innovation and Investment Patterns Based on Artificial Intelligence Patent Data Analysis. Journal of Risk and Financial Management. 2019; 12(4):189. https://doi.org/10.3390/jrfm12040189
Chicago/Turabian StyleSantos, Roberto S., and Lingling Qin. 2019. "Risk Capital and Emerging Technologies: Innovation and Investment Patterns Based on Artificial Intelligence Patent Data Analysis" Journal of Risk and Financial Management 12, no. 4: 189. https://doi.org/10.3390/jrfm12040189
APA StyleSantos, R. S., & Qin, L. (2019). Risk Capital and Emerging Technologies: Innovation and Investment Patterns Based on Artificial Intelligence Patent Data Analysis. Journal of Risk and Financial Management, 12(4), 189. https://doi.org/10.3390/jrfm12040189