Acemoglu, D., Autor, D., Hazell, J., and Restrepo, P. (2022). “Artificial intelligence and jobs: Evidence from online vacancies.” Journal of Labor Economics, 40, S293–S340.
Ai, C., and Norton, E. C. (2003). “Interaction terms in logit and probit models.” Economics Letters, 80(1), 123–129.
Bauer, J., Franke, N., and Tuertscher, P. (2016). “Intellectual Property Norms in Online Communities: How User-Organized Intellectual Property Regulation Supports Innovation.” Information Systems Research, 27(4), 724–750.
Beraja, M., Yang, D. Y., and Yuchtman, N. (2023). “Data-intensive innovation and the state: Evidence from ai firms in china.” The Review of Economic Studies, 90(4), 1701–1723.
- Birhane, A., and Prabhu, V. U. (2021). “Large image datasets: A pyrrhic win for computer vision?” In 2021 IEEE Winter Conference on Applications of Computer Vision (WACV), 1536–1546, IEEE.
Paper not yet in RePEc: Add citation now
Blackburn, M. L. (2015). “The relative performance of poisson and negative binomial regression estimators. ” Oxford Bulletin of Economics and Statistics, 77(4), 605–616.
- Brynjolfsson, E., Li, D., and Raymond, L. R. (2023). “Generative AI at Work.” NBER Working Paper, (31161).
Paper not yet in RePEc: Add citation now
- Burtch, G., Lee, D., and Chen, Z. (2024). “Generative ai degrades online communities.” Communications of the ACM, 67(3), 40–42.
Paper not yet in RePEc: Add citation now
- del Rio-Chanona, M., Laurentsyeva, N., and Wachs, J. (2023). “Are large language models a threat to digital public goods? evidence from activity on stack overflow.” Working Paper.
Paper not yet in RePEc: Add citation now
- Doshi, A. R., and Hauser, O. (2023). “Generative ai enhances individual creativity but reduces the collective diversity of novel content.” Working Paper.
Paper not yet in RePEc: Add citation now
Eloundou, T., Manning, S., Mishkin, P., and Rock, D. (2023). “Gpts are gpts: An early look at the labor market impact potential of large language models.” arXiv preprint arXiv:2303.10130.
- Eshraghian, J. K. (2020). “Human ownership of artificial creativity.” Nature Machine Intelligence, 2(3), 157–160.
Paper not yet in RePEc: Add citation now
- Farboodi, M., Mihet, R., Philippon, T., and Veldkamp, L. (2019). “Big data and firm dynamics.” In AEA Papers and Proceedings, vol. 109, 38–42, JSTOR.
Paper not yet in RePEc: Add citation now
Felten, E. W., Raj, M., and Seamans, R. (2023). “How will language modelers like chatgpt affect occupations and industries?” SSRN Working Paper.
- Gallea, Q. (2023). “From mundane to meaningful: Ai’s influence on work dynamics–evidence from chatgpt and stack overflow.” arXiv preprint arXiv:2308.11302.
Paper not yet in RePEc: Add citation now
Gans, J. (2024). “Copyright policy options for generative artificial intelligence.” NBER Working paper, (32106).
Godinho de Matos, M., and Adjerid, I. (2022). “Consumer Consent and Firm Targeting After GDPR: The Case of a Large Telecom Provider.” Management Science, 68(5), 3330–3378.
Guilbeault, D., Delecourt, S., Hull, T., Desikan, B. S., Chu, M., and Nadler, E. (2024). “Online images amplify gender bias.” Nature, 1–7.
- Hadsell, R., Rao, D., Rusu, A. A., and Pascanu, R. (2020). “Embracing change: Continual learning in deep neural networks.” Trends in cognitive sciences, 24(12), 1028–1040.
Paper not yet in RePEc: Add citation now
- He, H., Chen, S., Li, K., and Xu, X. (2011). “Incremental learning from stream data.” IEEE Transactions on Neural Networks, 22(12), 1901–1914.
Paper not yet in RePEc: Add citation now
- Henderson, P., Li, X., Jurafsky, D., Hashimoto, T., Lemley, M. A., and Liang, P. (2023). “Foundation models and fair use.” arXiv preprint arXiv:2303.15715.
Paper not yet in RePEc: Add citation now
- Ho, A., Besiroglu, T., Erdil, E., Owen, D., Rahman, R., Guo, Z. C., Atkinson, D., Thompson, N., and Sevilla, J. (2024). “Algorithmic progress in language models.” (2403.05812).
Paper not yet in RePEc: Add citation now
- Huang, H., Fu, R., and Ghose, A. (2023). “Generative AI and Content-Creator Economy: Evidence from Online Content Creation Platforms.” SSRN Working Paper.
Paper not yet in RePEc: Add citation now
Johnson, G. (2022). “Economic research on privacy regulation: Lessons from the gdpr and beyond.” Jones, C. I., and Tonetti, C. (2020). “Nonrivalry and the economics of data.” American Economic Review, 110, 2819–58.
- Lei, X., Chen, Y., and Sen, A. (2023). “The value of external data for digital platforms: Evidence from a field experiment on search suggestions.” Available at SSRN.
Paper not yet in RePEc: Add citation now
- Levendowski, A. (2018). “How copyright law can fix artificial intelligence’s implicit bias problem.” Wash. L. Rev., 93, 579.
Paper not yet in RePEc: Add citation now
- Lin, S. (2024). “From creation to caution: The effect of ai on online art market.” Working Paper.
Paper not yet in RePEc: Add citation now
- Martens, B., Parker, G., Petropoulos, G., and Van Alstyne, M. W. (2024). “Towards efficient information sharing in network markets.” In Proceedings of the 57th Hawaii International Conference on System Sciences.
Paper not yet in RePEc: Add citation now
- McElheran, K., Li, J. F., Brynjolfsson, E., Kroff, Z., Dinlersoz, E., Foster, L., and Zolas, N. (2024). “AI adoption in America: Who, what, and where.” Journal of Economics & Management Strategy, 108(11), 3451–3491.
Paper not yet in RePEc: Add citation now
- Metz, C., Kang, C., Frenkel, S., Thompson, S. A., and Grant, N. (2024). “How tech giants cut corners to harvest data for a.i.” The New York Times, updated April 8, 2024. Reporting from San Francisco, Washington, and New York.
Paper not yet in RePEc: Add citation now
Neumann, N., Tucker, C. E., and Whitfield, T. (2019). “How effective is third-party consumer profiling ? evidence from field studies.” Marketing Science, 38(6), 918–926.
- Peukert, C., and Windisch, M. (2024). “The economics of copyright in the digital age.” Journal of Economic Surveys, forthcoming.
Paper not yet in RePEc: Add citation now
- Peukert, C., Sen, A., and Claussen, J. (2023). “The editor and the algorithm: Recommendation technology in online news.” Management Science, forthcoming.
Paper not yet in RePEc: Add citation now
Prüfer, J., and Schottmüller, C. (2021). “Competing with big data.” The Journal of Industrial Economics, 69(4), 967–1008.
Puhani, P. A. (2012). “The treatment effect, the cross difference, and the interaction term in nonlinear “difference-in-differences” models.” Economics Letters, 115(1), 85–87.
- Quinn, M., and Gutt, D. (2023). “Does generative ai erode its own training data? empirical evidence of the effects on data quantity and characteristics from a q&a platform.” SSRN Working Paper.
Paper not yet in RePEc: Add citation now
Roth, J., and Sant’Anna, P. H. C. (2023). “When is parallel trends sensitive to functional form?” Econometrica, 91(2), 737–747.
- Samuelson, P. (2023). “Generative ai meets copyright.” Science, 381(6654), 158–161.
Paper not yet in RePEc: Add citation now
- Sokol, D. D., and Van Alstyne, M. (2021). “The rising risk of platform regulation.” MIT Sloan Management Review, 62(2), 6A–10A.
Paper not yet in RePEc: Add citation now
- Sun, T., Yuan, Z., Li, C., Zhang, K., and Xu, J. (2023). “The value of personal data in internet commerce: A high-stake field experiment on data regulation policy.” Management Science, forthcoming.
Paper not yet in RePEc: Add citation now
- Valavi, E., Hestness, J., Ardalani, N., and Iansiti, M. (2022). “Time and the value of data.” arXiv preprint arXiv:2203.09118.
Paper not yet in RePEc: Add citation now
Wang, J. T., Deng, Z., Chiba-Okabe, H., Barak, B., and Su, W. J. (2024). “An economic solution to copyright challenges of generative ai.” arXiv:2404.13964 [cs.LG].
- Whang, S. E., Roh, Y., Song, H., and Lee, J.-G. (2023). “Data collection and quality challenges in deep learning: A data-centric ai perspective.” The VLDB Journal, 32(4), 791–813.
Paper not yet in RePEc: Add citation now
Wooldridge, J. M. (2023). “Simple approaches to nonlinear difference-in-differences with panel data.” The Econometrics Journal, 26(3), C31–C66.
Wu, L., Hitt, L., and Lou, B. (2020). “Data analytics, innovation, and firm productivity.” Management Science, 66(5), 2017–2039.
- Yang, S. A., and Zhang, A. H. (2024). “Generative ai and copyright: A dynamic perspective.” arXiv preprint arXiv:2402.17801.
Paper not yet in RePEc: Add citation now