Sources

Data Science in Banking and Finance: The Case for AI

  1. A. Hamilton. "Rise of the machines: Artificial intelligence & machine learning in financial services." Fintech Futures, 2020
  2. S. Greenman. "The risks of AI outsourcing — how to successfully work with AI startups." Towards Data Science, 2019
  3. C. Jung et al. "Machine learning in UK financial services." Bank of England, 2019
  4. Staff of the U.S. Securities and Exchange Commission. "Staff Report on Algorithmic Trading in U.S. Capital Markets." U.S. Securities and Exchange Commission, 2020
  5. J. Treanor. "The 2010 'flash crash': how it unfolded." The Guardian, 2015
  6. Staffs of the U.S. Commodity Futures Trading Commission and the U.S. Securities and Exchange Commission. "Findings Regarding the Market Events of May 6, 2010." U.S. Securities and Exchange Commission, 2010
  7. S. Wagner and S. Hagan. "Finance Needs People Who Work Well With Robots." Bloomberg, 2019
  8. S. Shendre. "Model Drift in Machine Learning." Towards Data Science, 2020
  9. W. D. Heaven. "Our weird behavior during the pandemic is messing with AI models." MIT Technology Review, 2020
  10. BBC News. "'Video games made me a better surgeon'" BBC, 2018
  11. R. Balasubramanian. "Rewriting the rules: Digital and AI-powered underwriting in life insurance." McKinsey, 2020
  12. 12. PwC. AI for insurers in 2021: Benefits, challenges and the path forward, 2021
  13. K. Sato. "Using machine learning for insurance pricing optimization." Google Cloud, 2017
  14. AXA. "Predictive Underwriting in Commercial Lines." AXA, 2020