@article {Du1, author = {Jiayi (Nicole) Du and Muyang Jin and Petter N. Kolm and Gordon Ritter and Yixuan Wang and Bofei Zhang}, title = {Practical Applications of Deep Reinforcement Learning for Option Replication and Hedging}, volume = {9}, number = {1}, pages = {1--8}, year = {2021}, doi = {10.3905/pa.9.1.436}, publisher = {Institutional Investor Journals Umbrella}, abstract = {If a computer model using machine learning and artificial intelligence like Google{\textquoteright}s DeepMind can beat the world{\textquoteright}s best human player of the ancient Chinese game of {\textquotedblleft}Go,{\textquotedblright} can a similar approach help solve the challenge of hedging and replicating option portfolios? Deep Reinforcement Learning for Option Replication and Hedging, from the Fall 2020 issue of The Journal of Financial Data Science, takes a {\textquotedblleft}deep{\textquotedblright} dive into reinforcement learning approaches for option portfolios. It explores ways of training a computer {\textquotedblleft}agent{\textquotedblright} by a clever form of trial and error to learn to replicate and hedge an option portfolio directly from data. It{\textquoteright}s a positive step forward in the use of modern mathematical approaches to portfolio hedging, and the authors are extending their research in deep reinforcement learning (DRL) to real-world problems in finance, including trading, portfolio management, and hedging.TOPICS: Big data/machine learning, options, risk management, simulations}, issn = {2329-0196}, URL = {https://pa.pm-research.com/content/9/1/1.10}, eprint = {https://pa.pm-research.com/content/9/1/1.10.full.pdf}, journal = {Practical Applications} }