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Risk-aware multi-armed bandit problem with application to portfolio selection.

Xiaoguang HuoFeng Fu
Published in: Royal Society open science (2017)
Sequential portfolio selection has attracted increasing interest in the machine learning and quantitative finance communities in recent years. As a mathematical framework for reinforcement learning policies, the stochastic multi-armed bandit problem addresses the primary difficulty in sequential decision-making under uncertainty, namely the exploration versus exploitation dilemma, and therefore provides a natural connection to portfolio selection. In this paper, we incorporate risk awareness into the classic multi-armed bandit setting and introduce an algorithm to construct portfolio. Through filtering assets based on the topological structure of the financial market and combining the optimal multi-armed bandit policy with the minimization of a coherent risk measure, we achieve a balance between risk and return.
Keyphrases
  • machine learning
  • public health
  • decision making
  • young adults
  • artificial intelligence
  • health insurance
  • big data