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TIST 2011

CORN

Journal Article journal-article Artificial Intelligence ยท Intelligent Systems

Abstract

Machine learning techniques have been adopted to select portfolios from financial markets in some emerging intelligent business applications. In this article, we propose a novel learning-to-trade algorithm termed COR relation-driven N onparametric learning strategy (CORN) for actively trading stocks. CORN effectively exploits statistical relations between stock market windows via a nonparametric learning approach. We evaluate the empirical performance of our algorithm extensively on several large historical and latest real stock markets, and show that it can easily beat both the market index and the best stock in the market substantially (without or with small transaction costs), and also surpass a variety of state-of-the-art techniques significantly.

Authors

Keywords

  • Correlation coefficient
  • nonparametric learning
  • online portfolio selection

Context

Venue
ACM Transactions on Intelligent Systems and Technology
Archive span
2010-2026
Indexed papers
1415
Paper id
980101507575563762