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http://dx.doi.org/10.5391/IJFIS.2014.14.2.73

Modern Probabilistic Machine Learning and Control Methods for Portfolio Optimization  

Park, Jooyoung (Department of Control & Instrumentation Engineering, Korea University)
Lim, Jungdong (Department of Control & Instrumentation Engineering, Korea University)
Lee, Wonbu (Department of Control & Instrumentation Engineering, Korea University)
Ji, Seunghyun (Department of Control & Instrumentation Engineering, Korea University)
Sung, Keehoon (Department of Control & Instrumentation Engineering, Korea University)
Park, Kyungwook (School of Business Administration, Korea University)
Publication Information
International Journal of Fuzzy Logic and Intelligent Systems / v.14, no.2, 2014 , pp. 73-83 More about this Journal
Abstract
Many recent theoretical developments in the field of machine learning and control have rapidly expanded its relevance to a wide variety of applications. In particular, a variety of portfolio optimization problems have recently been considered as a promising application domain for machine learning and control methods. In highly uncertain and stochastic environments, portfolio optimization can be formulated as optimal decision-making problems, and for these types of problems, approaches based on probabilistic machine learning and control methods are particularly pertinent. In this paper, we consider probabilistic machine learning and control based solutions to a couple of portfolio optimization problems. Simulation results show that these solutions work well when applied to real financial market data.
Keywords
Machine learning; Portfolio optimization; Evolution strategy; Value function.;
Citations & Related Records
Times Cited By KSCI : 3  (Citation Analysis)
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