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Title:
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Modeling Stock Order Flows and Learning Market-Making from Data |
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Author:
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Kim, Adlar J.; Shelton, Christian R. |
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Issue Date:
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2002-06-01 |
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Abstract:
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Stock markets employ specialized traders, market-makers, designed to provide liquidity and volume to the market by constantly supplying both supply and demand. In this paper, we demonstrate a novel method for modeling the market as a dynamic system and a reinforcement learning algorithm that learns profitable market-making strategies when run on this model. The sequence of buys and sells for a particular stock, the order flow, we model as an Input-Output Hidden Markov Model fit to historical data. When combined with the dynamics of the order book, this creates a highly non-linear and difficult dynamic system. Our reinforcement learning algorithm, based on likelihood ratios, is run on this partially-observable environment. We demonstrate learning results for two separate real stocks. |
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URI:
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http://hdl.handle.net/1721.1/7271
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Other Identifiers:
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AIM-2002-009 CBCL-217 |
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Series/Report no.:
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AIM-2002-009, CBCL-217 |
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Keywords:
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AI, input/output HMM, market-making, reinforcement learning, stock order flow model |