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IJAR
2016

Gated Bayesian networks for algorithmic trading

8 years 15 days ago
Gated Bayesian networks for algorithmic trading
Gated Bayesian networks (GBNs) are a recently introduced extension of Bayesian networks that aims to model dynamical systems consisting of several distinct phases. In this paper, we present an algorithm for semi-automatic learning of GBNs. We use the algorithm to learn GBNs that output buy and sell decisions for use in algorithmic trading systems. We show how using the learnt GBNs can substantially lower risks towards invested capital, while at the same time generating similar or better rewards, compared to the benchmark investment strategy buy-and-hold.
Marcus Bendtsen, Jose M. Peña
Added 04 Apr 2016
Updated 04 Apr 2016
Type Journal
Year 2016
Where IJAR
Authors Marcus Bendtsen, Jose M. Peña
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