Pattern recognition using hidden Markov models in financial time series
DOI:
https://doi.org/10.12697/ACUTM.2017.21.02Keywords:
pattern recognition, hidden Markov models, financial time series, automated trading systemAbstract
Our aim consists in developing a software which can recognize M trading patterns in real time using Hidden Markov Models (HMMs). A trading pattern is a predefined figure indicating a specific behavior of prices. We trained M + 1 HMMs using Baum-Welch Algorithm combined with Genetic Algorithm. In particular, with HMMs we describe M trading patterns while the other one, called threshold model, can recognize all the not predefined patterns. The classification algorithm correctly recognizes 93% of the provided patterns. Thanks to the analysis of the false positive examples, we finally designed some more filters to reduce them.Downloads
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