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A hybrid stock trading framework integrating technical analysis with machine learning techniques
2016
Journal of Finance and Data Science
In this paper, a novel decision support system using a computational efficient functional link artificial neural network (CEFLANN) and a set of rules is proposed to generate the trading decisions more effectively. Here the problem of stock trading decision prediction is articulated as a classification problem with three class values representing the buy, hold and sell signals. The CEFLANN network used in the decision support system produces a set of continuous trading signals within the range
doi:10.1016/j.jfds.2016.03.002
fatcat:ffu4i6mm2faeneyezr4ynnkv4a