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Cascading logistic regression onto gradient boosted decision trees for forecasting and trading stock indices
Affiliation:1. School of Remote Sensing and Information Engineering, Wuhan University, Wuhan, Hubei 430079, China;2. School of Geography and the Environment, University of Oxford, South Parks Road, OX1 3QY, Oxford, United Kingdom;3. Department of Geography, University of Munich (LMU), 80333 Munich, Germany;4. Max Planck Institute for Meteorology, Hamburg, Germany;5. Collaborative Innovation Center of Geospatial Technology, Wuhan 430079, China
Abstract:Forecasting the direction of the daily changes of stock indices is an important yet difficult task for market participants. Advances on data mining and machine learning make it possible to develop more accurate predictions to assist investment decision making. This paper attempts to develop a learning architecture LR2GBDT for forecasting and trading stock indices, mainly by cascading the logistic regression (LR) model onto the gradient boosted decision trees (GBDT) model. Without any assumption on the underlying data generating process, raw price data and twelve technical indicators are employed for extracting the information contained in the stock indices. The proposed architecture is evaluated by comparing the experimental results with the LR, GBDT, SVM (support vector machine), NN (neural network) and TPOT (tree-based pipeline optimization tool) models on three stock indices data of two different stock markets, which are an emerging market (Shanghai Stock Exchange Composite Index) and a mature stock market (Nasdaq Composite Index and S&P 500 Composite Stock Price Index). Given the same test conditions, the cascaded model not only outperforms the other models, but also shows statistically and economically significant improvements for exploiting simple trading strategies, even when transaction cost is taken into account.
Keywords:Ensemble learning  Gradient boosted decision trees  Logistic regression  Stock market  Transaction cost
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