Forecasting BIST100 Index with Neural Network Ensembles

Koray Beyaz, M. Efe
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Abstract

This paper aims to provide a neural network-based approach to forecast the direction of movement of BIST 100 stock price index and investigates the difficulties of such an implementation. It is observed that a neural network implementation is highly sensitive to selection of features and optimization parameters such as learning rate. A methodology to overcome the difficulties of neural network implementations to financial time series is proposed in the paper. Several feature selection methods are employed to obtain a subset of the features that can be used in the training of any classification algorithm. The difficulties and benefits of using an ensemble of neural networks instead of a single neural network are also studied. Results have shown that the use of neural network ensembles yields promising results. Keywords: Neural Networks, Ensemble, Bagging, Forecast.
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神经网络集成预测BIST100指数
本文旨在提供一种基于神经网络的方法来预测BIST 100股票价格指数的运动方向,并研究这种方法实现的困难。观察到神经网络的实现对特征的选择和优化参数(如学习率)高度敏感。本文提出了一种克服神经网络实现金融时间序列困难的方法。采用了几种特征选择方法来获得可用于任何分类算法训练的特征子集。本文还研究了使用神经网络集合代替单个神经网络的困难和好处。结果表明,使用神经网络集成产生了有希望的结果。关键词:神经网络,集成,套袋,预测。
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