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Artificial Neural Network and Genetic Algorithm Hybrid Intelligence for Predicting Thai Stock Price Index Trend

机译:人工神经网络与遗传算法杂交智能预测泰式股价指数趋势

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This study investigated the use of Artificial Neural Network (ANN) and Genetic Algorithm (GA) for prediction of Thailand’s SET50 index trend. ANN is a widely accepted machine learning method that uses past data to predict future trend, while GA is an algorithm that can find better subsets of input variables for importing into ANN, hence enabling more accurate prediction by its efficient feature selection. The imported data were chosen technical indicators highly regarded by stock analysts, each represented by 4 input variables that were based on past time spans of 4 different lengths: 3-, 5-, 10-, and 15-day spans before the day of prediction. This import undertaking generated a big set of diverse input variables with an exponentially higher number of possible subsets that GA culled down to a manageable number of more effective ones. SET50 index data of the past 6 years, from 2009 to 2014, were used to evaluate this hybrid intelligence prediction accuracy, and the hybrid’s prediction results were found to be more accurate than those made by a method using only one input variable for one fixed length of past time span.
机译:本研究调查了使用人工神经网络(ANN)和遗传算法(GA)来预测泰国SET50指数趋势。 ANN是一种广泛接受的机器学习方法,使用过去的数据来预测未来的趋势,而GA是一种算法,可以找到更好的输入变量子集以进口到ANN,因此通过其有效的特征选择来实现更准确的预测。选择了进口数据的技术指标由股票分析师提供高度认定的,每个人数由4个输入变量表示,该输入变量基于4个不同长度的过去时间跨度:3-,5-,10-和15天跨度在预测日之前的跨度。此导入创建了一系列大量不同的输入变量,具有呈指数级的可能的子集,该遗传们将淘汰达到可管理数量的更有效的子集。从2009年到2014年,过去6年的Set50索引数据用于评估这种混合智能预测准确性,并且发现混合动力车的预测结果比使用一个固定长度的一个输入变量的方法更准确过去的时间跨度。

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