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首页> 外文期刊>Mathematics and computers in simulation >Time series forecasting for stock market prediction through data discretization by fuzzistics and rule generation by rough set theory
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Time series forecasting for stock market prediction through data discretization by fuzzistics and rule generation by rough set theory

机译:通过模糊数据离散化和粗糙集规则生成来预测股票市场的时间序列预测

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摘要

Data discretization is a preprocessing technique to mine essential information from the pool of information. It is also essential to generate rules from the processed data after mining information. In this paper, a hybrid approach is proposed to forecast time series of stock price by using data discretization based on fuzzistics (Mendel, 2007 [24]; Liu and Mendel, 2008), where cumulative probability distribution approach (CPDA) is used to get the intervals for the linguistic values. First order fuzzy rule generation and reduction of rule sets by rough set theory have been performed. Thereafter, forecasting of the time series data is computed from defuzzification using reduced rule base and its historical evidences. Proposed approach is applied on stock index closing price of three time series data (BSE, NYSE, and TAIEX) as experimental data sets and the results show that the method is more effective than its counter parts. (C) 2019 International Association for Mathematics and Computers in Simulation (IMACS). Published by Elsevier B.Y. All rights reserved.
机译:数据离散化是一种从信息池中挖掘基本信息的预处理技术。在挖掘信息之后,从处理后的数据生成规则也很重要。在本文中,提出了一种混合方法,通过使用基于模糊学的数据离散化来预测股票价格的时间序列(Mendel,2007 [24]; Liu and Mendel,2008),其中使用累积概率分布方法(CPDA)获得语言值的间隔。已经进行了基于粗糙集理论的一阶模糊规则生成和规则集约简。此后,使用减少的规则库及其历史证据从去模糊化计算时间序列数据的预测。提出的方法应用于三个时间序列数据(BSE,NYSE和TAIEX)的股票指数收盘价作为实验数据集,结果表明该方法比其对应部分更有效。 (C)2019国际模拟数学与计算机协会(IMACS)。由Elsevier B.Y.发布版权所有。

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