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Rules extraction in short memory time series using genetic algorithms

机译:使用遗传算法提取短时间序列的规则

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Data mining is performed using genetic algorithm on artificially generated time series data with short memory. The extraction of rules from a training set and the subsequent testing of these rules provide a basis for the predictions on the test set. The artificial time series are generated using the inverse whitening transformation, and the correlation function has an exponential form with given time constant indicative of short memory. A vector quantization technique is employed to classify the daily rate of return of this artificial time series into four categories. A simple genetic algorithm based on a fixed format of rules is introduced to do the forecasting. Comparing to the benchmark tests with random walk and random guess, genetic algorithms yield substantially better prediction rates, between 50% to 60%. This is an improvement compared with the 47% for random walk prediction and 25% for random guessing method.
机译:数据挖掘是使用遗传算法对具有短内存的人工生成的时间序列数据进行的。从训练集中提取规则并随后对这些规则进行测试为测试集中的预测提供了基础。人工时间序列是使用逆白化变换生成的,并且相关函数具有指数形式,其中给定的时间常数表示短存储。采用矢量量化技术将该人工时间序列的每日收益率分类为四个类别。介绍了一种基于固定规则格式的简单遗传算法进行预测。与具有随机游走和随机猜测的基准测试相比,遗传算法可产生更好的预测率,介于50%到60%之间。与随机游走预测的47%和随机猜测方法的25%相比,这是一个改进。

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