基于k均值和AprioriAll算法的序列图模式股票趋势预测

Yung-Piao Wu, Kuo-Ping Wu, Hahn-Ming Lee
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引用次数: 9

摘要

本文提出了一个基于序列图模式、K-Means和AprioriAll算法相结合的股票趋势预测模型。通过滑动窗口将股票价格序列截断为图表。然后通过K-Means算法对图表进行聚类,形成图表模式。因此,图表形成图表模式序列,序列中的频繁模式可以通过AprioriAll算法提取出来。频繁模式的存在意味着某些特定的市场行为经常表现出伴随性,从而可以预测相应的趋势。实验结果表明,该系统能够以较少的交易产生较好的指数收益。它的年化回报率也高于屡获殊荣的共同基金。因此,即使在长期使用中,所提出的方法在实际市场上也是有利可图的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stock Trend Prediction by Sequential Chart Pattern via K-Means and AprioriAll Algorithm
In this paper we present a model to predict the stock trend based on a combination of sequential chart pattern, K-Means and AprioriAll algorithm. The stock price sequence is truncated to charts by sliding window. Then the charts are clustered by K-Means algorithm to form chart patterns. Therefore, the charts form chart pattern sequences, and frequent patterns in the sequences can be extracted by AprioriAll algorithm. The existence of frequent patterns implies that some specific market behaviors often show accompanied, thus the corresponding trend can be predicted. Experiment results show that the proposed system can produce better index return with fewer trade. Its annualized return is also better than award winning mutual funds. Therefore, the proposed method makes profits on the real market, even in a long-term usage.
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