基于数据挖掘技术的股票市场趋势预测模型

Oyelade Iyinoluwa
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引用次数: 0

摘要

股票市场预测是必不可少的,也是非常有趣的,因为成功的股票价格预测可能会带来丰厚的收益。这些任务非常复杂,非常困难。许多研究者在数据挖掘方面进行了大胆的尝试,以设计一个有效的股票市场走势分析系统。本研究提出了一种利用频繁模式增长和模糊c均值聚类算法进行股票市场趋势预测的有效方法。这项研究受到了预测股票市场的需要的鼓励,以帮助投资者了解何时买入、卖出或持有股票以获得利润。首先,将原始股市数据通过技术指标转化为经解释的历史(财务)数据。基于这些技术指标,创建了分析所需的数据集。随后,采用频繁模式增长算法生成频繁模式。基于这些频繁模式,采用模糊c均值聚类技术建立预测模型。最后,采用k -最近邻分类器对股票市场趋势进行预测。通过命中率评价指标对股市趋势预测结果进行验证,以估计预测的准确性。对所提出的模型进行了对比分析,并利用神经网络模型对所提出的模型进行了基准测试。结果表明,该模型在精度上优于神经网络模型。本文提出了一种结合FP-Growth、模糊c -均值和k -最近邻算法的股票市场趋势预测新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stock Market Trend Prediction Model Using Data Mining Techniques
Stock market prediction is essential and of great interest because successful prediction of stock prices may promise smart benefits. These tasks are highly complicated and very difficult. Many researchers have made valiant attempts in data mining to devise an efficient system for stock market movement analysis. This research has developed an efficient approach to stock market trend prediction by employing Frequent Pattern growth and Fuzzy C-means clustering algorithms. This research has been encouraged by the need of predicting the stock market to facilitate investors about when to buy, sell or hold a stock in order to make profit. Firstly, the original stock market data were converted into interpreted historical (financial) data via technical indicators. Based on these technical indicators, datasets that are required for analysis was created. Subsequently, Frequent Pattern Growth algorithm was used to generate frequent patterns. Based on these frequent patterns, Fuzzy C-means clustering technique was used to formulate the prediction model. Finally, a classification technique, K-Nearest Neighbor classifier was employed to predict the stock market trends. The results from the stock market trend prediction were validated through Hit ratio evaluation metric to estimate the prediction accuracy. Comparative analysis was carried out for the proposed model and a neural network model was used to benchmark the proposed model. The obtained results showed that proposed model produced better results than the neural network model in terms of accuracy. This paper has provided a novel approach which combines FP-Growth, Fuzzy C-means and K-Nearest Neighbor algorithms for stock market trend prediction.
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