Advanced Classification Technique to Detect the Changes of Regimes in Financial Markets by Hybrid CNN-based Prediction

K. Geetha
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Abstract

Traders' tactics shift in response to the shifting market circumstances. The statistical features of price fluctuations may be significantly altered by the collective conduct of traders. When some changes in the market eventuate, a "regime shift" takes place. According to the observed directional shifts, this proposed study attempts to define what constitutes between normal and abnormal market regimes in the financial markets. The study begins by using data from ten financial marketplaces. For each call, a time frame in which major events may have led to regime change is chosen. Using the previous returns of all the companies in the index, this study investigates the usage of a CNN with SVM deep learning hybrid to anticipate the index's movement. The experiment findings reveal that this CNN model can successfully extract more generic and useful features than conventional technical indicators and produce more resilient and lucrative financial performance than earlier machine learning techniques. Most of the inability to forecast is due to randomness, and a small amount is due to non-stationarity. There is also a statistical correlation between the legal regimes of various marketplaces. Using this data, it is conceivable to tell the difference between normal regimes and lawful regimes. The results show that the stock market efficiency has never been tested before with such a large data set, and this is a significant step forward for weak-form market efficiency testing.
基于cnn混合预测的高级分类技术检测金融市场制度变化
交易员的策略会随着市场环境的变化而变化。交易者的集体行为可能显著改变价格波动的统计特征。当市场发生一些变化时,就会发生“政权转移”。根据观察到的方向变化,本研究试图定义金融市场中正常和异常市场机制之间的构成。这项研究首先使用了来自10个金融市场的数据。对于每个呼叫,选择一个可能导致政权更迭的重大事件的时间框架。利用指数中所有公司以前的收益,本研究调查了CNN与SVM深度学习混合的使用情况,以预测指数的运动。实验结果表明,与传统的技术指标相比,该CNN模型可以成功地提取更多通用和有用的特征,并且比早期的机器学习技术产生更有弹性和更有利可图的财务绩效。大部分无法预测是由于随机性,少部分是由于非平稳性。不同市场的法律制度之间也存在统计相关性。利用这些数据,可以想象出正常政体和合法政体之间的区别。结果表明,在此之前从未使用如此大的数据集对股票市场效率进行过测试,这是对弱形式市场效率测试的重要一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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