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Stock returns prediction using kernel adaptive filtering within a stock market interdependence approach

机译:在股票市场相互依存方法中使用内核自适应过滤的股票回报预测

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摘要

Stock returns are continuously generated by different data sources and depend on various factors such as financial policies and national economic growths. Stock returns prediction, unlike traditional regression, requires consideration of both the sequential and interdependent nature of financial time-series. This work uses a two-stage approach, using kernel adaptive filtering (KAF) within a stock market interdependence approach to sequentially predict stock returns. Thus, unlike traditional KAF formulations, prediction uses not only their local models but also the individual local models learned from other stocks, enhancing prediction accuracy. The enhanced KAF plus market interdependence framework has been tested on 24 different stocks from major economies. The enhanced approach obtains higher sharpe ratio when compared with KAF-based methods, long short-term memory, and autoregressive-based models. (c) 2020 Elsevier Ltd. All rights reserved.
机译:股票回报被不同的数据来源不断产生,并取决于各种因素,如金融政策和国家经济增长。与传统回归不同,股票回报预测需要考虑财务时间系列的顺序和相互依存性质。这项工作采用了两级方法,在股票市场相互依存方法中使用内核自适应过滤(KAF)来顺序预测股票回报。因此,与传统的KAF配方不同,预测不仅使用他们的本地模型,而且使用来自其他股票的各个本地模型,增强预测准确性。增强的KAF加上市场相互依存框架已经在主要经济体的24种不同的股票上进行了测试。与基于KAF的方法,短期内存和基于自回归的模型相比,增强的方法在比较时获得更高的锐利比。 (c)2020 elestvier有限公司保留所有权利。

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