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首页> 外文期刊>Expert Systems with Application >Algorithmic sign prediction and covariate selection across eleven international stock markets
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Algorithmic sign prediction and covariate selection across eleven international stock markets

机译:11个国际股票市场的算法符号预测和协变量选择

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摘要

I investigate whether an expert system can be used for profitable long-term asset management. The trading strategy of the expert system needs to be based on market predictions. To this end, I generate binary predictions of the market returns by using statistical and machine-learning algorithms. The methods used include logistic regressions, regularized logistic regressions and similarity-based classification. I test the methods in a contemporary data set involving data from eleven developed markets. Both statistical and economic significance of the results are considered. As an ensemble, the results seem to indicate that there is some degree of mild predictability in the stock markets. Some of the results obtained are highly significant in the economic sense, featuring annualized excess returns of 3.1% (France), 2.9% (Netherlands) and 0.8% (United States). However, statistically significant results are seldom found. Consequently, the results do not completely invalidate the efficient-market hypothesis. (C) 2018 Elsevier Ltd. All rights reserved.
机译:我调查专家系统是否可用于有利可图的长期资产管理。专家系统的交易策略需要基于市场预测。为此,我使用统计和机器学习算法来生成市场收益的二元预测。使用的方法包括逻辑回归,正则逻辑回归和基于相似度的分类。我在包含11个发达市场数据的当代数据集中测试了这些方法。既要考虑结果的统计意义,又要考虑经济意义。作为一个合奏,结果似乎表明股票市场存在一定程度的适度可预测性。从经济意义上讲,获得的一些结果非常重要,其年度超额收益分别为3.1%(法国),2.9%(荷兰)和0.8%(美国)。但是,很少发现具有统计意义的结果。因此,结果并未完全使有效市场假说无效。 (C)2018 Elsevier Ltd.保留所有权利。

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