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首页> 外文期刊>Journal of Mathematics Research >Multi-factor Stock Selection Model Based on Kernel Support Vector Machine
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Multi-factor Stock Selection Model Based on Kernel Support Vector Machine

机译:基于核支持向量机的多因素库存选择模型

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摘要

In recent years, the combination of machine learning method and traditional financial investment field has become a hotspot in academic and industry. This paper takes CSI 300 and CSI 500 stocks as the research objects. First, this paper carries out kernel function test and parameter optimization for the kernel support vector machine system, and then predict and optimize the combination of market-neutral stock selection strategy and stock right strategy. The results of the experiment show that the multi-factor model based on SVM has a strong predictive power for the selection of stock, and it has a difference in the predictive power of different nuclear functions.
机译:近年来,将机器学习方法与传统金融投资领域相结合已成为学术界和行业的热点。本文以沪深300和沪深500股票为研究对象。首先,对内核支持向量机系统进行了内核功能测试和参数优化,然后预测和优化了市场中立的选股策略和股权策略的组合。实验结果表明,基于支持向量机的多因素模型对股票的选择具有较强的预测能力,不同核功能的预测能力也存在差异。

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