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Binary Classification and Data Analysis for Modeling Calendar Anomalies in Financial Markets

机译:用于金融市场日历异常建模的二进制分类和数据分析

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This paper studies on the Day-of-the-week effect by means of several binary classification algorithms in order to achieve the most effective and efficient decision trading support system. This approach utilizes the intelligent data-driven model to predict the influence of calendar anomalies and develop profitable investment strategy. Advanced technology, such as time-series feature extraction, machine learning, and binary classification, are used to improve the system performance and make the evaluation of trading simulation trustworthy. Through experimenting on the component stocks of S&P 500, the results show that the accuracy can achieve 70% when adopting two discriminant feature representation methods, including "multi-day technical indicators" and "intra-day trading profile." The binary classification method based on LDA-Linear Prior kernel outperforms than other learning techniques and provides the investor a stable and profitable portfolios with low risk. In addition, we believe this paper is a FinTech example which combines advanced interdisciplinary researches, including financial anomalies and big data analysis technology.
机译:本文通过几种二进制分类算法研究“星期几”效应,以实现最有效和高效的决策交易支持系统。该方法利用智能数据驱动模型来预测日历异常的影响并制定有利可图的投资策略。时间序列特征提取,机器学习和二进制分类等先进技术可用于提高系统性能,并使交易模拟的评估值得信赖。通过对标准普尔500成份股的实验,结果表明,采用两种区分特征表示方法(包括“多日技术指标”和“日内交易概况”),准确性可以达到70%。基于LDA-线性先验核的二元分类方法优于其他学习技术,可为投资者提供稳定且有利可图的低风险投资组合。此外,我们认为本文是结合了先进跨学科研究(包括金融异常和大数据分析技术)的FinTech示例。

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