计算机技术在金融投资中的应用

Xinye Sha
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引用次数: 0

摘要

为了了解计算机技术在金融投资中的应用,笔者提出了计算机技术在金融投资中的应用研究。笔者以某网络支付平台的用户交易数据为样本,共计284908条样本记录,其中正样本(欺诈样本)593条,负样本(正常样本)285214条,进行了基于数据挖掘的用户欺诈检测实证研究。在此过程中,面对正样本和负样本不平衡的问题,笔者提出使用欠采样方法构建子样本,然后对子样本进行特征缩放、离群点检测、特征筛选等处理。然后,在处理过的子样本上训练逻辑回归、K-近邻算法、决策树和支持向量机四种分类模型。结果表明,逻辑回归模型的召回率、Fl 分数和 AUC 值最高,表明基于计算机数据挖掘的检测方法是切实可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Computer Technology in Financial Investment
In order to understand the application of computer technology in financial investment, the author proposes a research on the application of computer technology in financial investment. The author used user transaction data from a certain online payment platform as a sample, with a total of 284908 sample records, including 593 positive samples (fraud samples) and 285214 negative samples (normal samples), to conduct an empirical study on user fraud detection based on data mining. In this process, facing the problem of imbalanced positive and negative samples, the author proposes to use the Under Sampling method to construct sub samples, and then perform feature scaling, outlier detection, feature screening and other processing on the sub samples. Then, four classification models, logistic regression, K-nearest neighbor algorithm, decision tree, and support vector machine, are trained on the processed sub samples. The prediction results of the four models are evaluated, and the results show that the recall rate, Fl score, and AUC value of the logistic regression model are the highest, indicating that the detection method based on computer data mining is practical and feasible.
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