基于机器学习的欺骗识别方法

Siddth Kumar Chhajer, Rudra Bhanu Satpathy
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引用次数: 0

摘要

敲诈勒索是一个正在发展的问题,对预算业务产生了深远的影响,并记住已经发现了许多程序。信息删除是有效的功能,以支持记录,以计算机化的调查大量的多方面的信息。在网上交易中,信息删除在Visa欺诈方面也承担了重要的工作。信用卡诈骗识别是一个信息挖掘问题,它之所以得到检验,主要有两个原因:一是典型诈骗行为的特征变化很大,二是万事达信用卡诈骗信息收集异常倾斜。本文研究并分析了决策树、随机森林、支持向量机和策略回归在异常倾斜的信用卡勒索信息中的存在性。Visa交易所数据集来自欧洲持卡人,包含274,335家交易所。这些函数用于对信息进行粗化和预处理。评估策略的呈现依赖于准确性、亲和性、明确性和准确性。结果表明,逻辑回归、决策树、随机森林和支持向量机分类器的理想准确率分别为96.8%、94.4%、99.5%和96.6%。关键词:信用卡,决策树,欺骗识别,支持向量机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deception Recognition Method Based on Machine Learning
Money extortion is a developing issue with far results in the budgetary business and keeping in mind that numerous procedures have been found. Information removal is effectively functional to back records to computerize the investigation of colossal volumes of multifaceted information. Information removal has additionally assumed a notable job in the location of Visa deception in online exchanges. Deception recognition in credit card is an information mining issue, it gets testing because of two significant reasons–first, the profiles of typical and deceitful practices change much of the time and besides because of the reason that Mastercard extortion informational collections are exceptionally slanted. This paper examines and analyze the presence of the Decision tree, Random Forest, SVM, and strategic regression on exceptionally slanted credit card extortion information. Dataset of Visa exchanges is sourced from European cardholders containing 274,335 exchanges. These function are used to crude and preprocessed information. The presentation of the strategies is assessed dependent on exactness, affectability, explicitness, accuracy. The outcomes demonstrate the ideal accuracy for logistic regression, decision tree, Random Forest and SVM classifiers are 96.8%, 94.4%,99.5%, and 96.6%. Keyword : Credit Card,Decision Tree,Deception Recognition, and Support Vector Machine.
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