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BEHAVIORAL BIOMETRICS AND MACHINE LEARNING TO SECRURE WEBSITE LOGINS

机译:行为生物学和机器学习,可确保网站登录安全

摘要

A system that uses a client's behavioral biometrics—mouse dynamics, keystrokes, and mouse click patterns—to create a Machine Learning (ML) based customized security model for each client/user to secure website log-ins. The ML model can differentiate the user of interest from an impersonator—human or non-human (robot). The model collects relevant behavioral biometric data from the client when a new account is created by the client/user on a website or when the client initially logs-in to the website. The collected biometric data are used to train an ensemble of ML-based classifiers—a Multilayer Perceptron (MLP) classifier, a Support Vector Machine (SVM) classifier, and an Adaptive Boosting (AdaBoost) classifier—in the model. The trained versions of these classifiers are polled to give an optimal prediction in real-time (while the user is logging in). As a result, real-time fraud detection can be accomplished without impacting the log-in performance of the website.
机译:该系统使用客户端的行为生物特征(鼠标动态,击键和鼠标单击模式)为每个客户端/用户创建基于机器学习(ML)的自定义安全模型,以保护网站登录安全。 ML模型可以将感兴趣的用户与模拟者(人类或非人类(机器人))区分开。当客户/用户在网站上创建新帐户时或客户最初登录网站时,该模型会从客户那里收集相关的行为生物统计数据。收集的生物特征数据用于训练模型中的基于ML的分类器(多层感知器(MLP)分类器,支持向量机(SVM)分类器和自适应增强(AdaBoost)分类器)的集合。这些分类器的训练有素的版本会被轮询以实时提供最佳预测(在用户登录时)。结果,可以在不影响网站的登录性能的情况下完成实时欺诈检测。

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