Predicting Age and Gender by Keystroke Dynamics and Mouse Patterns

Avar Pentel
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引用次数: 35

Abstract

In human computer interaction, some of the user activities are intentional, and other unintentional, but user interfaces are usually designed to react only to intentional commands. However, user's unintentional activity contains many clues about a user, that can be beneficial to take into account in designing appropriate response. Current study focuses on these unintentional traces, that left behind by use of standard input devices, keyboard and mouse, and specifically, we try to predict users age and gender. Mouse and keyboard data used in this study, are collected in six different systems between 2011 and 2017 in total from 1519 subjects. Some supervised machine learning models yield to f-scores over 0.9 when predicted both user age or gender.
通过击键动力学和鼠标模式预测年龄和性别
在人机交互中,一些用户活动是有意的,而另一些则是无意的,但是用户界面通常被设计为只对有意的命令作出反应。然而,用户的无意活动包含了许多关于用户的线索,在设计适当的响应时可以考虑到这些线索。目前的研究主要集中在这些无意的痕迹上,这些痕迹是使用标准输入设备,键盘和鼠标留下的,具体来说,我们试图预测用户的年龄和性别。本研究中使用的鼠标和键盘数据是在2011年至2017年期间从六个不同的系统中收集的,共有1519名受试者。一些有监督的机器学习模型在预测用户年龄或性别时的f值超过0.9。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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