Identifying Users' Emotional States through Keystroke Dynamics

S. Marrone, Carlo Sansone
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引用次数: 1

Abstract

: Recognising users’ emotional states is among the most pursued tasks in the field of affective computing. Despite several works show promising results, they usually require expensive or intrusive hardware. Keystroke Dynamics (KD) is a behavioural biometric, whose typical aim is to identify or confirm the identity of an individual by analysing habitual rhythm patterns as they type on a keyboard. This work focuses on the use of KD as a way to continuously predict users’ emotional states during message writing sessions. In particular, we introduce a time-windowing approach that allows analysing users’ writing sessions in different batches, even when the considered writing window is relatively small. This is very relevant in the field of social media, where the exchanged messages are usually very small and the typing rhythm is very fast. The obtained results suggest that even very short writing windows (in the order of 30”) are sufficient to recognise the subject’s emotional state with the same level of accuracy of systems based on the analysis of larger writing sessions (i.e., up to a few minutes).
通过击键动力学识别用户的情绪状态
识别用户的情绪状态是情感计算领域最受关注的任务之一。尽管有几项研究显示出有希望的结果,但它们通常需要昂贵或侵入性的硬件。击键动力学(KD)是一种行为生物计量学,其典型目标是通过分析一个人在键盘上打字时的习惯节奏模式来识别或确认其身份。这项工作的重点是使用KD作为一种持续预测用户在消息编写过程中的情绪状态的方法。特别是,我们引入了一种时间窗口方法,允许以不同的批次分析用户的写作会话,即使考虑的写作窗口相对较小。这在社交媒体领域是非常相关的,在社交媒体中,交换的信息通常非常小,打字节奏非常快。所获得的结果表明,即使是非常短的写作窗口(大约30英寸)也足以识别受试者的情绪状态,其准确度与基于更长的写作会话(即长达几分钟)分析的系统相同。
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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