在智能手机打字过程中,情绪会影响自动提示的使用吗?

Surjya Ghosh, Kaustubh Hiware, Niloy Ganguly, Bivas Mitra, Pradipta De
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引用次数: 8

摘要

基于输入的界面在许多移动应用程序中都很常见,尤其是消息传递应用程序。为了减少在智能手机和智能手表上使用键盘应用程序打字的困难,实现了自动完成、自动建议等几种技术。虽然有帮助,但这些技术确实给用户增加了更多的认知负担。因此,除了提高单词推荐的重要性之外,理解输入过程中自动建议的使用模式也很有用。在可能影响自动暗示使用的几个因素中,情绪的作用大多被忽视,通常是由于难以不引人注目地推断情绪。随着情感计算的进步,以及准确推断用户情绪状态的能力,研究如何通过情绪感知决策来引导自动建议是势在必行的。在这项工作中,我们研究了用户情绪与自动建议使用之间的相关性,即用户是否喜欢在特定的情绪状态下使用自动建议。我们开发了一个Android键盘应用程序,在为期三周的野外研究中,它记录了自动建议的使用情况,并收集了用户的情绪自我报告。对数据集的分析揭示了用户报告的情绪状态与自动建议的使用之间的关系。我们使用这些数据来训练个性化模型,以预测在特定情绪状态下自动建议的使用。该模型预测自动建议使用的平均准确率(AUCROC)为82%,显示了情绪感知自动建议的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Does emotion influence the use of auto-suggest during smartphone typing?
Typing based interfaces are common across many mobile applications, especially messaging apps. To reduce the difficulty of typing using keyboard applications on smartphones, smartwatches with restricted space, several techniques, such as auto-complete, auto-suggest, are implemented. Although helpful, these techniques do add more cognitive load on the user. Hence beyond the importance to improve the word recommendations, it is useful to understand the pattern of use of auto-suggestions during typing. Among several factors that may influence use of auto-suggest, the role of emotion has been mostly overlooked, often due to the difficulty of unobtrusively inferring emotion. With advances in affective computing, and ability to infer user's emotional states accurately, it is imperative to investigate how auto-suggest can be guided by emotion aware decisions. In this work, we investigate correlations between user emotion and usage of auto-suggest i.e. whether users prefer to use auto-suggest in specific emotion states. We developed an Android keyboard application, which records auto-suggest usage and collects emotion self-reports from users in a 3-week in-the-wild study. Analysis of the dataset reveals relationship between user reported emotion state and use of auto-suggest. We used the data to train personalized models for predicting use of auto-suggest in specific emotion state. The model can predict use of auto-suggest with an average accuracy (AUCROC) of 82% showing the feasibility of emotion-aware auto-suggestion.
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