A Predictive Linear Regression Model for Affective State Detection of Mobile Touch Screen Users

IF 0.2 Q4 COMPUTER SCIENCE, CYBERNETICS
S. Bhattacharya
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引用次数: 4

Abstract

Emotion, being important human factor, should be considered to improve user experience of interactive systems. For that, we first need to recognize user's emotional state. In this work, the author proposes a model to predict the affective state of a touch screen user. The prediction is done based on the user's finger strokes. The author defined seven features on the basis of the strokes. The proposed predictor is a linear combination of these features, which the author obtained using a linear regression approach. The predictor assumes three affective states in which a user can be: positive, negative and neutral. The existing works on affective touch interaction are few and rely on many features. Some of the feature values require special sensors, which may not be present in many devices. The seven features we propose do not require any special sensor for computation. Hence, the predictor can be implemented on any device. The model is developed and validated with empirical data involving 57 participants performing 7 touch input tasks. The validation study demonstrates a high prediction accuracy of 90.47%.
移动触屏用户情感状态检测的预测线性回归模型
情感是改善交互系统用户体验的重要人为因素。为此,我们首先需要识别用户的情绪状态。在这项工作中,作者提出了一个模型来预测触摸屏用户的情感状态。预测是基于用户的手指触碰完成的。作者在笔画的基础上定义了七个特征。提出的预测器是这些特征的线性组合,作者使用线性回归方法获得。预测器假定用户可能处于三种情感状态:积极、消极和中立。现有的关于情感触摸交互的研究很少,而且依赖于很多特征。一些特征值需要特殊的传感器,这在许多设备中可能不存在。我们提出的七个特征不需要任何特殊的传感器来计算。因此,预测器可以在任何设备上实现。该模型通过57名参与者执行7项触摸输入任务的经验数据进行了开发和验证。验证研究表明,该方法的预测准确率为90.47%。
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CiteScore
4.70
自引率
0.00%
发文量
5
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