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User Stress Modeling through Galvanic Skin Response

机译:通过电流皮肤响应的用户应力建模

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摘要

The advent of digital era has brought great advances in the quality and accuracy of Bio medical sensors and other physiological devices. Similarly, digital games have also witnessed massive improvements in their scale, mechanics, graphics, and reach, which has led to a fierce debate on their human and societal impact, especially in terms of identifying the correlation, if any, between the gamer and violent transgressors. From a pure technological perspective, it is thus imperative that advances in sensory technologies and machine learning are then utilized to build a model for identifying the stress experienced by the gamer, during any game session. Galvanic Skin Response(GSR), can act as a good indicator of this experienced stress, by measuring the change in skin conductance and skin resistance of the user. However, GSR data, in its raw form, is very much user dependent, often biased, and is difficult to analyze, as it gives a long term measure of the user behavior changes, based on skin precipitation. In this research work, we have collected user's perceived notion of stress along with sensory data from a GSR device, which was then analyzed using various machine learning models, before creating a majority voting based ensemble model for stress modeling. Showing comparable values of accuracy(63.39%) and precision(51.22%), our model was able to substantially increase the class recall rate for identifying stress (27.08%), from the individual approaches (0-8.95%).
机译:数字时代的出现在生物医学传感器和其他生理设备的质量和准确性方面带来了巨大的进展。同样,数字游戏还目睹了他们的规模,力学,图形和到达的大规模改进,这导致了对他们的人类和社会影响的激烈辩论,特别是在识别游戏玩家和暴力之间的相关性(如果有的话)违法者。从纯粹的技术角度来看,因此必须利用感官技术和机器学习的进步来构建用于在任何游戏会话期间识别游戏玩家所经历的压力的模型。电流皮肤反应(GSR)可以作为这种经历的应力的良好指标,通过测量用户的皮肤传导和耐肤抗性的变化。然而,GSR数据,其原始形式非常多于用户依赖,通常偏见,并且难以分析,因为它基于皮肤降水给出了用户行为的长期衡量。在这项研究中,我们收集了用户的感知压力的感知概念以及来自GSR设备的感官数据,然后使用各种机器学习模型进行分析,然后在创建基于压力建模的大多数基于投票的集合模型之前。表示准确度(63.39%)和精度(51.22%)的可比较的值,我们的模型能够大幅提高类召回率用于识别应力(27.08%),来自个体的方法(0-8.95%)。

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