利用瞳孔扩张和脑电图分析预测网络用户点击意图

Gino Slanzi, Jorge A. Balazs, J. D. Velásquez
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引用次数: 7

摘要

本文介绍了一种新的网络用户行为分析方法,包括基于瞳孔扩张和脑电图(EEG)反应评估的基于生理的点击意图评估。为此,我们进行了一项实证研究,记录了21名被试在5个真实网站上执行不同信息采集任务时的上述反应。我们发现点击和不点击瞳孔扩张曲线的统计差异,更准确地说,点击对应的注视比没有点击的注视有更大的瞳孔大小。此外,利用随机Lasso特征选择过程中获得的789个瞳孔扩张和脑电特征中的15个,应用了7个分类模型。结果显示,准确率(使用逻辑回归)表现良好(71.09%),而精密度、召回率和F-Measure仍然很低,这表明我们正在研究的行为没有很好地分类。尽管这些结果的质量很好,但有可能提到,从Web智能的角度来看,审查的响应可以用作Web用户行为的代理,例如,生成在线推荐以改进网站结构或内容。然而,我们得出的结论是,为了达到更高的效果,需要更高质量的仪器。
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Predicting Web User Click Intention Using Pupil Dilation and Electroencephalogram Analysis
In this work, a new approach for analysing the Web user behavior is introduced, consisting of a physiological-based click intention assessment, based on pupil dilation and electroencephalogram (EEG) responses evaluation. For this, an empirical study was conducted, where the mentioned responses of 21 subjects were recorded while performing diverse information foraging tasks from five real web sites. We found a statistical difference between click and not-click pupil dilation curves, more precisely, fixations corresponding to clicks had greater pupil size than fixations without clicks. In addition, seven classification models were applied, using 15 out 789 pupil dilation and EEG features obtained from a Random Lasso feature selection process. Results showed good performance for Accuracy (71,09% using Logistic Regression), whereas for Precision, Recall and F-Measure remained low, which indicates the behavior we were studying was not well classified. Despite the quality of these results, it is possible to mention that the reviewed responses could be used from a Web Intelligence perspective as a proxy of Web user behavior, for example, to generate an online recommender to improve websites structure or content. However, we concluded that better quality instruments are necessary to achieve higher results.
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