HCI for Elderly, Measuring Visual Complexity of Webpages Based on Machine Learning

Zahra Sadeghi, E. Homayounvala, M. Borhani
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Abstract

The increasing number of elderly persons, aged 65 and over, highlights the problem of improving their experience with computers and the web considering their preferences and needs. Elderlies' skills like cognitive, haptic, visual, and motor skills are reduced by age. The visual complexity of web pages has a major influence on the quality of user experience of elderly users according to their reduced abilities. Therefore, it is quite beneficial if the visual complexity of web pages could be measured and reduced in applications and websites which are designed for them. In this way a personalized less complex version of the website could be provided for older users. In this article, a new approach for measuring the visual complexity is proposed by using both Human-Computer Interaction (HCI) and machine learning methods. Six features are considered for complexity measurements. Experimental results demonstrated that the trained proposed machine learning approach increases the accuracy of classification of applications and websites based on their visual complexity up to 82% which is more than its competitors. Besides, a feature selection algorithm indicates that features such as clutter and equilibrium were selected to have the most influence on the classification of webpages based on their visual complexity.
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面向老年人的人机交互,基于机器学习的网页视觉复杂性测量
随着六十五岁及以上的长者人数不断增加,考虑到他们的喜好和需要,改善他们使用电脑和网络的体验,是一个突出的问题。老年人的认知、触觉、视觉和运动技能等技能随着年龄的增长而下降。由于老年用户的能力下降,网页的视觉复杂性对用户体验的质量有很大的影响。因此,在为网页设计的应用程序和网站中,如果可以测量和减少网页的视觉复杂性是非常有益的。通过这种方式,可以为老年用户提供个性化的、不那么复杂的网站版本。本文提出了一种利用人机交互(HCI)和机器学习方法测量视觉复杂性的新方法。复杂度度量考虑了六个特征。实验结果表明,经过训练的机器学习方法将基于视觉复杂性的应用程序和网站分类的准确率提高了82%,超过了竞争对手。此外,特征选择算法表明,根据网页的视觉复杂性,选择杂乱和均衡等特征对网页分类影响最大。
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