In recent years, mobile accessibility has become an important trend with the goal of allowing all users the possibility of using any app without many limitations. User reviews include insights that are useful for app evolution. However, with the increase in the amount of received reviews, manually analyzing them is tedious and time-consuming, especially when searching for accessibility reviews. The goal of this paper is to support the automated identification of accessibility in user reviews, to help technology professionals in prioritizing their handling, and thus, creating more inclusive apps. Particularly, we design a model that takes as input accessibility user reviews, learns their keyword-based features, in order to make a binary decision, for a given review, on whether it is about accessibility or not. The model is evaluated using a total of 5,326 mobile app reviews. The findings show that (1) our model can accurately identify accessibility reviews, outperforming two baselines, namely keyword-based detector and a random classifier; (2) our model achieves an accuracy of 85% with relatively small training dataset; however, the accuracy improves as we increase the size of the training dataset.
翻译:近年来,移动无障碍已成为一个重要趋势,目的是使所有用户都有可能使用没有诸多限制的任何应用程序。用户审查包括有助于应用程序演变的洞察力。然而,随着收到的审查数量的增加,人工分析这些审查既乏味又耗时,特别是在搜索无障碍审查时。本文件的目的是支持用户审查自动确定无障碍,帮助技术专业人员确定其操作的优先次序,从而创建更具包容性的应用程序。特别是,我们设计了一个模型,作为输入无障碍用户审查,学习其关键词特征,以便就是否无障碍的问题作出二进制决定。该模型是用总共5 326个移动应用程序审查来评估的。结果显示:(1) 我们的模式可以准确地确定无障碍审查,超过两个基线,即基于关键词的探测器和随机分类器;(2) 我们的模式以相对小的培训数据集实现85%的准确性;然而,随着我们增加培训数据集的规模,准确性会提高。