Capturing users engagement is crucial for gathering feedback about the features of a software product. In a market-driven context, current approaches to collect and analyze users feedback are based on techniques leveraging information extracted from product reviews and social media. These approaches are hardly applicable in bespoke software development, or in contexts in which one needs to gather information from specific users. In such cases, companies need to resort to face-to-face interviews to get feedback on their products. In this paper, we propose to utilize biometric data, in terms of physiological and voice features, to complement interviews with information about the engagement of the user on the discussed product-relevant topics. We evaluate our approach by interviewing users while gathering their physiological data (i.e., biofeedback) using an Empatica E4 wristband, and capturing their voice through the default audio-recorder of a common laptop. Our results show that we can predict users' engagement by training supervised machine learning algorithms on biometric data, and that voice features alone can be sufficiently effective. The performance of the prediction algorithms is maximised when pre-processing the training data with the synthetic minority oversampling technique (SMOTE). The results of our work suggest that biofeedback and voice analysis can be used to facilitate prioritization of requirements oriented to product improvement, and to steer the interview based on users' engagement. Furthermore, the usage of voice features can be particularly helpful for emotion-aware requirements elicitation in remote communication, either performed by human analysts or voice-based chatbots.
翻译:在市场驱动的背景下,目前收集和分析用户反馈的方法是以利用产品审查和社交媒体获得的信息的技术为基础的。这些方法几乎无法适用于口述软件开发,或需要从特定用户收集信息的情况。在这种情况下,公司需要通过面对面的访谈获得产品反馈。在本文中,我们提议利用生物鉴别数据,即生理和声音特征,以用户参与讨论讨论的产品相关主题的信息作为访谈的补充。我们评估了我们的方法,在使用Empatica E4手腕带收集其生理数据(即生物回馈)的同时,利用Empatica E4手腕带收集其数据,通过默认的音频调来收集其声音。在这种情况下,公司需要利用面对面的访谈来获得产品反馈。我们的结果显示,通过对生物测定数据监督的机器学习算法来预测用户的参与情况,以及仅以声音为基础的语音特征可以充分有效。在以合成少数群体对培训数据进行预先处理时,在使用远程浏览技术(即生物反馈回回回)时,我们的方法评估方法(即生物定位分析)的改进工作结果可以促进基于生物排序的用户的改进。