Examining user reviews of conversational systems: a case study of Alexa skills

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Authors Soodeh Atefi, Andrew Truelove, Matheus Rheinschmitt, Eduardo Almeida, Iftekhar Ahmed, Amin Alipour arXiv ID 2003.00919 Category cs.SE: Software Engineering Cross-listed cs.HC Citations 6 Venue arXiv.org Last Checked 4 months ago
Abstract
Conversational systems use spoken language to interact with their users. Although conversational systems, such as Amazon Alexa, are becoming common and afford interesting functionalities, there is little known about the issues users of these systems face. In this paper, we study user reviews of more than 2,800 Alexa skills to understand the characteristics of the reviews and issues that are raised in them. Our results suggest that most skills receive less than 50 reviews. Our qualitative study of user reviews using open coding resulted in identifying 16 types of issues in the user reviews. Issues related to the content, integration with online services and devices, error, and regression are top issues raised by the users. Our results also indicate differences in volume and types of complaints by users when compared with more traditional mobile applications. We discuss the implication of our results for practitioners and researchers.
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