Abstract
Mobile application (App) reviews which are provided by users through different App stores are considered as a rich information source for developers to inform about bugs, new feature requests, performance issues, etc. These feedbacks help developers improve the quality of their apps which in turn will significantly impact the user experience and the App’s overall ratings. Popular Apps receive a high number of user reviews daily which makes their manual analysis a very tedious and time-consuming task. Automating the classification of user reviews will save developers time and help them better prioritize the issues that need to be handled. Since an App review is text data in which a user may report more than one issue, we propose a multi-label text classification model which uses neural language models. These models have shown high performance in various natural language processing problems. Experimental results confirm that neural language models outperform frequency-based methods in the context of App reviews classification. In fact, with RoBERTa, we could achieve a 0.87 average F1-score and a 0.16 hamming loss performances.
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Khlifi, G., Jenhani, I., Messaoud, M.B., Mkaouer, M.W. (2024). Multi-label Classification of Mobile Application User Reviews Using Neural Language Models. In: Bouraoui, Z., Vesic, S. (eds) Symbolic and Quantitative Approaches to Reasoning with Uncertainty. ECSQARU 2023. Lecture Notes in Computer Science(), vol 14294. Springer, Cham. https://doi.org/10.1007/978-3-031-45608-4_31
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DOI: https://doi.org/10.1007/978-3-031-45608-4_31
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