2020
DOI: 10.1007/978-3-030-65310-1_27
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Detecting User Significant Intention via Sentiment-Preference Correlation Analysis for Continuous App Improvement

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Cited by 3 publications
(7 citation statements)
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“…Clustering is thus widely used as an exploratory analysis technique to infer topics commonly discussed by users (Pagano and Maalej 2013;Guzman and Maalej 2014;Liu et al 2018) and aggregate reviews containing semantically related information (Chen et al 2014;Palomba et al 2017;Zhou et al 2020). Clustering can be used for grouping reviews that request the same feature (Peng et al 2016;Di Sorbo et al 2016), report similar problems (Martin et al 2015;Villarroel et al 2016;Gao et al 2018b;Williams et al 2020), or discuss a similar characteristic of the app (Vu et al 2016;Chen et al 2019;Xiao et al 2020). The generated clusters might help software engineers synthesize information from a group of reviews referring to the same topics rather than examining each review individually (Fu et al 2013;Hadi and Fard 2020).…”
Section: Clusteringmentioning
confidence: 99%
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“…Clustering is thus widely used as an exploratory analysis technique to infer topics commonly discussed by users (Pagano and Maalej 2013;Guzman and Maalej 2014;Liu et al 2018) and aggregate reviews containing semantically related information (Chen et al 2014;Palomba et al 2017;Zhou et al 2020). Clustering can be used for grouping reviews that request the same feature (Peng et al 2016;Di Sorbo et al 2016), report similar problems (Martin et al 2015;Villarroel et al 2016;Gao et al 2018b;Williams et al 2020), or discuss a similar characteristic of the app (Vu et al 2016;Chen et al 2019;Xiao et al 2020). The generated clusters might help software engineers synthesize information from a group of reviews referring to the same topics rather than examining each review individually (Fu et al 2013;Hadi and Fard 2020).…”
Section: Clusteringmentioning
confidence: 99%
“…For example, Di proposed summarizing thousands of app reviews by an interactive report that suggest to software engineers what maintenance tasks need to be performed (e.g., bug fixing or feature enhancement) with respect to specific topics discussed in reviews (e.g., UI improvements). Other review summarization techniques give developers a quick overview about users' perception specific to core features of their apps (Iacob and Harrison 2013;Guzman and Maalej 2014;Xiao et al 2020), software qualities (Ciurumelea et al 2018), and/or main users' concerns (Iacob et al 2013a;Iacob et al 2016;Ciurumelea et al 2017;Tao et al 2020). With the addition of statistics e.g., the number of reviews discussing each topic or requesting specific changes, such a summary can help developers to prioritize their work by focusing on the most important modifications (Ciurumelea et al 2017).…”
Section: Summarizationmentioning
confidence: 99%
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