2020
DOI: 10.3390/e22111310
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How to Utilize My App Reviews? A Novel Topics Extraction Machine Learning Schema for Strategic Business Purposes

Abstract: Acquiring knowledge about users’ opinion and what they say regarding specific features within an app, constitutes a solid steppingstone for understanding their needs and concerns. App review utilization helps project management teams to identify threads and opportunities for app software maintenance, optimization and strategic marketing purposes. Nevertheless, app user review classification for identifying valuable gems of information for app software improvement, is a complex and multidimensional issue. It re… Show more

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Cited by 7 publications
(1 citation statement)
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References 36 publications
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“…A classifier with a high false positive or false negative rate means that the classifier is misclassifying the samples. Few optimization techniques are used on the evaluation side [118], such as finding the product of precision and using F1 to find the misclassification. In [119], deep learning models and machine learning models were mixed.…”
Section: Misclassificationmentioning
confidence: 99%
“…A classifier with a high false positive or false negative rate means that the classifier is misclassifying the samples. Few optimization techniques are used on the evaluation side [118], such as finding the product of precision and using F1 to find the misclassification. In [119], deep learning models and machine learning models were mixed.…”
Section: Misclassificationmentioning
confidence: 99%