Recommending new features from mobile app descriptions
The rapidly evolving mobile applications (apps) have brought great demand for developers to identify new features by inspecting the descriptions of similar apps and acquire missing features for their apps. Unfortunately, due to the huge number of apps, this manual process is time-consuming and unsca...
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sg-smu-ink.sis_research-54922019-12-19T06:32:06Z Recommending new features from mobile app descriptions JIANG, He ZHANG, Jingxuan LI, Xiaochen REN, Zhilei LO, David WU, Xindong LUO, Zhongxuan The rapidly evolving mobile applications (apps) have brought great demand for developers to identify new features by inspecting the descriptions of similar apps and acquire missing features for their apps. Unfortunately, due to the huge number of apps, this manual process is time-consuming and unscalable. To help developers identify new features, we propose a new approach named SAFER. In this study, we first develop a tool to automatically extract features from app descriptions. Then, given an app, we leverage the topic model to identify its similar apps based on the extracted features and API names of apps. Finally, we design a feature recommendation algorithm to aggregate and recommend the features of identified similar apps to the specified app. Evaluated over a collection of 533 annotated features from 100 apps, SAFER achieves a Hit@15 score of up to 78.68% and outperforms the baseline approach KNN+ by 17.23% on average. In addition, we also compare SAFER against a typical technique of recommending features from user reviews, i.e., CLAP. Experimental results reveal that SAFER is superior to CLAP by 23.54% in terms of Hit@15. 2019-02-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/4489 info:doi/10.1145/3344158 https://ink.library.smu.edu.sg/context/sis_research/article/5492/viewcontent/a22_jiang__1_.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Mobile applications feature recommender system domain analysis topic model Software Engineering |
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Mobile applications feature recommender system domain analysis topic model Software Engineering JIANG, He ZHANG, Jingxuan LI, Xiaochen REN, Zhilei LO, David WU, Xindong LUO, Zhongxuan Recommending new features from mobile app descriptions |
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The rapidly evolving mobile applications (apps) have brought great demand for developers to identify new features by inspecting the descriptions of similar apps and acquire missing features for their apps. Unfortunately, due to the huge number of apps, this manual process is time-consuming and unscalable. To help developers identify new features, we propose a new approach named SAFER. In this study, we first develop a tool to automatically extract features from app descriptions. Then, given an app, we leverage the topic model to identify its similar apps based on the extracted features and API names of apps. Finally, we design a feature recommendation algorithm to aggregate and recommend the features of identified similar apps to the specified app. Evaluated over a collection of 533 annotated features from 100 apps, SAFER achieves a Hit@15 score of up to 78.68% and outperforms the baseline approach KNN+ by 17.23% on average. In addition, we also compare SAFER against a typical technique of recommending features from user reviews, i.e., CLAP. Experimental results reveal that SAFER is superior to CLAP by 23.54% in terms of Hit@15. |
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JIANG, He ZHANG, Jingxuan LI, Xiaochen REN, Zhilei LO, David WU, Xindong LUO, Zhongxuan |
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JIANG, He ZHANG, Jingxuan LI, Xiaochen REN, Zhilei LO, David WU, Xindong LUO, Zhongxuan |
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JIANG, He |
title |
Recommending new features from mobile app descriptions |
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Recommending new features from mobile app descriptions |
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Recommending new features from mobile app descriptions |
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Recommending new features from mobile app descriptions |
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Recommending new features from mobile app descriptions |
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recommending new features from mobile app descriptions |
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Institutional Knowledge at Singapore Management University |
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2019 |
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https://ink.library.smu.edu.sg/sis_research/4489 https://ink.library.smu.edu.sg/context/sis_research/article/5492/viewcontent/a22_jiang__1_.pdf |
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