Mining and Recommending Mobile App Features using Data-driven Analytics
Mobile app development necessitates the extraction of domain-specific, essential, and innovative features, aligning with user needs and market dynamics. Identifying features to provide a competitive edge to the app developers, is a non-trivial task that is often performed manually by product managers. This study addresses the challenge of mining and recommending app features by automatically identifying similar apps corresponding to the description of apps provided by the user. The proposed approach integrates Named Entity Recognition (NER) for feature extraction and BERT (Bidirectional Encoder Representations from Transformers) coupled with Topic Modeling for identifying similar apps. Our top-performing model, utilizing NMF for Topic Modeling with SBERT embeddings, achieves an F1 score of 87.38%.
Tue 29 OctDisplayed time zone: Pacific Time (US & Canada) change
14:15 - 15:00 | |||
14:15 15mTalk | Efficient Code Causes Inefficiency in Compiler Optimizations Student Research Competition Hongyu Chen Nanjing University | ||
14:30 15mTalk | Finding Performance Issues in Rust Projects Student Research Competition Chenhao Cui Fudan University | ||
14:45 15mTalk | Mining and Recommending Mobile App Features using Data-driven Analytics Student Research Competition |