Toward a Knowledge-based Personalised Recommender System for Mobile App Development
September 09, 2019 Β· Declared Dead Β· π Journal of universal computer science (Online)
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Authors
Bilal Abu-Salih, Hamad Alsawalqah, Basima Elshqeirat, Tomayess Issa, Pornpit Wongthongtham
arXiv ID
1909.03733
Category
cs.IR: Information Retrieval
Cross-listed
cs.SE,
cs.SI
Citations
17
Venue
Journal of universal computer science (Online)
Last Checked
4 months ago
Abstract
Over the last few years, the arena of mobile application development has expanded considerably beyond the balance of the worldΕ software markets. With the growing number of mobile software companies, and the mounting sophistication of smartphones\' technology, developers have been building several categories of applications on dissimilar platforms. However, developers confront several challenges through the implementation of mobile application projects. In particular, there is a lack of consolidated systems that are competent to provide developers with personalised services promptly and efficiently. Hence, it is essential to develop tailored systems which can recommend appropriate tools, IDEs, platforms, software components and other correlated artifacts to mobile application developers. This paper proposes a new recommender system framework comprising a fortified set of techniques that are designed to provide mobile app developers with a distinctive platform to browse and search for the personalised artifacts. The proposed system make use of ontology and semantic web technology as well as machine learning techniques. In particular, the new RS framework comprises the following components; (i) domain knowledge inference module: including various semantic web technologies and lightweight ontologies; (ii) profiling and preferencing: a new proposed time-aware multidimensional user modelling; (iii) query expansion: to improve and enhance the retrieved results by semantically augmenting users\' query; and (iv) recommendation and information filtration: to make use of the aforementioned components to provide personalised services to the designated users and to answer a userΕ query with the minimum mismatches.
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