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APP Relationship Calculation: An Iterative Process

  • Ming Liu
  • , Chong Wu
  • , Xiang Nan Zhao
  • , Chin Yew Lin
  • , Xiao Long Wang

Research output: Contribution to journalArticlepeer-review

Abstract

Today, plenty of apps are released to enable users to make the best use of their cell phones. Facing the large amount of apps, app retrieval and app recommendation become important, since users can easily use them to acquire their desired apps. To obtain high-quality retrieval and recommending results, it needs to obtain the precise app relationship calculating results. Unfortunately, the recent methods are conducted mostly relying on user's log or app's description, which can only detect whether two apps are downloaded, installed meanwhile or provide similar functions or not. In fact, apps contain many general relationships other than similarity, such as one app needs another app as its tool. These relationships cannot be dug via user's log or app's description. Reviews contain user's viewpoint and judgment to apps, thus they can be used to calculate relationship between apps. To use reviews, this paper proposes an iterative process by combining review similarity and app relationship together. Experimental results demonstrate that via this iterative process, relationship between apps can be calculated exactly. Furthermore, this process is improved in two aspects. One is to obtain excellent results even with weak initialization. The other is to apply matrix product to reduce running time.

Original languageEnglish
Article number7045553
Pages (from-to)2049-2063
Number of pages15
JournalIEEE Transactions on Knowledge and Data Engineering
Volume27
Issue number8
DOIs
StatePublished - 1 Aug 2015

Keywords

  • Relations among complexity measures
  • Similarity measures
  • Text processing

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