Journal article

A Location-Query-Browse Graph for Contextual Recommendation

Y Ren, M Tomko, FD Salim, J Chan, CLA Clarke, M Sanderson

IEEE Transactions on Knowledge and Data Engineering | IEEE COMPUTER SOC | Published : 2018

Abstract

Traditionally, recommender systems modelled the physical and cyber contextual influence on people's moving, querying, and browsing behaviors in isolation. Yet, searching, querying, and moving behaviors are intricately linked, especially indoors. Here, we introduce a tripartite location-query-browse graph (LQB) for nuanced contextual recommendations. The LQB graph consists of three kinds of nodes: locations, queries, and Web domains. Directed connections only between heterogeneous nodes represent the contextual influences, while connections of homogeneous nodes are inferred from the contextual influences of the other nodes. This tripartite LQB graph is more reliable than any monopartite or bi..

View full abstract

University of Melbourne Researchers