A Collaborative Ranking Model with Multiple Location-based Similarities for Venue Suggestion
Mohammad Aliannejadi, Dimitrios Rafailidis, Fabio Crestani

TL;DR
This paper proposes a collaborative ranking model for venue recommendation that integrates multiple venue similarity measures, including location-based ones, to improve recommendation accuracy and address data sparsity issues.
Contribution
It introduces a novel collaborative ranking framework that incorporates multiple venue similarities, enhancing user-venue associations and outperforming existing methods.
Findings
The proposed model outperforms state-of-the-art venue suggestion methods.
Incorporating venue similarities improves recommendation quality.
The model effectively alleviates data sparsity in collaborative ranking.
Abstract
Recommending venues plays a critical rule in satisfying users' needs on location-based social networks. Recent studies have explored the idea of adopting collaborative ranking (CR) for recommendation, combining the idea of learning to rank and collaborative filtering. However, CR suffers from the sparsity problem, mainly because it associates similar users based on exact matching of the venues in their check-in history. Even though research in collaborative filtering has shown that considering auxiliary information such as geographical influence, helps the model to alleviate the sparsity problem, the same direction still needs to be explored in CR. In this work, we present a CR framework that focuses on the top of the ranked list while integrating an arbitrary number of similarity functions between venues as it learns the model's parameters. We further introduce three example similarity…
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