CAPS: Context Aware Personalized POI Sequence Recommender System
Ramesh Baral, Tao Li, XiaoLong Zhu

TL;DR
This paper introduces CAPS, a novel context-aware RNN-based model for generating personalized, coherent POI sequences tailored to user preferences, addressing limitations of existing single-location recommendation systems.
Contribution
CAPS is the first model to extend RNNs for contextual POI sequence modeling, integrating multiple user constraints and global sequence features.
Findings
CAPS outperforms baseline models on real-world datasets.
Incorporating multiple contexts improves recommendation relevance.
The model effectively captures user preferences and sequence coherence.
Abstract
The revolution of World Wide Web (WWW) and smart-phone technologies have been the key-factor behind remarkable success of social networks. With the ease of availability of check-in data, the location-based social networks (LBSN) (e.g., Facebook1, etc.) have been heavily explored in the past decade for Point-of-Interest (POI) recommendation. Though many POI recommenders have been defined, most of them have focused on recommending a single location or an arbitrary list that is not contextually coherent. It has been cumbersome to rely on such systems when one needs a contextually coherent list of locations, that can be used for various day-to-day activities, for e.g., itinerary planning. This paper proposes a model termed as CAPS (Context-Aware Personalized POI Sequence Recommender System) that generates contextually coherent POI sequences relevant to user preferences. To the best of our…
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Taxonomy
TopicsRecommender Systems and Techniques · Data Management and Algorithms · Video Analysis and Summarization
