3260 papers • 126 benchmarks • 313 datasets
Context-aware recommender systems (CARS) generate more relevant recommendations by adapting them to the specific contextual situation of the user. This article explores how contextual information can be used to create more intelligent and useful recommender systems.
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This work analyzes how information propagates among different information sources in a gradient-descent learning paradigm, and proposes an extendable version of the JRL framework (eJRL), which is rigorously extendable to new information sources to avoid model re-training in practice.
A unique context-aware system that takes the similarity of a product to the user context into account to rank products more effectively is designed in the FARFETCH Fashion Recommendation challenge.
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