Dynamically-optimized context in recommender systems

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Abstract

Traditional approaches to recommander systems have not taken into account situational information when making recommendations, and this seriously limits the relevance of the results. This paper advocates context-awareness as a promising approach to enhance the performance of recommenders, and introduces a mechanism to realize this approach. We present a framework that separates the contextual concerns from the actual recommendation module, so that contexts can be readily shared across applications. More importantly, we devise a learning algorithm to dynamically identify the optimal set of contexts for a specific recommendation task and user. An extensive series of experiments has validated that our system is indeed able to learn both quickly and accurately. © 2005 ACM.

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APA

Yap, G. E., Tan, A. H., & Pang, H. H. (2005). Dynamically-optimized context in recommender systems. In Proceedings - Sixth International Conference on Mobile Data Management, MDM’05 (pp. 265–272). https://doi.org/10.1145/1071246.1071289

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