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M.Tech / M.E / PhD Thesis | Computer Science & Engineering | India | Volume 8 Issue 4, April 2019
Recommendation System Based on Behavioral Variability of User
Abstract: In real world web applications content recommendations are the most important thing to get better response to a user. Most of all users have less time span to search content in this busy environment. So they always seek improved result with minimum delay. Optimized content recommendation provides good content delivery. User actions and user feedback play a vital role in recommender systems. User feedback may be implicit user feedback or explicit user ratings on the recommended items. Appropriate user action interpretation is critical for a recommender system. This paper builds an online learning framework for personalized recommendation. The main contribution in this paper is an approach of interpreting users' actions for the online learning to achieve better item relevance estimation.
Keywords: Action interpretation, content optimization, personalization, recommender systems
Edition: Volume 8 Issue 4, April 2019,
Pages: 1080 - 1084
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