MS
Milad Sabouri
2 records found
1
Accurately modeling user preferences is vital not only for improving recommendation performance but also for enhancing transparency in recommender systems. Conventional user-profiling methods—such as averaging item embeddings—often overlook the evolving, nuanced nature of user in
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Beyond Static Calibration
The Impact of User Preference Dynamics on Calibrated Recommendation
Calibration in recommender systems is an important performance criterion that ensures consistency between the distribution of user preference categories and that of recommendations generated by the system. Standard methods for mitigating miscalibration typically assume that user
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