A prevalent practice in recommender systems consists in averaging item embeddings to represent users or higher-level concepts in the same embedding space. This paper investigates the relevance of such a practice. For this purpose, we propose an expected precision score, designed to measure the consistency of an average embedding relative to the items used for its construction. We subsequently analyze the mathematical expression of this score in a theoretical setting with specific assumptions, as well as its empirical behavior on real-world data from music streaming services. Our results emphasize that real-world averages are less consistent for recommendation, which paves the way for future research to better align real-world embeddings wit...
In many commercial systems, the 'best bet' recommendations are shown, but the predicted rating value...
Recommender Systems typically use techniquesfrom collaborative filtering which recommend itemsthat u...
Thanks to their flexibility and scalability, collaborative embedding-based models are widely employe...
Popularity bias is a widespread problem in the field of recommender systems, where popular items ten...
Current methods of evaluating the quality of recommender systems are based on averages of metrics su...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
This paper discusses accuracy in processing ratings of and recommendations for item features. Such ...
Recommender systems serve the purpose of recommending items to users in online environments such as ...
The truncated singular value decomposition is a widely used methodology in music recommendation for ...
We present our solution for the EvalRS DataChallenge. The EvalRS DataChallenge aims to build a more ...
In this study, we investigate how individual users' rating characteristics aect the user-level perfo...
XING is a leading career-oriented social networking site in Europe, which usually recommend job ads ...
Recommender systems learn from historical user-item interactions to identify preferred items for tar...
In this work, we propose a novel recommender system model based on a technology commonly used in nat...
Recommender systems play an essential role in the choices people make in domains such as entertainme...
In many commercial systems, the 'best bet' recommendations are shown, but the predicted rating value...
Recommender Systems typically use techniquesfrom collaborative filtering which recommend itemsthat u...
Thanks to their flexibility and scalability, collaborative embedding-based models are widely employe...
Popularity bias is a widespread problem in the field of recommender systems, where popular items ten...
Current methods of evaluating the quality of recommender systems are based on averages of metrics su...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
This paper discusses accuracy in processing ratings of and recommendations for item features. Such ...
Recommender systems serve the purpose of recommending items to users in online environments such as ...
The truncated singular value decomposition is a widely used methodology in music recommendation for ...
We present our solution for the EvalRS DataChallenge. The EvalRS DataChallenge aims to build a more ...
In this study, we investigate how individual users' rating characteristics aect the user-level perfo...
XING is a leading career-oriented social networking site in Europe, which usually recommend job ads ...
Recommender systems learn from historical user-item interactions to identify preferred items for tar...
In this work, we propose a novel recommender system model based on a technology commonly used in nat...
Recommender systems play an essential role in the choices people make in domains such as entertainme...
In many commercial systems, the 'best bet' recommendations are shown, but the predicted rating value...
Recommender Systems typically use techniquesfrom collaborative filtering which recommend itemsthat u...
Thanks to their flexibility and scalability, collaborative embedding-based models are widely employe...