Popularity bias is a widespread problem in the field of recommender systems, where popular items tend to dominate recommendation results. In this work, we propose 'Test Time Embedding Normalization' as a simple yet effective strategy for mitigating popularity bias, which surpasses the performance of the previous mitigation approaches by a significant margin. Our approach utilizes the normalized item embedding during the inference stage to control the influence of embedding magnitude, which is highly correlated with item popularity. Through extensive experiments, we show that our method combined with the sampled softmax loss effectively reduces popularity bias compare to previous approaches for bias mitigation. We further investigate the rel...
Datasets used for the offline evaluation of recommender systems are collected through user interacti...
In recommender systems, leveraging Graph Neural Networks (GNNs) to formulate the bipartite relation ...
As we all know, users and item-providers are two main parties of participants in recommender systems...
Recommender systems learn from historical user-item interactions to identify preferred items for tar...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
In response to the quantity of information available on the Internet, many online service providers ...
Historical interactions leveraged by recommender systems are often non-uniformly distributed across ...
Recommender systems help people find relevant content in a personalized way. One main promise of suc...
In this paper, we attempt to correct a popularity bias, which is the tendency for popular items to b...
A prevalent practice in recommender systems consists in averaging item embeddings to represent users...
Multimodal-aware recommender systems (MRSs) exploit multimodal content (e.g., product images or desc...
Recommender Systems are widely used to personalize the user experience in a diverse set of online ap...
Popularity is often included in experimental evaluation to provide a reference performance for a rec...
What we discover and see online, and consequently our opinions and decisions, are becoming increasin...
In this paper, we present the results of an empirical evaluation investigating how recommendation a...
Datasets used for the offline evaluation of recommender systems are collected through user interacti...
In recommender systems, leveraging Graph Neural Networks (GNNs) to formulate the bipartite relation ...
As we all know, users and item-providers are two main parties of participants in recommender systems...
Recommender systems learn from historical user-item interactions to identify preferred items for tar...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
In response to the quantity of information available on the Internet, many online service providers ...
Historical interactions leveraged by recommender systems are often non-uniformly distributed across ...
Recommender systems help people find relevant content in a personalized way. One main promise of suc...
In this paper, we attempt to correct a popularity bias, which is the tendency for popular items to b...
A prevalent practice in recommender systems consists in averaging item embeddings to represent users...
Multimodal-aware recommender systems (MRSs) exploit multimodal content (e.g., product images or desc...
Recommender Systems are widely used to personalize the user experience in a diverse set of online ap...
Popularity is often included in experimental evaluation to provide a reference performance for a rec...
What we discover and see online, and consequently our opinions and decisions, are becoming increasin...
In this paper, we present the results of an empirical evaluation investigating how recommendation a...
Datasets used for the offline evaluation of recommender systems are collected through user interacti...
In recommender systems, leveraging Graph Neural Networks (GNNs) to formulate the bipartite relation ...
As we all know, users and item-providers are two main parties of participants in recommender systems...