Binary pointwise labels (aka implicit feedback) are heavily leveraged by deep learning based recommendation algorithms nowadays. In this paper we discuss the limited expressiveness of these labels may fail to accommodate varying degrees of user preference, and thus lead to conflicts during model training, which we call annotation bias. To solve this issue, we find the soft-labeling property of pairwise labels could be utilized to alleviate the bias of pointwise labels. To this end, we propose a momentum contrast framework (\method ) that combines pointwise and pairwise learning for recommendation. \method has a three-tower network structure: one user network and two item networks. The two item networks are used for computing pointwise and p...
In a collaborative-filtering recommendation scenario, biases in the data will likely propagate in th...
The recent development of online recommender systems has a focus on collaborative ranking from impli...
AbstractPreference learning is an emerging topic that appears in different guises in the recent lite...
Pairwise learning is a novel technique for personalized recommendation with implicit feedback. Pairw...
Pairwise algorithms are popular for learning recommender systems from implicit feedback. For each us...
The ubiquity of implicit feedback makes them the default choice to build modern recommender systems....
Preference learning (PL) plays an important role in machine learning research and practice. PL works...
Recommendation engine is an integral part in digital business nowadays as abundant user interactions...
This paper exploits self-supervised learning (SSL) to learn more accurate and robust representations...
Most modern recommender systems predict users preferences with two components: user and item embeddi...
In many real-world recommendation tasks the available data consists only of simple interactions betw...
Context and social network information have been introduced to improve recommendation systems. Howev...
Exploiting the selections of social friends and foes can efficiently face the data scarcity of user ...
In recent years, many daily processes such as internet web searching, e-mail filtering, social media...
Traditional approaches to recommender systems have often focused on the collaborative filtering prob...
In a collaborative-filtering recommendation scenario, biases in the data will likely propagate in th...
The recent development of online recommender systems has a focus on collaborative ranking from impli...
AbstractPreference learning is an emerging topic that appears in different guises in the recent lite...
Pairwise learning is a novel technique for personalized recommendation with implicit feedback. Pairw...
Pairwise algorithms are popular for learning recommender systems from implicit feedback. For each us...
The ubiquity of implicit feedback makes them the default choice to build modern recommender systems....
Preference learning (PL) plays an important role in machine learning research and practice. PL works...
Recommendation engine is an integral part in digital business nowadays as abundant user interactions...
This paper exploits self-supervised learning (SSL) to learn more accurate and robust representations...
Most modern recommender systems predict users preferences with two components: user and item embeddi...
In many real-world recommendation tasks the available data consists only of simple interactions betw...
Context and social network information have been introduced to improve recommendation systems. Howev...
Exploiting the selections of social friends and foes can efficiently face the data scarcity of user ...
In recent years, many daily processes such as internet web searching, e-mail filtering, social media...
Traditional approaches to recommender systems have often focused on the collaborative filtering prob...
In a collaborative-filtering recommendation scenario, biases in the data will likely propagate in th...
The recent development of online recommender systems has a focus on collaborative ranking from impli...
AbstractPreference learning is an emerging topic that appears in different guises in the recent lite...