ABSTRACT Recommender systems suggest to users items that they might like (e.g., news articles, songs, movies) and, in doing so, they help users deal with information overload and enjoy a personalized experience. One of the main problems of these systems is the item cold-start, i.e., when a new item is introduced in the system and no past information is available, then no effective recommendations can be produced. The item cold-start is a very common problem in practice: modern online platforms have hundreds of new items published every day. To address this problem, we propose to learn Local Collective Embeddings: a matrix factorization that exploits items' properties and past user preferences while enforcing the manifold structure exhi...
Recommending new items is an important, yet challenging problem due to the lack of preference histor...
We propose a novel hybrid recommendation algorithm for addressing the well-known cold-start problem ...
Based on the user-tag-object tripartite graphs, we propose a recommendation algorithm that makes use...
Recommender systems are widely used in online platforms for easy exploration of personalized content...
<div><p>As one of the major challenges, cold-start problem plagues nearly all recommender systems. I...
Embedding & MLP has become a paradigm for modern large-scale recommendation system. However, this pa...
As one of the major challenges, cold-start problem plagues nearly all recommender systems. In partic...
A recommender system (RS) aims to provide personalized recommendations to users for specific items (...
Recommender Systems (RSs) are powerful and popular tools for e-commerce. To build their recommendati...
Recommender systems play a crucial role in helping users discover information that aligns with their...
Collaborative filtering (CF) approaches, which provide recommendations based on ratings or purchase ...
Recommender systems suggest items of interest to users based on their preferences. These preferences...
We examine the cold-start recommendation task in an online retail setting for users who have not yet...
Systems for automatically recommending items (e.g., movies, products, or information) to users are b...
The primary objective of recommender systems is to help users select their desired items, where a ke...
Recommending new items is an important, yet challenging problem due to the lack of preference histor...
We propose a novel hybrid recommendation algorithm for addressing the well-known cold-start problem ...
Based on the user-tag-object tripartite graphs, we propose a recommendation algorithm that makes use...
Recommender systems are widely used in online platforms for easy exploration of personalized content...
<div><p>As one of the major challenges, cold-start problem plagues nearly all recommender systems. I...
Embedding & MLP has become a paradigm for modern large-scale recommendation system. However, this pa...
As one of the major challenges, cold-start problem plagues nearly all recommender systems. In partic...
A recommender system (RS) aims to provide personalized recommendations to users for specific items (...
Recommender Systems (RSs) are powerful and popular tools for e-commerce. To build their recommendati...
Recommender systems play a crucial role in helping users discover information that aligns with their...
Collaborative filtering (CF) approaches, which provide recommendations based on ratings or purchase ...
Recommender systems suggest items of interest to users based on their preferences. These preferences...
We examine the cold-start recommendation task in an online retail setting for users who have not yet...
Systems for automatically recommending items (e.g., movies, products, or information) to users are b...
The primary objective of recommender systems is to help users select their desired items, where a ke...
Recommending new items is an important, yet challenging problem due to the lack of preference histor...
We propose a novel hybrid recommendation algorithm for addressing the well-known cold-start problem ...
Based on the user-tag-object tripartite graphs, we propose a recommendation algorithm that makes use...