The cold-start problem involves recommendation of content to new users of a system, for whom there is no historical preference information available. This proves a challenge for collaborative filtering algorithms that inherently rely on such information. Recent work has shown that social metadata, such as users' friend groups and page likes, can strongly mitigate the problem. However, such approaches either lack an interpretation as optimising some principled objective, involve iterative non-convex optimisation with limited scalability, or require tuning several hyperparameters. In this paper, we first show how three popular cold-start models are special cases of a linear content-based model, with implicit constraints on the weights. Leve...
The number of "hits" has been widely regarded as the lifeblood of many web systems, e.g., e-commerce...
Recommender Systems (RSs) are powerful and popular tools for e-commerce. To build their recommendati...
International audience—In recent years, there has been an explosion of social recommender systems (S...
The primary objective of recommender systems is to help users select their desired items, where a ke...
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...
A recommender system (RS) aims to provide personalized recommendations to users for specific items (...
Based on the user-tag-object tripartite graphs, we propose a recommendation algorithm that makes use...
Recommending items to new or “cold-start ” users is a chal-lenging problem for recommender systems. ...
For tackling the well known cold-start user problem in collaborative filtering recommender systems, ...
© Springer International Publishing AG 2016. Making recommendations for new users is a challenging t...
Methods and Metrics for Cold-Start Recommendations We have developed a method for recommending items...
The popularity of Social networks, user demands, market realities, and technology developments are d...
The practice and method of collaboratively creating and managing tags to annotate and categorize con...
Cold start is the most frequent issue faced by recommender systems (RS). The reason for its happenin...
The number of "hits" has been widely regarded as the lifeblood of many web systems, e.g., e-commerce...
Recommender Systems (RSs) are powerful and popular tools for e-commerce. To build their recommendati...
International audience—In recent years, there has been an explosion of social recommender systems (S...
The primary objective of recommender systems is to help users select their desired items, where a ke...
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...
A recommender system (RS) aims to provide personalized recommendations to users for specific items (...
Based on the user-tag-object tripartite graphs, we propose a recommendation algorithm that makes use...
Recommending items to new or “cold-start ” users is a chal-lenging problem for recommender systems. ...
For tackling the well known cold-start user problem in collaborative filtering recommender systems, ...
© Springer International Publishing AG 2016. Making recommendations for new users is a challenging t...
Methods and Metrics for Cold-Start Recommendations We have developed a method for recommending items...
The popularity of Social networks, user demands, market realities, and technology developments are d...
The practice and method of collaboratively creating and managing tags to annotate and categorize con...
Cold start is the most frequent issue faced by recommender systems (RS). The reason for its happenin...
The number of "hits" has been widely regarded as the lifeblood of many web systems, e.g., e-commerce...
Recommender Systems (RSs) are powerful and popular tools for e-commerce. To build their recommendati...
International audience—In recent years, there has been an explosion of social recommender systems (S...