Most recommendation methods employ item-item similarity measures or use ratings data to generate recommendations. These methods use traditional two dimensional models to find inter relationships between alike users and products. This paper proposes a novel recommendation method using the multi-dimensional model, tensor, to group similar users based on common search behaviour, and then finding associations within such groups for making effective inter group recommendations. Web log data is multi-dimensional data. Unlike vector based methods, tensors have the ability to highly correlate and find latent relationships between such similar instances, consisting of users and searches. Non redundant rules from such associations of user-searches ar...
Over the last few years, Flickr has gained massive popularity and groups in Flickr are one of the ma...
Today, the amount and importance of available data on the internet are growing exponentially. These ...
International audienceMany modern recommender systems rely on matrix factorization techniques to pro...
Most recommendation methods employ item-item similarity measures or use ratings data to generate rec...
Handling information overload online, from the user's point of view is a big challenge, especially w...
Existing recommendation systems often recommend products to users by capturing the item-to-item and ...
This is the author’s version of a work that was submitted/accepted for pub-lication in the following...
AbstractOnline shopping has become the buzzword in this information age. Users want to purchase the ...
In a tag-based recommender system, the multi-dimensional correlation should be modeled effectively ...
Recommender systems provide recommendations on variety of personal activities or relevant items of i...
User profiling is the process of constructing user models which represent personal characteristics a...
As a promising strategy dealing with data sparsity issue, cross-domain recommender systems transfer ...
We approach scalability and cold start problems of collaborative recommendation in this paper. An in...
International audienceRecommender systems contribute to the personalization of resources on web site...
The recommender systems are recently becoming more significant in the age of rapid development of th...
Over the last few years, Flickr has gained massive popularity and groups in Flickr are one of the ma...
Today, the amount and importance of available data on the internet are growing exponentially. These ...
International audienceMany modern recommender systems rely on matrix factorization techniques to pro...
Most recommendation methods employ item-item similarity measures or use ratings data to generate rec...
Handling information overload online, from the user's point of view is a big challenge, especially w...
Existing recommendation systems often recommend products to users by capturing the item-to-item and ...
This is the author’s version of a work that was submitted/accepted for pub-lication in the following...
AbstractOnline shopping has become the buzzword in this information age. Users want to purchase the ...
In a tag-based recommender system, the multi-dimensional correlation should be modeled effectively ...
Recommender systems provide recommendations on variety of personal activities or relevant items of i...
User profiling is the process of constructing user models which represent personal characteristics a...
As a promising strategy dealing with data sparsity issue, cross-domain recommender systems transfer ...
We approach scalability and cold start problems of collaborative recommendation in this paper. An in...
International audienceRecommender systems contribute to the personalization of resources on web site...
The recommender systems are recently becoming more significant in the age of rapid development of th...
Over the last few years, Flickr has gained massive popularity and groups in Flickr are one of the ma...
Today, the amount and importance of available data on the internet are growing exponentially. These ...
International audienceMany modern recommender systems rely on matrix factorization techniques to pro...