Real-time web (RTW) services such as Twitter allow users to express their opinions and interests, often expressed in the form of short text messages providing abbreviated and highly personalized commentary in real-time. Although this RTW data is far from the structured data (movie ratings, product features, etc.) that is familiar to recommender systems research, it can contain useful consumer reviews on products, services and brands. This paper describes how Twitter-like short-form messages can be leveraged as a source of indexing and retrieval information for product recommendation. In particular, we describe how users and products can be represented from the terms used in their associated reviews. An evaluation performed on four different...
Recommender system (RS) is one of area of machine learning research. Building an accurate and useful...
The use of recommendation systems (RSs) in e-commerce and digital media has attracted a great deal o...
This thesis studies the opportunity to utilize posts from social media in recommender systems. Recom...
Paper presented at the Thirtieth SGAI International Conference on Artificial Intelligence (AI-2010),...
Poster presented at the 4th ACM Conference on Recommender Systems (RecSys 2010), Barcelona, Spain, S...
In the era of online shopping, Online platforms are loaded with online shopping. Nowadays, online sh...
The advent of internet has served as an offspring for the significant growth of online services and ...
Paper presented at the 33rd European Conference on Information Retrieval (ECIR-11), 18-21 April, 201...
Presented at the 20th International World Wide Web Conference, WWW 2011, Hyderabad, India, March 28 ...
The web has become a real-time communication medium, used by a large amount of people, in ever-incre...
Recommender system (RS) is one of area of machine learning research. Building an accurate and useful...
We propose a new methodology for recommending interesting news to users by exploiting the informatio...
We propose a new methodology for recommending interesting news to users by exploiting the informatio...
We propose a new methodology for recommending interesting news to users by exploiting the informatio...
We propose a new methodology for recommending interesting news to users by exploiting the informatio...
Recommender system (RS) is one of area of machine learning research. Building an accurate and useful...
The use of recommendation systems (RSs) in e-commerce and digital media has attracted a great deal o...
This thesis studies the opportunity to utilize posts from social media in recommender systems. Recom...
Paper presented at the Thirtieth SGAI International Conference on Artificial Intelligence (AI-2010),...
Poster presented at the 4th ACM Conference on Recommender Systems (RecSys 2010), Barcelona, Spain, S...
In the era of online shopping, Online platforms are loaded with online shopping. Nowadays, online sh...
The advent of internet has served as an offspring for the significant growth of online services and ...
Paper presented at the 33rd European Conference on Information Retrieval (ECIR-11), 18-21 April, 201...
Presented at the 20th International World Wide Web Conference, WWW 2011, Hyderabad, India, March 28 ...
The web has become a real-time communication medium, used by a large amount of people, in ever-incre...
Recommender system (RS) is one of area of machine learning research. Building an accurate and useful...
We propose a new methodology for recommending interesting news to users by exploiting the informatio...
We propose a new methodology for recommending interesting news to users by exploiting the informatio...
We propose a new methodology for recommending interesting news to users by exploiting the informatio...
We propose a new methodology for recommending interesting news to users by exploiting the informatio...
Recommender system (RS) is one of area of machine learning research. Building an accurate and useful...
The use of recommendation systems (RSs) in e-commerce and digital media has attracted a great deal o...
This thesis studies the opportunity to utilize posts from social media in recommender systems. Recom...