Enabling computer systems to understand human thinking or behaviors has ever been an exciting challenge to computer scientists. In recent years one such a topic, information filtering, emerges to help users find desired information items (e.g.~movies, books, news) from large amount of available data, and has become crucial in many applications, like product recommendation, image retrieval, spam email filtering, news filtering, and web navigation etc.. An information filtering system must be able to understand users' information needs. Existing approaches either infer a user's profile by exploring his/her connections to other users, i.e.~collaborative filtering (CF), or analyzing the content descriptions of liked or disliked examples annota...
grantor: University of TorontoA new approach to 'interactive information filtering' is pr...
This paper was written for the project study “Adaptive Information Filtering” at the Department of C...
In this paper we will present the basic properties of Bayesian network models, and discuss why this ...
Enabling computer systems to understand human thinking or behaviors has ever been an exciting challe...
Recommender Systems apply machine learning and data mining techniques for filtering unseen informati...
The overabundance of information and the related difficulty to discover interesting content has comp...
Information Filtering is concerned with filtering data streams in such a way as to leave only pertin...
The growth in the the number of news articles, blogs, images, and videos available on the Web is mak...
Recommender systems apply machine learning techniques for filtering unseen information and can predi...
Abstract—Recommender Systems apply machine learning and data mining techniques to filter undetected ...
Adaptive information filtering is concerned with filtering information streams in dynamic (changing)...
To conduct efficient information filtering, uncertanties occurring at multiple levels must be manage...
Recommender systems apply machine learning and data mining techniques for filtering unseen informati...
International audienceThe consideration of underlying analysis of user's information need is a key r...
AbstractIn this era of web, we have a huge amount of information overload over internet. To extract ...
grantor: University of TorontoA new approach to 'interactive information filtering' is pr...
This paper was written for the project study “Adaptive Information Filtering” at the Department of C...
In this paper we will present the basic properties of Bayesian network models, and discuss why this ...
Enabling computer systems to understand human thinking or behaviors has ever been an exciting challe...
Recommender Systems apply machine learning and data mining techniques for filtering unseen informati...
The overabundance of information and the related difficulty to discover interesting content has comp...
Information Filtering is concerned with filtering data streams in such a way as to leave only pertin...
The growth in the the number of news articles, blogs, images, and videos available on the Web is mak...
Recommender systems apply machine learning techniques for filtering unseen information and can predi...
Abstract—Recommender Systems apply machine learning and data mining techniques to filter undetected ...
Adaptive information filtering is concerned with filtering information streams in dynamic (changing)...
To conduct efficient information filtering, uncertanties occurring at multiple levels must be manage...
Recommender systems apply machine learning and data mining techniques for filtering unseen informati...
International audienceThe consideration of underlying analysis of user's information need is a key r...
AbstractIn this era of web, we have a huge amount of information overload over internet. To extract ...
grantor: University of TorontoA new approach to 'interactive information filtering' is pr...
This paper was written for the project study “Adaptive Information Filtering” at the Department of C...
In this paper we will present the basic properties of Bayesian network models, and discuss why this ...