Recommender systems help to reduce information overload and provide customized information access for targeted domains. Such systems take input from users and, based on their needs and preferences, provide personalized advices that help people to filter useful information. Collaborative filtering and content-based filtering are the most widely recommendation techniques adopted to date. The paper presents a new hybrid recommendation technique based on the combination of classic collaborative filtering and user profiles inferred using content-based methods
Abstract: The variety of social networks and virtual communities has created problematic for users o...
In our daily life, time is of the essence. People do not have time to browse through hundreds of tho...
This thesis presents recommender techniques, their strength, weaknesses, and the effectiveness of ma...
Collaborative filtering algorithms predict the preferences of a user for an item by weighting the co...
Collaborative filtering algorithms predict the preferences of a user for an item by weighting the co...
Collaborative and content-based filtering are the recommendation techniques most widely adopted to d...
Collaborative and content-based filtering are the recommendation techniques most widely adopted to d...
Recommender Systems are software agent developed to tackle the problem of information overload by p...
An Electronic Performance Support System (EPSS) introduces challenges on contextualized and personal...
Abstract—Recommender Systems apply machine learning and data mining techniques to filter undetected ...
An Electronic Performance Support System (EPSS) introduces challenges on contextualized and personal...
Recommender systems or recommendation systems are a subset of information filtering system that used...
Most recommender systems use Collaborative Filtering or Content-based methods to predict new items o...
Users send requests to recommender systems for getting suggested products or services. Collaborative...
In our daily life, time is of the essence. People do not have time to browse through hundreds of tho...
Abstract: The variety of social networks and virtual communities has created problematic for users o...
In our daily life, time is of the essence. People do not have time to browse through hundreds of tho...
This thesis presents recommender techniques, their strength, weaknesses, and the effectiveness of ma...
Collaborative filtering algorithms predict the preferences of a user for an item by weighting the co...
Collaborative filtering algorithms predict the preferences of a user for an item by weighting the co...
Collaborative and content-based filtering are the recommendation techniques most widely adopted to d...
Collaborative and content-based filtering are the recommendation techniques most widely adopted to d...
Recommender Systems are software agent developed to tackle the problem of information overload by p...
An Electronic Performance Support System (EPSS) introduces challenges on contextualized and personal...
Abstract—Recommender Systems apply machine learning and data mining techniques to filter undetected ...
An Electronic Performance Support System (EPSS) introduces challenges on contextualized and personal...
Recommender systems or recommendation systems are a subset of information filtering system that used...
Most recommender systems use Collaborative Filtering or Content-based methods to predict new items o...
Users send requests to recommender systems for getting suggested products or services. Collaborative...
In our daily life, time is of the essence. People do not have time to browse through hundreds of tho...
Abstract: The variety of social networks and virtual communities has created problematic for users o...
In our daily life, time is of the essence. People do not have time to browse through hundreds of tho...
This thesis presents recommender techniques, their strength, weaknesses, and the effectiveness of ma...