Part 2: Data MiningInternational audienceThis paper describes the design and implementation of a new dynamic Web Recommender System using Hard and Fuzzy K-modes clustering. The system provides recommendations based on user preferences that change in real time taking also into account previous searching and behavior. The recommendation engine is enhanced by the utilization of static preferences which are declared by the user when registering into the system. The proposed system has been validated on a movie dataset and the results indicate successful performance as the system delivers recommended items that are closely related to user interests and preferences
Nowadays, providing tools that eases the interaction of users with websites is a big challenge in e-...
Nowadays, providing tools that eases the interaction of users with websites is a big challenge in e-...
The use of the Internet now has a specific purpose: to find information. Unfortunately, the amount o...
This paper describes the design and implementation of a new dynamic Web Recommender System using Har...
This paper proposes a dynamic Recommender System for the Web, which uses Entropy based Hard and Fuzz...
Analyzing and predicting navigational behavior of Web users can lead to more user friendly and effic...
The World Wide Web is a great source of information, which is nowadays being widely used due to the ...
In this demo paper we present a recommender system, which exploits the Borda social choice voting ru...
In this demo paper we present a recommender system, which exploits the Borda social choice voting ru...
With the increase in demand of items amongst customer enhances the growth in information technology ...
Abstract- Recommendation process plays an important role in many applications as W.W.W. Recommender ...
We propose an online hybrid recommender strategy named content-boosted collaborative filtering with ...
Web personalization aims to provide content and services tailor-made to the needs of individual user...
Recommender systems apply data mining techniques and prediction algorithms to predict users ’ intere...
Nowadays, providing tools that eases the interaction of users with websites is a big challenge in e-...
Nowadays, providing tools that eases the interaction of users with websites is a big challenge in e-...
Nowadays, providing tools that eases the interaction of users with websites is a big challenge in e-...
The use of the Internet now has a specific purpose: to find information. Unfortunately, the amount o...
This paper describes the design and implementation of a new dynamic Web Recommender System using Har...
This paper proposes a dynamic Recommender System for the Web, which uses Entropy based Hard and Fuzz...
Analyzing and predicting navigational behavior of Web users can lead to more user friendly and effic...
The World Wide Web is a great source of information, which is nowadays being widely used due to the ...
In this demo paper we present a recommender system, which exploits the Borda social choice voting ru...
In this demo paper we present a recommender system, which exploits the Borda social choice voting ru...
With the increase in demand of items amongst customer enhances the growth in information technology ...
Abstract- Recommendation process plays an important role in many applications as W.W.W. Recommender ...
We propose an online hybrid recommender strategy named content-boosted collaborative filtering with ...
Web personalization aims to provide content and services tailor-made to the needs of individual user...
Recommender systems apply data mining techniques and prediction algorithms to predict users ’ intere...
Nowadays, providing tools that eases the interaction of users with websites is a big challenge in e-...
Nowadays, providing tools that eases the interaction of users with websites is a big challenge in e-...
Nowadays, providing tools that eases the interaction of users with websites is a big challenge in e-...
The use of the Internet now has a specific purpose: to find information. Unfortunately, the amount o...