AbstractRecommender Systems can greatly enhance the exploitation of large digital libraries; however, in order to achieve good accuracy with collaborative recommenders some domain assumptions must be met, such as having a large number of users sharing similar interests over time. Such assumptions may not hold in digital libraries, where users are structured in relatively small groups of experts whose interests may change in unpredictable ways: this is the case of scientific and technical documents archives. Moreover, when recommending documents, users often expect insights on the recommended content as well as a detailed explanation of why the system has selected it, which cannot be provided by collaborative techniques. In this paper we con...
Recommendation (recommender) systems have played an increasingly important role in both research and...
Digital publishing resources contain a lot of useful and authoritative knowledge. It may be necessar...
The study reported in this paper is an attempt to improve content-based recommendation in CoMeT, a s...
AbstractRecommender Systems can greatly enhance the exploitation of large digital libraries; however...
Recently, collaborative tagging has become more and more popular in the Web2.0 community, since tags...
Recently, collaborative tagging has become more and more popular in the Web2.0 community, since tags...
This paper describes the possible use of advanced content-based recommendation methods in the area o...
Recently, collaborative tagging has become popular in the web2.0 world. Tags can be helpful if used ...
Artificial Intelligence Lab, Department of MIS, University of ArizonaResearch shows that recommendat...
Recently, collaborative tagging has become popular in the web2.0 world. Tags can be helpful if used ...
Abstract. An important aspect of a researcher’s activities is to find relevant and related publicati...
Research paper recommenders emerged over the last decade to ease finding publications relating to re...
<div><p>Research paper recommenders emerged over the last decade to ease finding publications relati...
Abstract- In recent years, recommender systems have received increasing attention in digital librari...
This dataset is accompanying the "Recommender system for science: A basic taxonomy" paper published ...
Recommendation (recommender) systems have played an increasingly important role in both research and...
Digital publishing resources contain a lot of useful and authoritative knowledge. It may be necessar...
The study reported in this paper is an attempt to improve content-based recommendation in CoMeT, a s...
AbstractRecommender Systems can greatly enhance the exploitation of large digital libraries; however...
Recently, collaborative tagging has become more and more popular in the Web2.0 community, since tags...
Recently, collaborative tagging has become more and more popular in the Web2.0 community, since tags...
This paper describes the possible use of advanced content-based recommendation methods in the area o...
Recently, collaborative tagging has become popular in the web2.0 world. Tags can be helpful if used ...
Artificial Intelligence Lab, Department of MIS, University of ArizonaResearch shows that recommendat...
Recently, collaborative tagging has become popular in the web2.0 world. Tags can be helpful if used ...
Abstract. An important aspect of a researcher’s activities is to find relevant and related publicati...
Research paper recommenders emerged over the last decade to ease finding publications relating to re...
<div><p>Research paper recommenders emerged over the last decade to ease finding publications relati...
Abstract- In recent years, recommender systems have received increasing attention in digital librari...
This dataset is accompanying the "Recommender system for science: A basic taxonomy" paper published ...
Recommendation (recommender) systems have played an increasingly important role in both research and...
Digital publishing resources contain a lot of useful and authoritative knowledge. It may be necessar...
The study reported in this paper is an attempt to improve content-based recommendation in CoMeT, a s...