In this paper we compare several techniques to automatically feed a graph-based recommender system with features extracted from the Linked Open Data (LOD) cloud. Specifically, we investigated whether the integration of LOD-based features can improve the effectiveness of a graph-based recommender system and to what extent the choice of the features selection technique can influence the behavior of the algorithm by endogenously inducing a higher accuracy or a higher diversity. The experimental evaluation showed a clear correlation between the choice of the feature selection technique and the ability of the algorithm to maximize a specific evaluation metric. Moreover, our algorithm fed with LODbased features was able to overcome several state-...
Recommender Systems (RS) are software tools that use analytic technologies to suggest different item...
It is becoming more common to publish data in a way that accords with the Linked Data principles. In...
In this paper we present ExpLOD, a framework which exploits the information available in the Linked ...
In this paper we compare several techniques to automatically feed a graph-based recommender system w...
Thanks to the recent spread of the Linked Open Data (LOD) initiative, a huge amount of machine-reada...
The ever increasing interest in semantic technologies and the availability of several open knowledge...
The recent spread of Linked Open Data (LOD) fueled the research in the area of Recommender Systems, ...
In this article we propose a hybrid recommendation framework based on classification algorithms as R...
This paper describes how Semantic Web technologies and es-pecially the Linked Open Data (LOD) projec...
The huge amount of interlinked information referring to dif-ferent domains, provided by the Linked O...
In this article we propose a hybrid recommendation framework based on classification algorithms such...
Abstract. The World Wide Web is moving from a Web of hyper-linked documents to a Web of linked data....
This paper provides an overview of the work done in the Linked Open Data-enabled Recommender Systems...
In this article we investigate how the knowledge available in the Linked Open Data cloud (LOD) can b...
Abstract. The ultimate mission of a Recommender System (RS) is to help users discover items they mig...
Recommender Systems (RS) are software tools that use analytic technologies to suggest different item...
It is becoming more common to publish data in a way that accords with the Linked Data principles. In...
In this paper we present ExpLOD, a framework which exploits the information available in the Linked ...
In this paper we compare several techniques to automatically feed a graph-based recommender system w...
Thanks to the recent spread of the Linked Open Data (LOD) initiative, a huge amount of machine-reada...
The ever increasing interest in semantic technologies and the availability of several open knowledge...
The recent spread of Linked Open Data (LOD) fueled the research in the area of Recommender Systems, ...
In this article we propose a hybrid recommendation framework based on classification algorithms as R...
This paper describes how Semantic Web technologies and es-pecially the Linked Open Data (LOD) projec...
The huge amount of interlinked information referring to dif-ferent domains, provided by the Linked O...
In this article we propose a hybrid recommendation framework based on classification algorithms such...
Abstract. The World Wide Web is moving from a Web of hyper-linked documents to a Web of linked data....
This paper provides an overview of the work done in the Linked Open Data-enabled Recommender Systems...
In this article we investigate how the knowledge available in the Linked Open Data cloud (LOD) can b...
Abstract. The ultimate mission of a Recommender System (RS) is to help users discover items they mig...
Recommender Systems (RS) are software tools that use analytic technologies to suggest different item...
It is becoming more common to publish data in a way that accords with the Linked Data principles. In...
In this paper we present ExpLOD, a framework which exploits the information available in the Linked ...