We propose a novel knowledge-based technique for inter-document similarity computation, called Context Semantic Analysis (CSA). Several specialized approaches built on top of specific knowledge base (e.g. Wikipedia) exist in literature, but CSA differs from them because it is designed to be portable to any RDF knowledge base. Our technique relies on a generic RDF knowledge base (e.g. DBpedia and Wikidata) to extract from it a contextual graph and a semantic contextual vector able to represent the context of a document. We show how CSA exploits such Semantic Context Vector to compute inter-document similarity effectively. Moreover, we show how CSA can be effectively applied in the Information Retrieval domain. Experimental results show that ...
This paper presents a method for measuring the semantic similarity of texts using a corpus based mea...
Measuring document similarity is important in order to find documents which are similar to a given q...
© 2015 IEEE. Document similarity analysis is increasingly critical since roughly 80% of big data is ...
We propose a novel knowledge-based technique for inter-document similarity computation, called Conte...
We propose a novel knowledge-based technique for inter-document similarity, called Context Semantic ...
This paper presents a method for measuring the semantic similarity of texts, using corpus-based and ...
This paper presents a method for measuring the semantic similarity of texts, using corpus-based and ...
Computing semantic similarity between any two entities (word, sentences, documents) is crucial tasks...
Text similarity measurement is a fundamental issue in many textual applications such as document clu...
Millions of text data are penetrating into our daily life. These unstructured text data serve as a h...
Rapport interne.In the framework of the Semantic Web, content-based processing of data is considered...
Abstract. Semantic relatedness refers to the degree to which two concepts or words are related. Huma...
In this work we propose Context-based Image Similarity, a scheme for discovering and evaluating imag...
The possibility to query heterogeneous and semantically linked data sources depends on the ability t...
Automatic extraction of semantic information from text and links in Web pages is key to improving th...
This paper presents a method for measuring the semantic similarity of texts using a corpus based mea...
Measuring document similarity is important in order to find documents which are similar to a given q...
© 2015 IEEE. Document similarity analysis is increasingly critical since roughly 80% of big data is ...
We propose a novel knowledge-based technique for inter-document similarity computation, called Conte...
We propose a novel knowledge-based technique for inter-document similarity, called Context Semantic ...
This paper presents a method for measuring the semantic similarity of texts, using corpus-based and ...
This paper presents a method for measuring the semantic similarity of texts, using corpus-based and ...
Computing semantic similarity between any two entities (word, sentences, documents) is crucial tasks...
Text similarity measurement is a fundamental issue in many textual applications such as document clu...
Millions of text data are penetrating into our daily life. These unstructured text data serve as a h...
Rapport interne.In the framework of the Semantic Web, content-based processing of data is considered...
Abstract. Semantic relatedness refers to the degree to which two concepts or words are related. Huma...
In this work we propose Context-based Image Similarity, a scheme for discovering and evaluating imag...
The possibility to query heterogeneous and semantically linked data sources depends on the ability t...
Automatic extraction of semantic information from text and links in Web pages is key to improving th...
This paper presents a method for measuring the semantic similarity of texts using a corpus based mea...
Measuring document similarity is important in order to find documents which are similar to a given q...
© 2015 IEEE. Document similarity analysis is increasingly critical since roughly 80% of big data is ...