We present a knowledge-rich approach to computing semantic relatedness which exploits the joint contribution of different languages. Our approach is based on the lexicon and semantic knowledge of a wide-coverage multilingual knowledge base, which is used to compute semantic graphs in a variety of languages. Complementary information from these graphs is then combined to produce a 'core' graph where disambiguated translations are connected by means of strong semantic relations. We evaluate our approach on standard monolingual and bilingual datasets, and show that: i) we outperform a graph-based approach which does not use multilinguality in a joint way; ii) we achieve uniformly competitive results for both resource-rich and resource-poor lan...
We present an automatic approach to the construction of BabelNet, a very large, wide-coverage multil...
Knowledge graphs and ontologies underpin many natural language processing applications, and to apply...
The intelligent manipulation of symbolic knowledge has been a long-sought goal of AI. However, when ...
gelbukh | @ |gelbukh.com Abstract. We propose a procedure for measuring semantic relatedness of two ...
In this paper, we address the task of calculating mono- and bilingual semantic similarity. We introd...
In this paper we present BabelNet - a very large, wide-coverage multilingual semantic network. The r...
Computing the semantic relatedness between words is a pervasive task in natural language processing ...
In recent years, we have witnessed a steady growth of linguistic information represented and exposed...
We propose a new approach to identifying semantically similar words across languages. The approach i...
Recent years have witnessed a surge in the amount of semantic information published on the Web. Inde...
We present an automatic approach to the construction of BabelNet, a very large, wide-coverage multil...
Thesis (Ph.D.)--University of Washington, 2012Lexical semantics studies the meaning of words, which ...
AbstractWe present an automatic approach to the construction of BabelNet, a very large, wide-coverag...
International audienceIn the present paper, we propose a simple en-dogenous method for enhancing a m...
Large Knowledge Graphs (KGs), e.g., DBpedia or Wikidata, are created with the goal of providing stru...
We present an automatic approach to the construction of BabelNet, a very large, wide-coverage multil...
Knowledge graphs and ontologies underpin many natural language processing applications, and to apply...
The intelligent manipulation of symbolic knowledge has been a long-sought goal of AI. However, when ...
gelbukh | @ |gelbukh.com Abstract. We propose a procedure for measuring semantic relatedness of two ...
In this paper, we address the task of calculating mono- and bilingual semantic similarity. We introd...
In this paper we present BabelNet - a very large, wide-coverage multilingual semantic network. The r...
Computing the semantic relatedness between words is a pervasive task in natural language processing ...
In recent years, we have witnessed a steady growth of linguistic information represented and exposed...
We propose a new approach to identifying semantically similar words across languages. The approach i...
Recent years have witnessed a surge in the amount of semantic information published on the Web. Inde...
We present an automatic approach to the construction of BabelNet, a very large, wide-coverage multil...
Thesis (Ph.D.)--University of Washington, 2012Lexical semantics studies the meaning of words, which ...
AbstractWe present an automatic approach to the construction of BabelNet, a very large, wide-coverag...
International audienceIn the present paper, we propose a simple en-dogenous method for enhancing a m...
Large Knowledge Graphs (KGs), e.g., DBpedia or Wikidata, are created with the goal of providing stru...
We present an automatic approach to the construction of BabelNet, a very large, wide-coverage multil...
Knowledge graphs and ontologies underpin many natural language processing applications, and to apply...
The intelligent manipulation of symbolic knowledge has been a long-sought goal of AI. However, when ...