The maintenance of wordnets and lexical knowledge bases typically relies on time-consuming manual effort. In order to minimise this issue, we propose the exploitation of models of distributional semantics, namely word embeddings learned from corpora, in the automatic identification of relation instances missing in a wordnet. Analogy-solving methods are first used for learning a set of relations from analogy tests focused on each relation. Despite their low accuracy, we noted that a portion of the top-given answers are good suggestions of relation instances that could be included in the wordnet. This procedure is applied to the enrichment of OpenWordNet-PT, a public Portuguese wordnet. Relations are learned from data acquired from this resou...
Text and Knowledge Bases are complementary sources of information. Given the success of distributed ...
Abstract Background In the past few years, neural word embeddings have been widely used in text mini...
Attributes of words and relations between two words are central to numerous tasks in Artificial Inte...
The maintenance of wordnets and lexical knwoledge bases typically relies on time-consuming manual ef...
Models of word embeddings are often assessed when solving syntactic and semantic analogies. Among th...
Semantic relations are core to how humans understand and express concepts in the real world using la...
Recent trends suggest that neural-network-inspired word embedding models outperform traditional coun...
We present a novel learning method for word embeddings designed for relation classification. Our wor...
Brazilian Portuguese needs a Wordnet that is open access, downloadable and changeable, so that it ca...
Comunicació presentada a la 6th Joint Conference on Lexical and Computational Semantics (*SEM 2017),...
International audienceWordNet has facilitated important research in natural language processing but ...
This paper describes the process of automatically adding synsets and hypernymy relations to an exist...
This study investigated the use of the lexical database WordNet to solve vocabulary matching quizzes...
In this paper we present a novel resource for studying the semantics of verb relations. The resource...
We present an algorithm for generating referring expressions in open domains. Existing algorithms wo...
Text and Knowledge Bases are complementary sources of information. Given the success of distributed ...
Abstract Background In the past few years, neural word embeddings have been widely used in text mini...
Attributes of words and relations between two words are central to numerous tasks in Artificial Inte...
The maintenance of wordnets and lexical knwoledge bases typically relies on time-consuming manual ef...
Models of word embeddings are often assessed when solving syntactic and semantic analogies. Among th...
Semantic relations are core to how humans understand and express concepts in the real world using la...
Recent trends suggest that neural-network-inspired word embedding models outperform traditional coun...
We present a novel learning method for word embeddings designed for relation classification. Our wor...
Brazilian Portuguese needs a Wordnet that is open access, downloadable and changeable, so that it ca...
Comunicació presentada a la 6th Joint Conference on Lexical and Computational Semantics (*SEM 2017),...
International audienceWordNet has facilitated important research in natural language processing but ...
This paper describes the process of automatically adding synsets and hypernymy relations to an exist...
This study investigated the use of the lexical database WordNet to solve vocabulary matching quizzes...
In this paper we present a novel resource for studying the semantics of verb relations. The resource...
We present an algorithm for generating referring expressions in open domains. Existing algorithms wo...
Text and Knowledge Bases are complementary sources of information. Given the success of distributed ...
Abstract Background In the past few years, neural word embeddings have been widely used in text mini...
Attributes of words and relations between two words are central to numerous tasks in Artificial Inte...