Hypernymy is a basic semantic relation in computational linguistics that expresses the “is-a” relation between a generic concept and its specific instances, serving as the backbone in taxonomies and ontologies. Although several NLP tasks related to hypernymy prediction have been extensively addressed, few methods have fully exploited the large number of hypernymy relations in Web-scale taxonomies.In this paper, we introduce the Taxonomy Enhanced Adversarial Learning (TEAL) for hypernymy prediction. We first propose an unsupervised measure U-TEAL to distinguish hypernymy with other semantic relations. It is implemented based on a word embedding projection network distantly trained over a taxonomy. To address supervised hypernymy detection ta...
This paper describes the system submitted by the TALN-UPF team to SEMEVAL Task 17 (Taxonomy Extracti...
International audienceAbstract Patterns have been extensively used to extract hypernym relations fro...
We introduce ExTaSem!, a novel approach for the automatic learning of lexical taxonomies from domain...
The automatic detection of hypernymy relationships represents a challenging problem in NLP. The succ...
We propose a novel algorithm for inducing semantic taxonomies. Previous algorithms for taxonomy indu...
In this paper, we show how distributionally-induced semantic classes can be helpful for extracting h...
Semantic taxonomies are powerful tools that provide structured knowledge to Natural Language Process...
Comunicació presentada a la Conference on Empirical Methods in Natural Language Processing celebrada...
Identifying semantic relations in natural language text is an important component of many knowledge ...
Taxonomy is indispensable in understanding natural language. A variety of large scale, usage-based, ...
International audienceExtracting hypernym relations from text is one of the key steps in the automat...
We present a structured learning approach to inducing hypernym taxonomies using a probabilistic grap...
In this paper, we show how unsupervised sense representations can be used to improve hypernymy extra...
In this paper, we show how unsupervised sense representations can be used to improve hypernymy extra...
Hypernymy relations (those where an hyponym term shares a "isa" relationship with his hypernym) play...
This paper describes the system submitted by the TALN-UPF team to SEMEVAL Task 17 (Taxonomy Extracti...
International audienceAbstract Patterns have been extensively used to extract hypernym relations fro...
We introduce ExTaSem!, a novel approach for the automatic learning of lexical taxonomies from domain...
The automatic detection of hypernymy relationships represents a challenging problem in NLP. The succ...
We propose a novel algorithm for inducing semantic taxonomies. Previous algorithms for taxonomy indu...
In this paper, we show how distributionally-induced semantic classes can be helpful for extracting h...
Semantic taxonomies are powerful tools that provide structured knowledge to Natural Language Process...
Comunicació presentada a la Conference on Empirical Methods in Natural Language Processing celebrada...
Identifying semantic relations in natural language text is an important component of many knowledge ...
Taxonomy is indispensable in understanding natural language. A variety of large scale, usage-based, ...
International audienceExtracting hypernym relations from text is one of the key steps in the automat...
We present a structured learning approach to inducing hypernym taxonomies using a probabilistic grap...
In this paper, we show how unsupervised sense representations can be used to improve hypernymy extra...
In this paper, we show how unsupervised sense representations can be used to improve hypernymy extra...
Hypernymy relations (those where an hyponym term shares a "isa" relationship with his hypernym) play...
This paper describes the system submitted by the TALN-UPF team to SEMEVAL Task 17 (Taxonomy Extracti...
International audienceAbstract Patterns have been extensively used to extract hypernym relations fro...
We introduce ExTaSem!, a novel approach for the automatic learning of lexical taxonomies from domain...