International audienceVarious NLP problems -- such as the prediction of sentence similarity, entailment, and discourse relations -- are all instances of the same general task: the modeling of semantic relations between a pair of textual elements. A popular model for such problems is to embed sentences into fixed size vectors, and use composition functions (e.g. concatenation or sum) of those vectors as features for the prediction. At the same time, composition of embeddings has been a main focus within the field of Statistical Relational Learning (SRL) whose goal is to predict relations between entities (typically from knowledge base triples). In this article, we show that previous work on relation prediction between texts implicitly uses c...
One of the most remarkable properties of word embeddings is the fact that they capture certain types...
Identifying the relations that exist between words (or entities) is important for various natural la...
Feature representation has been one of the most important factors for the success of machine learnin...
International audiencePerforming link prediction in Knowledge Bases (KBs) with embedding-based model...
Comunicació presentada a la 6th Joint Conference on Lexical and Computational Semantics (*SEM 2017),...
While understanding natural language is easy for humans, it is complex forcomputers. The main reason...
Computational models of verbal analogy and relational similarity judgments can employ different type...
In statistical relational learning, the link prediction problem is key to automatically understand t...
One of the most remarkable properties of word embeddings is the fact that they capture certain types...
This paper studies the use of structural representations for learning relations be-tween pairs of sh...
Given a set of instances of some relation, the relation induction task is to predict which other wor...
The world around us is composed of entities, each having various properties and participating in rel...
A core problem in Machine Learning (ML) is the definition of meaningful representations of input ob...
Methods for representing the meaning of words in vector spaces purely using the information distribu...
Many tasks in Natural Language Processing (NLP) require us to predict a relational structure over e...
One of the most remarkable properties of word embeddings is the fact that they capture certain types...
Identifying the relations that exist between words (or entities) is important for various natural la...
Feature representation has been one of the most important factors for the success of machine learnin...
International audiencePerforming link prediction in Knowledge Bases (KBs) with embedding-based model...
Comunicació presentada a la 6th Joint Conference on Lexical and Computational Semantics (*SEM 2017),...
While understanding natural language is easy for humans, it is complex forcomputers. The main reason...
Computational models of verbal analogy and relational similarity judgments can employ different type...
In statistical relational learning, the link prediction problem is key to automatically understand t...
One of the most remarkable properties of word embeddings is the fact that they capture certain types...
This paper studies the use of structural representations for learning relations be-tween pairs of sh...
Given a set of instances of some relation, the relation induction task is to predict which other wor...
The world around us is composed of entities, each having various properties and participating in rel...
A core problem in Machine Learning (ML) is the definition of meaningful representations of input ob...
Methods for representing the meaning of words in vector spaces purely using the information distribu...
Many tasks in Natural Language Processing (NLP) require us to predict a relational structure over e...
One of the most remarkable properties of word embeddings is the fact that they capture certain types...
Identifying the relations that exist between words (or entities) is important for various natural la...
Feature representation has been one of the most important factors for the success of machine learnin...