Over the last two decades, numerous algorithms have been developed that successfully capture something of the semanticsof single words by looking at their distribution in text and comparing these distributions in a vector space model. However, it is not straightforward to construct meaning representations beyond the levelof individual words–i.e. the combination of words into larger units – using dis-tributional methods. Our contribution is twofold. First of all, we carry out a large-scale evaluation, comparing different composition methods within the distributional framework for the cases of both adjective-noun and noun-noun composition, makinguse of a newly developed dataset. Secondly, we propose a novel method focomposition, which gen...
A fundamental principle in distributional semantic models is to use similarity in linguistic environ...
This article describes a compositional model based on syntactic dependencies which has been designed...
Distributional semantic models (DSMs) are often evaluated on artificial similarity datasets containi...
International audienceOver the last two decades, numerous algorithms have been developed that succes...
Distributional models of semantics have proven themselves invaluable both in cognitive modelling of ...
This paper proposes two approaches to compositional semantics in distributional semantic spaces. Bo...
In this work we employed a set of 26 Italian noun-adjective expressions to test compositionality ind...
This thesis is about the problem of compositionality in distributional semantics. Distributional sem...
Distributional models are derived from co- occurrences in a corpus, where only a small proportion of...
Research in distributional semantics has made good progress in capturing individual word meanings us...
This thesis is about the problem of compositionality in distributional semantics. Distributional sem...
International audienceIn this article, we describe a new approach to distributional semantics. This ...
This paper concerns how to apply compositional methods to vectors based on grammatical dependency re...
In this paper, we present a novel method for the computation of compositionality within a distributi...
Comunicació presentada a: Fourth Joint Conference on Lexical and Computational Semantics celebrat de...
A fundamental principle in distributional semantic models is to use similarity in linguistic environ...
This article describes a compositional model based on syntactic dependencies which has been designed...
Distributional semantic models (DSMs) are often evaluated on artificial similarity datasets containi...
International audienceOver the last two decades, numerous algorithms have been developed that succes...
Distributional models of semantics have proven themselves invaluable both in cognitive modelling of ...
This paper proposes two approaches to compositional semantics in distributional semantic spaces. Bo...
In this work we employed a set of 26 Italian noun-adjective expressions to test compositionality ind...
This thesis is about the problem of compositionality in distributional semantics. Distributional sem...
Distributional models are derived from co- occurrences in a corpus, where only a small proportion of...
Research in distributional semantics has made good progress in capturing individual word meanings us...
This thesis is about the problem of compositionality in distributional semantics. Distributional sem...
International audienceIn this article, we describe a new approach to distributional semantics. This ...
This paper concerns how to apply compositional methods to vectors based on grammatical dependency re...
In this paper, we present a novel method for the computation of compositionality within a distributi...
Comunicació presentada a: Fourth Joint Conference on Lexical and Computational Semantics celebrat de...
A fundamental principle in distributional semantic models is to use similarity in linguistic environ...
This article describes a compositional model based on syntactic dependencies which has been designed...
Distributional semantic models (DSMs) are often evaluated on artificial similarity datasets containi...