International audienceIn this article, we describe a new approach to distributional semantics. This approach relies on a generative model of sentences with latent variables, which takes the syntax into account by using syntactic dependency trees. Words are then represented as posterior distributions over those latent classes, and the model allows to naturally obtain in-context and out-of-context word representations, which are comparable. We train our model on a large corpus and demonstrate the compositionality capabilities of our approach on different datasets
Most compositional distributional semantic models represent sentence meaning with a single vector. I...
This paper proposes two approaches to compositional semantics in distributional semantic spaces. Bo...
Natural language semantics has recently sought to combine the complementary strengths of formal and ...
International audienceIn this article, we describe a new approach to distributional semantics. This ...
In this article, we describe a new approach to distributional semantics. This approach relies on a g...
Distributional semantics is a usage-based model of meaning, based on the assumption that the statis...
This thesis is about the problem of compositionality in distributional semantics. Distributional sem...
We present a new framework for compositional distributional semantics in which the distributional co...
This thesis is about the problem of compositionality in distributional semantics. Distributional sem...
International audienceOver the last two decades, numerous algorithms have been developed that succes...
We describe a probabilistic framework for acquiring selectional preferences of linguistic predi-cate...
Distributional models of semantics have proven themselves invaluable both in cognitive modelling of ...
This article describes a compositional model based on syntactic dependencies which has been designed...
This thesis is about the problem of representing sentential meaning in distributional semantics. Dis...
Formal semantics and distributional semantics offer complementary strengths in capturing the meaning...
Most compositional distributional semantic models represent sentence meaning with a single vector. I...
This paper proposes two approaches to compositional semantics in distributional semantic spaces. Bo...
Natural language semantics has recently sought to combine the complementary strengths of formal and ...
International audienceIn this article, we describe a new approach to distributional semantics. This ...
In this article, we describe a new approach to distributional semantics. This approach relies on a g...
Distributional semantics is a usage-based model of meaning, based on the assumption that the statis...
This thesis is about the problem of compositionality in distributional semantics. Distributional sem...
We present a new framework for compositional distributional semantics in which the distributional co...
This thesis is about the problem of compositionality in distributional semantics. Distributional sem...
International audienceOver the last two decades, numerous algorithms have been developed that succes...
We describe a probabilistic framework for acquiring selectional preferences of linguistic predi-cate...
Distributional models of semantics have proven themselves invaluable both in cognitive modelling of ...
This article describes a compositional model based on syntactic dependencies which has been designed...
This thesis is about the problem of representing sentential meaning in distributional semantics. Dis...
Formal semantics and distributional semantics offer complementary strengths in capturing the meaning...
Most compositional distributional semantic models represent sentence meaning with a single vector. I...
This paper proposes two approaches to compositional semantics in distributional semantic spaces. Bo...
Natural language semantics has recently sought to combine the complementary strengths of formal and ...