This thesis is about the problem of representing sentential meaning in distributional semantics. Distributional semantics obtains the meanings of words through their usage, based on the hypothesis that words occurring in similar contexts will have similar meanings. In this framework, words are modeled as distributions over contexts and are represented as vectors in high dimensional space. Compositional distributional semantics attempts to extend this approach to higher linguistics structures. Some basic composition models proposed in literature to obtain the meaning of phrases or possibly sentences show promising results in modeling simple phrases. The goal of the thesis is to further extend these composition models to obtain sentence meani...
Modelling compositional meaning for sentences using empirical distributional methods has been a chal...
We provide an overview of the hybrid compositional distributional model of meaning, developed in Coe...
Formal semantics and distributional semantics offer complementary strengths in capturing the meaning...
International audienceMost compositional distributional semantic models represent sentence meaning w...
International audienceMost compositional distributional semantic models represent sentence meaning w...
Most compositional distributional semantic models represent sentence meaning with a single vector. I...
Most compositional distributional semantic models represent sentence meaning with a single vector. I...
This thesis is about the problem of compositionality in distributional semantics. Distributional sem...
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...
This paper proposes two approaches to compositional semantics in distributional semantic spaces. Bo...
This thesis is about the problem of compositionality in distributional semantics. Distributional sem...
The mathematical representation of semantics is a key issue for Natural Language Processing (NLP). A...
Distributional models of semantics have proven themselves invaluable both in cognitive modelling of ...
Modelling compositional meaning for sentences using empirical distributional methods has been a chal...
Modelling compositional meaning for sentences using empirical distributional methods has been a chal...
We provide an overview of the hybrid compositional distributional model of meaning, developed in Coe...
Formal semantics and distributional semantics offer complementary strengths in capturing the meaning...
International audienceMost compositional distributional semantic models represent sentence meaning w...
International audienceMost compositional distributional semantic models represent sentence meaning w...
Most compositional distributional semantic models represent sentence meaning with a single vector. I...
Most compositional distributional semantic models represent sentence meaning with a single vector. I...
This thesis is about the problem of compositionality in distributional semantics. Distributional sem...
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...
This paper proposes two approaches to compositional semantics in distributional semantic spaces. Bo...
This thesis is about the problem of compositionality in distributional semantics. Distributional sem...
The mathematical representation of semantics is a key issue for Natural Language Processing (NLP). A...
Distributional models of semantics have proven themselves invaluable both in cognitive modelling of ...
Modelling compositional meaning for sentences using empirical distributional methods has been a chal...
Modelling compositional meaning for sentences using empirical distributional methods has been a chal...
We provide an overview of the hybrid compositional distributional model of meaning, developed in Coe...
Formal semantics and distributional semantics offer complementary strengths in capturing the meaning...