Research into corpus-based semantics has focused on the development of ad hoc models that treat single tasks, or sets of closely related tasks, as unrelated challenges to be tackled by extracting different kinds of distributional information from the corpus. As an alternative to this “one task, one model” approach, the Distributional Memory framework extracts distributional information once and for all from the corpus, in the form of a set of weighted word-link-word tuples arranged into a third-order tensor. Different matrices are then generated from the tensor, and their rows and columns constitute natural spaces to deal with different semantic problems. In this way, the same distributional information can be shared across tasks such as mo...
A fundamental principle in distributional semantic models is to use similarity in linguistic environ...
Distributional models of semantics have proven themselves invaluable both in cognitive modelling of ...
Distributional semantics is a research area investigating unsupervised data-driven models for quanti...
Research into corpus-based semantics has focused on the development of ad hoc models that treat sing...
Distributional semantics is built upon the assumption that the context surrounding a given word in t...
Distributional semantics is built upon the assumption that the context surrounding a given word in t...
In distributional semantics, the unsupervised learning approach has been widely used for a large num...
Distributional Semantic Models (DSM) are growing in popularity in Computational Linguistics. DSM use...
The hypothesis that word co-occurrence statistics extracted from text corpora can provide a basis fo...
The distributional pattern of words in language forms the basis of linguistic distributional knowled...
Distributional semantic models represent words in a vector space and are competent in various semant...
Distributional Semantic Models have emerged as a strong theoretical and practical approach to model ...
In recent years, distributional models (DMs) have shown great success in repre-senting lexical seman...
A fundamental principle in distributional semantic models is to use similarity in linguistic environ...
In distributional semantics, the unsupervised learning approach has been widely used for a large num...
A fundamental principle in distributional semantic models is to use similarity in linguistic environ...
Distributional models of semantics have proven themselves invaluable both in cognitive modelling of ...
Distributional semantics is a research area investigating unsupervised data-driven models for quanti...
Research into corpus-based semantics has focused on the development of ad hoc models that treat sing...
Distributional semantics is built upon the assumption that the context surrounding a given word in t...
Distributional semantics is built upon the assumption that the context surrounding a given word in t...
In distributional semantics, the unsupervised learning approach has been widely used for a large num...
Distributional Semantic Models (DSM) are growing in popularity in Computational Linguistics. DSM use...
The hypothesis that word co-occurrence statistics extracted from text corpora can provide a basis fo...
The distributional pattern of words in language forms the basis of linguistic distributional knowled...
Distributional semantic models represent words in a vector space and are competent in various semant...
Distributional Semantic Models have emerged as a strong theoretical and practical approach to model ...
In recent years, distributional models (DMs) have shown great success in repre-senting lexical seman...
A fundamental principle in distributional semantic models is to use similarity in linguistic environ...
In distributional semantics, the unsupervised learning approach has been widely used for a large num...
A fundamental principle in distributional semantic models is to use similarity in linguistic environ...
Distributional models of semantics have proven themselves invaluable both in cognitive modelling of ...
Distributional semantics is a research area investigating unsupervised data-driven models for quanti...