Distributional semantics allows models of linguistic meaning to be derived from observations of language use in large amounts of text. By modeling the meaning of words in semantic (vector) space on the basis of co-occurrence information, distributional semantics permits a quantitative interpretation of (relative) word meaning in an unsupervised setting, i.e., human annotations are not required. The ability to obtain inexpensive word representations in this manner helps to alleviate the bottleneck of fully supervised approaches to natural language processing, especially since models of distributional semantics are data-driven and hence agnostic to both language and domain. All that is required to obtain distributed word representations is a ...
Distributional semantics is a research area investigating unsupervised data-driven models for quanti...
This thesis is about the problem of compositionality in distributional semantics. Distributional sem...
In this position paper we argue that an adequate semantic model must account for language in use, ta...
The large amounts of clinical data generated by electronic health record systems are an underutilize...
Research into corpus-based semantics has focused on the development of ad hoc models that treat sing...
Research into corpus-based semantics has focused on the development of ad hoc models that treat sing...
The word-space model is a computational model of word meaning that utilizes the distributional patte...
Distributional semantics is built upon the assumption that the context surrounding a given word in t...
The hypothesis that word co-occurrence statistics extracted from text corpora can provide a basis fo...
Distributional semantics is a usage-based model of meaning, based on the assumption that the statis...
Distributional Semantic Models (DSM) are growing in popularity in Computational Linguistics. DSM use...
This paper demonstrates how token-level word space models (a distributional semantic technique that ...
This paper demonstrates how token-level word space models (a distributional semantic technique that ...
Distributional semantic models represent words in a vector space and are competent in various semant...
Language learning systems usually generalize linguistic observations into rules and patterns that ar...
Distributional semantics is a research area investigating unsupervised data-driven models for quanti...
This thesis is about the problem of compositionality in distributional semantics. Distributional sem...
In this position paper we argue that an adequate semantic model must account for language in use, ta...
The large amounts of clinical data generated by electronic health record systems are an underutilize...
Research into corpus-based semantics has focused on the development of ad hoc models that treat sing...
Research into corpus-based semantics has focused on the development of ad hoc models that treat sing...
The word-space model is a computational model of word meaning that utilizes the distributional patte...
Distributional semantics is built upon the assumption that the context surrounding a given word in t...
The hypothesis that word co-occurrence statistics extracted from text corpora can provide a basis fo...
Distributional semantics is a usage-based model of meaning, based on the assumption that the statis...
Distributional Semantic Models (DSM) are growing in popularity in Computational Linguistics. DSM use...
This paper demonstrates how token-level word space models (a distributional semantic technique that ...
This paper demonstrates how token-level word space models (a distributional semantic technique that ...
Distributional semantic models represent words in a vector space and are competent in various semant...
Language learning systems usually generalize linguistic observations into rules and patterns that ar...
Distributional semantics is a research area investigating unsupervised data-driven models for quanti...
This thesis is about the problem of compositionality in distributional semantics. Distributional sem...
In this position paper we argue that an adequate semantic model must account for language in use, ta...