This paper demonstrates how token-level word space models (a distributional semantic technique that was originally developed in statistical natural language processing) can be developed into a heuristic tool to support lexicological and lexicographical analyses of large amounts of corpus data. The paper provides a non-technical introduction to the statistical methods and illustrates with a case study analysis of the Dutch polysemous noun 'monitor ' how token-level word space models in combination with visualisation techniques allow human analysts to identify semantic patterns in an unstructured set of attestations. Additionally, we show how the interactive features of the visualisation make it possible to explore the effect of dif...
International audienceThis volume seeks to advance and popularise the use of corpus-driven quantitat...
Distributional semantics allows models of linguistic meaning to be derived from observations of lang...
This volume seeks to advance and popularise the use of corpus-driven quantitative methods in the stu...
This paper demonstrates how token-level word space models (a distributional semantic technique that ...
Word Space Models (WSMs) are a statistical-computational technique to compare the collocational beha...
Type-based distributional semantics as embodied in vector space models has proven to be a successful...
Distributional models of semantics have become the mainstay of large-scale modelling of word meaning...
The word-space model is a computational model of word meaning that utilizes the distributional patte...
In statistical NLP, Semantic Vector Spaces (SVS) are the standard technique for the automatic modeli...
International audienceThis study addresses the methodological problem of result falsification in Cog...
Conceptual space can be carved up linguistically in different ways. The mapping between a set of rel...
Conceptual space can be carved up linguistically in different ways. The mapping between a set of rel...
Investigating the different uses of a word in texts and corpora is a research activity in several fi...
International audienceThis volume seeks to advance and popularise the use of corpus-driven quantitat...
Statistical language models used in large-vocabulary speech recognition must properly encapsulate th...
International audienceThis volume seeks to advance and popularise the use of corpus-driven quantitat...
Distributional semantics allows models of linguistic meaning to be derived from observations of lang...
This volume seeks to advance and popularise the use of corpus-driven quantitative methods in the stu...
This paper demonstrates how token-level word space models (a distributional semantic technique that ...
Word Space Models (WSMs) are a statistical-computational technique to compare the collocational beha...
Type-based distributional semantics as embodied in vector space models has proven to be a successful...
Distributional models of semantics have become the mainstay of large-scale modelling of word meaning...
The word-space model is a computational model of word meaning that utilizes the distributional patte...
In statistical NLP, Semantic Vector Spaces (SVS) are the standard technique for the automatic modeli...
International audienceThis study addresses the methodological problem of result falsification in Cog...
Conceptual space can be carved up linguistically in different ways. The mapping between a set of rel...
Conceptual space can be carved up linguistically in different ways. The mapping between a set of rel...
Investigating the different uses of a word in texts and corpora is a research activity in several fi...
International audienceThis volume seeks to advance and popularise the use of corpus-driven quantitat...
Statistical language models used in large-vocabulary speech recognition must properly encapsulate th...
International audienceThis volume seeks to advance and popularise the use of corpus-driven quantitat...
Distributional semantics allows models of linguistic meaning to be derived from observations of lang...
This volume seeks to advance and popularise the use of corpus-driven quantitative methods in the stu...