This article presents and evaluates a model to automatically derive word association networks from text corpora. Two aspects were evaluated: To what degree can corpus-based word association networks (CANs) approximate human word association networks with respect to (1) their ability to quantitatively predict word associations and (2) their structural network characteristics. Word association networks are the basis of the human mental lexicon. However, extracting such networks from human subjects is laborious, time consuming and thus necessarily limited in relation to the breadth of human vocabulary. Automatic derivation of word associations from text corpora would address these limitations. In both evaluations corpus-based processing provid...
When a user cannot find a word, he may think of semantically related words that could be used into a...
International audienceWhen a user cannot find a word, he may think of semantically related words tha...
© Springer-Verlag Berlin Heidelberg 2016. All rights are reserved. Semantic networks are often used ...
We present computational models capable of under-standing and conveying concepts based on word asso-...
We present a simple model that allows the extraction of se-mantic similarity relations from free ass...
Free word associations are the words people spontaneously come up with in re-sponse to a stimulus wo...
In the new era of information and communication technology, the representation of information is of ...
We investigate asymmetry in corpus-derived and human word associations. Most prior work has studied ...
A number of properties of word associations, generated in a continuous task, were investigated. Firs...
We compared the quality of prediction of word variables based on a Dutch word association and text c...
In this article, we describe the most extensive set of word associations collected to date. The data...
International audienceWe investigate the directed and weighted complex network of free word associat...
Lexical databases following the wordnet paradigm capture information about words, word senses, and t...
Semantic association computation is the process of automatically quantifying the strength of a seman...
Natural Language Processing systems crucially depend on the availability of lexical and conceptual k...
When a user cannot find a word, he may think of semantically related words that could be used into a...
International audienceWhen a user cannot find a word, he may think of semantically related words tha...
© Springer-Verlag Berlin Heidelberg 2016. All rights are reserved. Semantic networks are often used ...
We present computational models capable of under-standing and conveying concepts based on word asso-...
We present a simple model that allows the extraction of se-mantic similarity relations from free ass...
Free word associations are the words people spontaneously come up with in re-sponse to a stimulus wo...
In the new era of information and communication technology, the representation of information is of ...
We investigate asymmetry in corpus-derived and human word associations. Most prior work has studied ...
A number of properties of word associations, generated in a continuous task, were investigated. Firs...
We compared the quality of prediction of word variables based on a Dutch word association and text c...
In this article, we describe the most extensive set of word associations collected to date. The data...
International audienceWe investigate the directed and weighted complex network of free word associat...
Lexical databases following the wordnet paradigm capture information about words, word senses, and t...
Semantic association computation is the process of automatically quantifying the strength of a seman...
Natural Language Processing systems crucially depend on the availability of lexical and conceptual k...
When a user cannot find a word, he may think of semantically related words that could be used into a...
International audienceWhen a user cannot find a word, he may think of semantically related words tha...
© Springer-Verlag Berlin Heidelberg 2016. All rights are reserved. Semantic networks are often used ...