Measuring the semantic similarity and relatedness of words is important for many natural language processing tasks. Although distributional semantic models designed for this task have many different parameters, such as vector similarity measures, weighting schemes and dimensionality reduction techniques, there is no truly comprehensive study simultaneously evaluating these parameters while also analysing the differences in the findings for multiple languages. We would like to address this gap with our systematic study by searching for the best configuration in the creation and comparison of feature vectors in distributional semantic models for English, Spanish and Hungarian separately, and then comparing our findings across these languag...
The Explicit Semantic Analysis (ESA) model based on term cooccurrences in Wikipedia has been regarde...
The Explicit Semantic Analysis (ESA) model based on term cooccurrences in Wikipedia has been regarde...
In distributional semantics, the unsupervised learning approach has been widely used for a large num...
Part 10: Machine Learning - Natural LanguageInternational audienceMeasuring the semantic similarity ...
Distributional Semantic Models (DSM) are growing in popularity in Computational Linguistics. DSM use...
PhDRepresentation of sentences that captures semantics is an essential part of natural language pro...
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...
In distributional semantics words are represented by aggregated context features. The similarity of ...
word2vec and GloVe are the two most successful open-source tools that compute distributed language m...
This article presents a novel bootstrapping approach for improving the quality of feature vector wei...
Distributional models of semantics have become the mainstay of large-scale modelling of word meaning...
Distributional semantic models are strongly dependent on the size and the quality of the reference c...
This paper aims to re-think the role of the word similarity task in distributional semantics researc...
The Explicit Semantic Analysis (ESA) model based on term cooccurrences in Wikipedia has been regarde...
The Explicit Semantic Analysis (ESA) model based on term cooccurrences in Wikipedia has been regarde...
In distributional semantics, the unsupervised learning approach has been widely used for a large num...
Part 10: Machine Learning - Natural LanguageInternational audienceMeasuring the semantic similarity ...
Distributional Semantic Models (DSM) are growing in popularity in Computational Linguistics. DSM use...
PhDRepresentation of sentences that captures semantics is an essential part of natural language pro...
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...
In distributional semantics words are represented by aggregated context features. The similarity of ...
word2vec and GloVe are the two most successful open-source tools that compute distributed language m...
This article presents a novel bootstrapping approach for improving the quality of feature vector wei...
Distributional models of semantics have become the mainstay of large-scale modelling of word meaning...
Distributional semantic models are strongly dependent on the size and the quality of the reference c...
This paper aims to re-think the role of the word similarity task in distributional semantics researc...
The Explicit Semantic Analysis (ESA) model based on term cooccurrences in Wikipedia has been regarde...
The Explicit Semantic Analysis (ESA) model based on term cooccurrences in Wikipedia has been regarde...
In distributional semantics, the unsupervised learning approach has been widely used for a large num...