This paper empirically evaluates the performances of different state-of-the-art distributional models in a nominal lexical semantic classification task. We consider models that exploit various types of distributional features, which thereby provide different representations of nominal behavior in context. The experiments presented in this work demonstrate the advantages and disadvantages of each model considered. This analysis also considers a combined strategy that we found to be capable of leveraging the bottlenecks of each model, especially when large robust data is not availableThis paper empirically evaluates the performances of different state-of-the-art distributional models in a nominal lexical semantic classification task. We consi...
The overall purpose of this research project is to study and explore the potential and limitations o...
Distributional Semantic Models (DSM) are growing in popularity in Computational Linguistics. DSM use...
In the field of Natural Language Processing, supervised machine learning is commonly used to solve c...
This paper empirically evaluates the performances of different state-of-the-art distributional model...
In recent years, distributional models (DMs) have shown great success in repre-senting lexical seman...
Distributional models of semantics have become the mainstay of large-scale modelling of word meaning...
Distributional semantics is a usage-based model of meaning, based on the assumption that the statis...
A fundamental principle in distributional semantic models is to use similarity in linguistic environ...
Semantic classification of words using distributional features is usually based on the semantic simi...
This article explores the distinction between paradigmatic semantic relations, both from a cognitive...
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...
In distributional semantics, the unsupervised learning approach has been widely used for a large num...
This paper presents the results of a large-scale evaluation study of window-based Distribu-tional Se...
The purpose of this paper is to evaluate whether distributional techniques applied to lexical sets, ...
The overall purpose of this research project is to study and explore the potential and limitations o...
Distributional Semantic Models (DSM) are growing in popularity in Computational Linguistics. DSM use...
In the field of Natural Language Processing, supervised machine learning is commonly used to solve c...
This paper empirically evaluates the performances of different state-of-the-art distributional model...
In recent years, distributional models (DMs) have shown great success in repre-senting lexical seman...
Distributional models of semantics have become the mainstay of large-scale modelling of word meaning...
Distributional semantics is a usage-based model of meaning, based on the assumption that the statis...
A fundamental principle in distributional semantic models is to use similarity in linguistic environ...
Semantic classification of words using distributional features is usually based on the semantic simi...
This article explores the distinction between paradigmatic semantic relations, both from a cognitive...
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...
In distributional semantics, the unsupervised learning approach has been widely used for a large num...
This paper presents the results of a large-scale evaluation study of window-based Distribu-tional Se...
The purpose of this paper is to evaluate whether distributional techniques applied to lexical sets, ...
The overall purpose of this research project is to study and explore the potential and limitations o...
Distributional Semantic Models (DSM) are growing in popularity in Computational Linguistics. DSM use...
In the field of Natural Language Processing, supervised machine learning is commonly used to solve c...