International audienceAn important trend in recent works on lexical semantics has been the development of learning methods capable of extracting semantic information from text corpora. The majority of these methods are based on the distributional hypothesis of meaning and acquire semantic information by identifying distributional patterns in texts. In this article, we present a distributional analysis method for extracting nominalization relations from monolingual corpora. The acquisition method makes use of distributional and morphological information to select nominalization candidates. We explain how the learning is performed on a dependency annotated corpus and describe the nominalization results. Furthermore, we show how these results ...
We apply machine learning techniques to classify automatically a set of verbs into lexical semanti...
New York University has produced a dictionary of nominalizations (NOMLEX) whose entries capture the ...
This article investigates the collocational behavior of English modal auxiliaries such as may and mi...
An important trend in recent works on lexical semantics has been the development of learning methods...
This paper presents a simple distributional method for acquiring event-denoting and object-denoting ...
This paper focuses on a system, Wolfie (WOrd Learning From Interpreted Examples), that acquires a se...
Broad-coverage ontologies which represent lexical semantic knowledge are being built for more and mo...
This paper empirically evaluates the performances of different state-of-the-art distributional model...
Verb meanings represent construals of events, lexicalizations of actual happenings in the world: a p...
Distributional models of semantics have become the mainstay of large-scale modelling of word meaning...
Most natural language processing tasks require lexical semantic information. Automated acquisition o...
This paper discusses the interpretation of nominalizations in domain independent wide-coverage text....
Corpus data is often structurally and lexically ambiguous; corpus extraction methodologies thus must...
Nominalisation refers to the process of forming a noun from some other word-class. Nominalsations de...
We report a number of computational experiments in supervised learning whose goal is to automatica...
We apply machine learning techniques to classify automatically a set of verbs into lexical semanti...
New York University has produced a dictionary of nominalizations (NOMLEX) whose entries capture the ...
This article investigates the collocational behavior of English modal auxiliaries such as may and mi...
An important trend in recent works on lexical semantics has been the development of learning methods...
This paper presents a simple distributional method for acquiring event-denoting and object-denoting ...
This paper focuses on a system, Wolfie (WOrd Learning From Interpreted Examples), that acquires a se...
Broad-coverage ontologies which represent lexical semantic knowledge are being built for more and mo...
This paper empirically evaluates the performances of different state-of-the-art distributional model...
Verb meanings represent construals of events, lexicalizations of actual happenings in the world: a p...
Distributional models of semantics have become the mainstay of large-scale modelling of word meaning...
Most natural language processing tasks require lexical semantic information. Automated acquisition o...
This paper discusses the interpretation of nominalizations in domain independent wide-coverage text....
Corpus data is often structurally and lexically ambiguous; corpus extraction methodologies thus must...
Nominalisation refers to the process of forming a noun from some other word-class. Nominalsations de...
We report a number of computational experiments in supervised learning whose goal is to automatica...
We apply machine learning techniques to classify automatically a set of verbs into lexical semanti...
New York University has produced a dictionary of nominalizations (NOMLEX) whose entries capture the ...
This article investigates the collocational behavior of English modal auxiliaries such as may and mi...