In this paper we show that an unsupervised method for ranking word senses automatically can be used to identify infrequently occurring senses. We demonstrate this using a ranking of noun senses derived from the BNC and evaluating on the sense-tagged text available in both SemCor and the SENSEVAL-2 English all-words task. We show that the method does well at identifying senses that do not occur in a corpus, and that those that are erroneously filtered but do occur typically have a lower frequency than the other senses. This method should be useful for word sense disambiguation systems, allowing effort to be concentrated on more frequent senses; it may also be useful for other tasks such as lexical acquisition. Whilst the results on balanced ...
Distributions of the senses of words are often highly skewed. This fact is exploited by word sense d...
We describe an algorithm that combines lexical information (from WordNet 1.7) with Web di-rectories ...
The granularity of word senses in current general purpose sense inventories is often too �ne-grained...
Abstract. We propose a statistical method for identifying words that have a novel sense in one corpu...
Unsupervised word sense disambiguation (WSD) methods are an attractive approach to all-words WSD due...
The unavailability of very large corpora with semantically disambiguated words is a major limitation...
This paper presents an unsupervised algorithm which automatically discovers word senses from text. T...
In word sense disambiguation (WSD), the heuristic of choosing the most common sense is extremely pow...
An important problem in Natural Language Processing is identifying the correct sense of a word in a ...
There has been a great deal of recent research into word sense disambiguation, particularly since th...
Distributions of the senses of words are often highly skewed. This fact is exploited by word sense d...
In word sense disambiguation (WSD), the heuristic of choosing the most common sense is extremely pow...
In word sense disambiguation (WSD), the heuristic of choosing the most common sense is extremely pow...
An important problem in Natural Language Pro-cessing is identifying thecorrect sense of a word in a ...
Information retrieval using word senses is emerging as a good research challenge on semantic informa...
Distributions of the senses of words are often highly skewed. This fact is exploited by word sense d...
We describe an algorithm that combines lexical information (from WordNet 1.7) with Web di-rectories ...
The granularity of word senses in current general purpose sense inventories is often too �ne-grained...
Abstract. We propose a statistical method for identifying words that have a novel sense in one corpu...
Unsupervised word sense disambiguation (WSD) methods are an attractive approach to all-words WSD due...
The unavailability of very large corpora with semantically disambiguated words is a major limitation...
This paper presents an unsupervised algorithm which automatically discovers word senses from text. T...
In word sense disambiguation (WSD), the heuristic of choosing the most common sense is extremely pow...
An important problem in Natural Language Processing is identifying the correct sense of a word in a ...
There has been a great deal of recent research into word sense disambiguation, particularly since th...
Distributions of the senses of words are often highly skewed. This fact is exploited by word sense d...
In word sense disambiguation (WSD), the heuristic of choosing the most common sense is extremely pow...
In word sense disambiguation (WSD), the heuristic of choosing the most common sense is extremely pow...
An important problem in Natural Language Pro-cessing is identifying thecorrect sense of a word in a ...
Information retrieval using word senses is emerging as a good research challenge on semantic informa...
Distributions of the senses of words are often highly skewed. This fact is exploited by word sense d...
We describe an algorithm that combines lexical information (from WordNet 1.7) with Web di-rectories ...
The granularity of word senses in current general purpose sense inventories is often too �ne-grained...