Current Word Sense Disambiguation systems show an extremely poor performance on low fre- quent senses, which is mainly caused by the difference in sense distributions between training and test data. The main focus in tackling this problem has been on acquiring more data or se- lecting a single predominant sense and not necessarily on the meta properties of the data itself. We demonstrate that these properties, such as the volume, provenance, and balancing, play an important role with respect to system performance. In this paper, we describe a set of experi- ments to analyze these meta properties in the framework of a state-of-the-art WSD system when evaluated on the SemEval-2013 English all-words dataset. We show that volume and provenance ...
A critical problem faced by current supervised WSD systems is the lack of manually annotated trainin...
Current word sense disambiguation (WSD) systems based on supervised learning are still limited in th...
There has been a tradition of combining different knowledge sources in Artificial Intelligence resea...
Current Word Sense Disambiguation systems show an extremely poor performance on low frequent senses,...
With state-of-the-art systems having finally attained estimated human performance, Word Sense Disamb...
With state-of-the-art systems having finally attained estimated human performance, Word Sense Disamb...
Supervised word sense disambiguation (WSD) for truly polysemous words (in contrast to homonyms) is d...
In word sense disambiguation (WSD), the heuristic of choosing the most common sense is extremely pow...
In this paper, we evaluate the results of the Antwerp University word sense disambiguation system in...
In this paper, we evaluate the results of the Antwerp University word sense disambiguation system in...
Fine-grained sense distinctions are one of the major obstacles to successful Word Sense Disambiguati...
Distributions of the senses of words are often highly skewed. This fact is exploited by word sense d...
Word Sense Disambiguation (WSD) aims at making explicit the semantics of a word in context by identi...
Word Sense Disambiguation (WSD) is an important area which has an impact on improving the performanc...
A word sense disambiguation (WSD) system trained on one domain and applied to a different domain wil...
A critical problem faced by current supervised WSD systems is the lack of manually annotated trainin...
Current word sense disambiguation (WSD) systems based on supervised learning are still limited in th...
There has been a tradition of combining different knowledge sources in Artificial Intelligence resea...
Current Word Sense Disambiguation systems show an extremely poor performance on low frequent senses,...
With state-of-the-art systems having finally attained estimated human performance, Word Sense Disamb...
With state-of-the-art systems having finally attained estimated human performance, Word Sense Disamb...
Supervised word sense disambiguation (WSD) for truly polysemous words (in contrast to homonyms) is d...
In word sense disambiguation (WSD), the heuristic of choosing the most common sense is extremely pow...
In this paper, we evaluate the results of the Antwerp University word sense disambiguation system in...
In this paper, we evaluate the results of the Antwerp University word sense disambiguation system in...
Fine-grained sense distinctions are one of the major obstacles to successful Word Sense Disambiguati...
Distributions of the senses of words are often highly skewed. This fact is exploited by word sense d...
Word Sense Disambiguation (WSD) aims at making explicit the semantics of a word in context by identi...
Word Sense Disambiguation (WSD) is an important area which has an impact on improving the performanc...
A word sense disambiguation (WSD) system trained on one domain and applied to a different domain wil...
A critical problem faced by current supervised WSD systems is the lack of manually annotated trainin...
Current word sense disambiguation (WSD) systems based on supervised learning are still limited in th...
There has been a tradition of combining different knowledge sources in Artificial Intelligence resea...