This paper first shows how part-of-speech tags cen be ambiguous and why it is necessary to disambiguate them. Prototypes which can do this are developed in a limited natural language domain. The representation of syntactic data is discussed. An algorithm to disambiguate tags, using supervised training with a neural net, is presented. The single layer HODYNE net, which takes higher order input, is described and its performance on the processing task examined. Using the simplest text up to 95% of tags can be successfully disambiguated, up to 88% in slightly more complex text. It is shown how altering the language representation and training parameters can affect performance. The results from Hodyne are compared to those obtained from a back p...
Complex networks have been employed to model many real systems and as a modeling tool in a myriad of...
We propose a supervised approach to word sense disambiguation based on neural networks combined with...
Abstract. This paper argues that neural networks are good vehicles for automatic speech recognition ...
In this work, we propose the implementation of a part-of-speech tagging system using recurrent neura...
We propose a unified neural network architecture and learning algorithm that can be applied to vario...
Text corpora which are tagged with part-ofspeech information are useful in many areas of linguistic ...
The aim of this thesis is to explore the viability of artificial neural networks using a purely cont...
Neural networks represent a promising approach to problems, which exact algorithmic solution is unkn...
Since the advent of computers, scientists have tried to use the human languages for communication wi...
Neural networks are one of the most efficient techniques for learning from scarce data. This propert...
In this paper a Neural Network is designed for Part-of-Speech Tagging of Dutch text. Our approach us...
We propose a neural network approach to benefit from the non-linearity of corpus-wide statistics for...
We analyze neural network architectures that yield state of the art results on named entity recognit...
This paper describes a neural-net based isolated word recogniser that has a better performance on a ...
The study and application of general Machine Learning (ML) algorithms to theclassical ambiguity prob...
Complex networks have been employed to model many real systems and as a modeling tool in a myriad of...
We propose a supervised approach to word sense disambiguation based on neural networks combined with...
Abstract. This paper argues that neural networks are good vehicles for automatic speech recognition ...
In this work, we propose the implementation of a part-of-speech tagging system using recurrent neura...
We propose a unified neural network architecture and learning algorithm that can be applied to vario...
Text corpora which are tagged with part-ofspeech information are useful in many areas of linguistic ...
The aim of this thesis is to explore the viability of artificial neural networks using a purely cont...
Neural networks represent a promising approach to problems, which exact algorithmic solution is unkn...
Since the advent of computers, scientists have tried to use the human languages for communication wi...
Neural networks are one of the most efficient techniques for learning from scarce data. This propert...
In this paper a Neural Network is designed for Part-of-Speech Tagging of Dutch text. Our approach us...
We propose a neural network approach to benefit from the non-linearity of corpus-wide statistics for...
We analyze neural network architectures that yield state of the art results on named entity recognit...
This paper describes a neural-net based isolated word recogniser that has a better performance on a ...
The study and application of general Machine Learning (ML) algorithms to theclassical ambiguity prob...
Complex networks have been employed to model many real systems and as a modeling tool in a myriad of...
We propose a supervised approach to word sense disambiguation based on neural networks combined with...
Abstract. This paper argues that neural networks are good vehicles for automatic speech recognition ...