Neural encoder-decoder models for language generation can be trained to predict words directly from linguistic or non-linguistic inputs. When generating with these so-called end-to-end models, however, the NLG system needs an additional decoding procedure that determines the output sequence, given the infinite search space over potential sequences that could be generated with the given vocabulary. This survey paper provides an overview of the different ways of implementing decoding on top of neural network-based generation models. Research into decoding has become a real trend in the area of neural language generation, and numerous recent papers have shown that the choice of decoding method has a considerable impact on the quality and vario...
We have been developing a neural natural language understanding system oriented towards the extracti...
Word discovery is the task of extracting words from un-segmented text. In this paper we examine to w...
Despite rapid advances in machine learning tools, the majority of neural decoding approaches still u...
Zarrieß S, Voigt H, Schüz S. Decoding Methods in Neural Language Generation: A Survey. Information. ...
End-to-end encoder-decoder approaches to data-to-text generation are often black boxes whose predict...
Neural sequence models have been applied with great success to a variety of tasks in natural languag...
Recurrent neural networks (RNNs) are exceptionally good models of distributions over natural languag...
This thesis introduces the concept of an encoder-decoder neural network and develops architectures f...
This thesis introduces the concept of an encoder-decoder neural network and develops architectures f...
2018-08-01Recurrent neural networks (RNN) have been successfully applied to various Natural Language...
Recent advances in deep neural language models combined with the capacity of large scale datasets ha...
These improvements open many possibilities in solving Natural Language Processing downstream tasks. ...
A Language Model (LM) is a helpful component of a variety of Natural Language Processing (NLP) syste...
International audienceEnd-to-end encoder-decoder approaches to data-to-text generation are often bla...
Since the advent of computers, scientists have tried to use the human languages for communication wi...
We have been developing a neural natural language understanding system oriented towards the extracti...
Word discovery is the task of extracting words from un-segmented text. In this paper we examine to w...
Despite rapid advances in machine learning tools, the majority of neural decoding approaches still u...
Zarrieß S, Voigt H, Schüz S. Decoding Methods in Neural Language Generation: A Survey. Information. ...
End-to-end encoder-decoder approaches to data-to-text generation are often black boxes whose predict...
Neural sequence models have been applied with great success to a variety of tasks in natural languag...
Recurrent neural networks (RNNs) are exceptionally good models of distributions over natural languag...
This thesis introduces the concept of an encoder-decoder neural network and develops architectures f...
This thesis introduces the concept of an encoder-decoder neural network and develops architectures f...
2018-08-01Recurrent neural networks (RNN) have been successfully applied to various Natural Language...
Recent advances in deep neural language models combined with the capacity of large scale datasets ha...
These improvements open many possibilities in solving Natural Language Processing downstream tasks. ...
A Language Model (LM) is a helpful component of a variety of Natural Language Processing (NLP) syste...
International audienceEnd-to-end encoder-decoder approaches to data-to-text generation are often bla...
Since the advent of computers, scientists have tried to use the human languages for communication wi...
We have been developing a neural natural language understanding system oriented towards the extracti...
Word discovery is the task of extracting words from un-segmented text. In this paper we examine to w...
Despite rapid advances in machine learning tools, the majority of neural decoding approaches still u...