Stochastic natural language generation systems that are trained from labelled datasets are often domainspecific in their annotation and in their mapping from semantic input representations to lexical-syntactic outputs. As a result, learnt models fail to generalize across domains, heavily restricting their usability beyond single applications. In this article, we focus on the problem of domain adaptation for natural language generation. We show how linguistic knowledge from a source domain, for which labelled data is available, can be adapted to a target domain by reusing training data across domains. As a key to this, we propose to employ abstract meaning representations as a common semantic representation across domains. We model natural l...
Natural Language Generation plays an important role in the domain of dialogue systems as it determin...
Recent advances in the field of natural language processing were achieved with deep learning models....
One of the main goals of natural language processing (NLP) is to build au- tomated systems that can ...
Stochastic natural language generation systems that are trained from labelled datasets are often dom...
Traditional statistical natural language generation (NLG) systems require substantial hand-engineeri...
In this paper we study the performance and domain scalability of two different Neural Network archit...
Moving from limited-domain natural language generation (NLG) to open domain is difficult because the...
Moving from limited-domain natural language generation (NLG) to open domain is difficult because the...
The current generation of neural network-based natural language processing models excels at learning...
The performance of a machine learning model trained on labeled data of a (source) domain degrades se...
How to properly represent language is a crucial and fundamental problem in Natural Language Processi...
Natural Language Generation plays an important role in the domain of dialogue systems as it determin...
Current approaches that generate text from linked data for complex real-world domains can face probl...
Neural network training has been shown to be advantageous in many natural language processing appli...
Natural Language Generation (NLG) is the task of generating natural language (e.g., English sentenc...
Natural Language Generation plays an important role in the domain of dialogue systems as it determin...
Recent advances in the field of natural language processing were achieved with deep learning models....
One of the main goals of natural language processing (NLP) is to build au- tomated systems that can ...
Stochastic natural language generation systems that are trained from labelled datasets are often dom...
Traditional statistical natural language generation (NLG) systems require substantial hand-engineeri...
In this paper we study the performance and domain scalability of two different Neural Network archit...
Moving from limited-domain natural language generation (NLG) to open domain is difficult because the...
Moving from limited-domain natural language generation (NLG) to open domain is difficult because the...
The current generation of neural network-based natural language processing models excels at learning...
The performance of a machine learning model trained on labeled data of a (source) domain degrades se...
How to properly represent language is a crucial and fundamental problem in Natural Language Processi...
Natural Language Generation plays an important role in the domain of dialogue systems as it determin...
Current approaches that generate text from linked data for complex real-world domains can face probl...
Neural network training has been shown to be advantageous in many natural language processing appli...
Natural Language Generation (NLG) is the task of generating natural language (e.g., English sentenc...
Natural Language Generation plays an important role in the domain of dialogue systems as it determin...
Recent advances in the field of natural language processing were achieved with deep learning models....
One of the main goals of natural language processing (NLP) is to build au- tomated systems that can ...