Neural Natural Language Generation (NLG) systems are well known for their unreliability. To overcome this issue, we propose a data augmentation approach which allows us to restrict the output of a network and guarantee reliability. While this restriction means generation will be less diverse than if randomly sampled, we include experiments that demonstrate the tendency of existing neural generation approaches to produce dull and repetitive text, and we argue that reliability is more important than diversity for this task. The system trained using this approach scored 100% in semantic accuracy on the E2E NLG Challenge dataset, the same as a template system
Neural language models often fail to generate diverse and informative texts, limiting their applicab...
Natural Language Generation (NLG) is the field of study that aims to endow agents with the ability t...
Natural Language Generation (NLG) is the task of generating natural language (e.g., English sentenc...
Neural Natural Language Generation (NLG) systems are well known for their unreliability. To overcome...
Neural Natural Language Generation (NLG) systems are well known for their unreliability. To overcome...
Following some recent propositions to handle natural language generation in spoken dialogue systems ...
Natural Language Generation plays an important role in the domain of dialogue systems as it determin...
Following some recent propositions to handle natural language generation in spoken dialogue systems ...
Following some recent propositions to handle natural language generation in spoken dialogue systems ...
Natural Language Generation plays an important role in the domain of dialogue systems as it determin...
Natural Language Generation plays an important role in the domain of dialogue systems as it determin...
Natural Language Generation plays an important role in the domain of dialogue systems as it determin...
Conversational AI has seen tremendous progress in recent years, achieving near-human or even surpass...
Conversational AI has seen tremendous progress in recent years, achieving near-human or even surpass...
Natural Language Generation plays an important role in the domain of dialogue systems as it determin...
Neural language models often fail to generate diverse and informative texts, limiting their applicab...
Natural Language Generation (NLG) is the field of study that aims to endow agents with the ability t...
Natural Language Generation (NLG) is the task of generating natural language (e.g., English sentenc...
Neural Natural Language Generation (NLG) systems are well known for their unreliability. To overcome...
Neural Natural Language Generation (NLG) systems are well known for their unreliability. To overcome...
Following some recent propositions to handle natural language generation in spoken dialogue systems ...
Natural Language Generation plays an important role in the domain of dialogue systems as it determin...
Following some recent propositions to handle natural language generation in spoken dialogue systems ...
Following some recent propositions to handle natural language generation in spoken dialogue systems ...
Natural Language Generation plays an important role in the domain of dialogue systems as it determin...
Natural Language Generation plays an important role in the domain of dialogue systems as it determin...
Natural Language Generation plays an important role in the domain of dialogue systems as it determin...
Conversational AI has seen tremendous progress in recent years, achieving near-human or even surpass...
Conversational AI has seen tremendous progress in recent years, achieving near-human or even surpass...
Natural Language Generation plays an important role in the domain of dialogue systems as it determin...
Neural language models often fail to generate diverse and informative texts, limiting their applicab...
Natural Language Generation (NLG) is the field of study that aims to endow agents with the ability t...
Natural Language Generation (NLG) is the task of generating natural language (e.g., English sentenc...