Existing pre-trained large language models have shown unparalleled generative capabilities. However, they are not controllable. In this paper, we propose MEGATRON-CNTRL, a novel framework that uses large-scale language models and adds control to text generation by incorporating an external knowledge base. Our framework consists of a keyword predictor, a knowledge retriever, a contextual knowledge ranker, and a conditional text generator. As we do not have access to ground-truth supervision for the knowledge ranker, we make use of weak supervision from sentence embedding. The empirical results show that our model generates more fluent, consistent, and coherent stories with less repetition and higher diversity compared to prior work on the RO...
Storytelling and narrative are fundamental to human experience, intertwined with our social and cult...
This paper focuses on the mapping of natural language sentences in written stories to a structured k...
Story generation systems rely heavily on their knowledge base in order to come up with stories. Most...
Existing pre-trained large language models have shown unparalleled generative capabilities. However,...
Large transformer-based language models have achieved incredible success at various tasks which requ...
Automated story generation is a popular and well-recognized task in the field of natural language pr...
This paper proposes an end-to-end Natural Language Generation approach to automatically create ficti...
Large language models are powerful tools for story generation, but are difficult to control. Story g...
Large pre-trained language models have repeatedly shown their ability to produce fluent text. Yet ev...
Large pre-trained neural language models (LM) have very powerful text generation capabilities. Howe...
This paper presents StoryDB - a broad multi-language dataset of narratives. StoryDB is a corpus of t...
Large pre-trained language models have shown promising results in a wide array of tasks such as narr...
There has been a recent explosion in applications for dialogue interaction ranging from direction-gi...
Pre-trained language models (PLMs) fail to generate long-form narrative text because they do not con...
In this paper, we study the task of improving the cohesion and coherence of long-form text generated...
Storytelling and narrative are fundamental to human experience, intertwined with our social and cult...
This paper focuses on the mapping of natural language sentences in written stories to a structured k...
Story generation systems rely heavily on their knowledge base in order to come up with stories. Most...
Existing pre-trained large language models have shown unparalleled generative capabilities. However,...
Large transformer-based language models have achieved incredible success at various tasks which requ...
Automated story generation is a popular and well-recognized task in the field of natural language pr...
This paper proposes an end-to-end Natural Language Generation approach to automatically create ficti...
Large language models are powerful tools for story generation, but are difficult to control. Story g...
Large pre-trained language models have repeatedly shown their ability to produce fluent text. Yet ev...
Large pre-trained neural language models (LM) have very powerful text generation capabilities. Howe...
This paper presents StoryDB - a broad multi-language dataset of narratives. StoryDB is a corpus of t...
Large pre-trained language models have shown promising results in a wide array of tasks such as narr...
There has been a recent explosion in applications for dialogue interaction ranging from direction-gi...
Pre-trained language models (PLMs) fail to generate long-form narrative text because they do not con...
In this paper, we study the task of improving the cohesion and coherence of long-form text generated...
Storytelling and narrative are fundamental to human experience, intertwined with our social and cult...
This paper focuses on the mapping of natural language sentences in written stories to a structured k...
Story generation systems rely heavily on their knowledge base in order to come up with stories. Most...