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Poster
in
Workshop: CtrlGen: Controllable Generative Modeling in Language and Vision

Controlled Cue Generation for Play Scripts

Alara Dirik · Hilal Dönmez · Pinar Yanardag


Abstract:

In this paper, we use a large-scale play scripts dataset to propose the novel task of theatrical cue generation from dialogues. Using over one million lines of dialogue and cues, we approach the problem of cue generation as a controlled text generation task, and show how cues can be used to enhance the impact of dialogue using a language model conditioned on a dialogue/cue discriminator. In addition, we explore the use of topic keywords and emotions for controlled text generation. Extensive quantitative and qualitative experiments show that language models can be successfully used to generate plausible and attribute-controlled texts in highly specialised domains such as play scripts.

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