Leveraging Narrative to Generate Movie Script

Yutao Zhu, Ruihua Song, J. Nie, Pan Du, Zhicheng Dou, Jin Zhou
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引用次数: 6

Abstract

Generating a text based on a predefined guideline is an interesting but challenging problem. A series of studies have been carried out in recent years. In dialogue systems, researchers have explored driving a dialogue based on a plan, while in story generation, a storyline has also been proved to be useful. In this article, we address a new task—generating movie scripts based on a predefined narrative. As an early exploration, we study this problem in a “retrieval-based” setting. We propose a model (ScriptWriter-CPre) to select the best response (i.e., next script line) among the candidates that fit the context (i.e., previous script lines) as well as the given narrative. Our model can keep track of what in the narrative has been said and what is to be said. Besides, it can also predict which part of the narrative should be paid more attention to when selecting the next line of script. In our study, we find the narrative plays a different role than the context. Therefore, different mechanisms are designed for deal with them. Due to the unavailability of data for this new application, we construct a new large-scale data collection GraphMovie from a movie website where end-users can upload their narratives freely when watching a movie. This new dataset is made available publicly to facilitate other studies in text generation under the guideline. Experimental results on the dataset show that our proposed approach based on narratives significantly outperforms the baselines that simply use the narrative as a kind of context.
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利用叙事来生成电影脚本
根据预定义的指南生成文本是一个有趣但具有挑战性的问题。近年来进行了一系列的研究。在对话系统中,研究人员探索了基于计划驱动对话,而在故事生成中,故事情节也被证明是有用的。在本文中,我们将讨论一个基于预定义的叙述生成电影脚本的新任务。作为早期的探索,我们在“基于检索”的设置中研究这个问题。我们提出了一个模型(scriptwritter - cpre)来从符合上下文(即之前的脚本行)以及给定叙述的候选中选择最佳响应(即下一个脚本行)。我们的模型可以跟踪叙述中已经说过的和将要说的内容。此外,它还可以预测在选择下一行剧本时,应该更关注哪一部分的叙事。在我们的研究中,我们发现叙事与语境起着不同的作用。因此,设计了不同的机制来处理它们。由于这个新应用程序的数据不可用,我们从一个电影网站构建了一个新的大规模数据集GraphMovie,最终用户可以在观看电影时自由上传他们的叙述。这个新的数据集是公开的,以促进在指南下的文本生成的其他研究。在数据集上的实验结果表明,我们提出的基于叙事的方法明显优于简单地将叙事作为一种上下文的基线。
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