自动讲故事的引导神经语言生成

Prithviraj Ammanabrolu, Ethan Tien, W. Cheung, Z. Luo, William Ma, Lara J. Martin, Mark O. Riedl
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引用次数: 21

摘要

基于神经网络的自动故事情节生成方法试图学习如何从自然语言情节摘要的语料库中生成小说情节。先前的研究表明,被称为事件的句子的语义抽象改进了神经图的生成,并允许人们将问题分解为:(1)事件序列的生成(事件到事件)和(2)将这些事件转换为自然语言句子(事件到句子)。然而,典型的事件到句子的神经语言生成方法可以忽略事件细节,产生语法正确但语义不相关的句子。我们提出了一个基于集成的模型,该模型在事件的引导下生成自然语言。我们的方法优于基线序列到序列模型。此外,我们提供了一个完整的端到端自动化故事生成系统的结果,演示了我们的模型如何与为事件到事件问题设计的现有系统一起工作。
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Guided Neural Language Generation for Automated Storytelling
Neural network based approaches to automated story plot generation attempt to learn how to generate novel plots from a corpus of natural language plot summaries. Prior work has shown that a semantic abstraction of sentences called events improves neural plot generation and and allows one to decompose the problem into: (1) the generation of a sequence of events (event-to-event) and (2) the transformation of these events into natural language sentences (event-to-sentence). However, typical neural language generation approaches to event-to-sentence can ignore the event details and produce grammatically-correct but semantically-unrelated sentences. We present an ensemble-based model that generates natural language guided by events. Our method outperforms the baseline sequence-to-sequence model. Additionally, we provide results for a full end-to-end automated story generation system, demonstrating how our model works with existing systems designed for the event-to-event problem.
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