Getting machines to generate text perceived as creative is a long-pursued goal. A growing body of research directs this goal towards augmenting the creative writing abilities of human authors. In this paper, we pursue this objective by analyzing how observing examples of automatically generated text influences writing. In particular, we examine a task referred to as sentence infilling, which involves transforming a list of words into a complete sentence. We emphasize "storiability" as a desirable feature of the resulting sentences, where "storiable" sentences are those that suggest a story a reader would be curious to hear about. Both humans and an automated system (based on a neural language model) performed this sentence infilling task. In one setting, people wrote sentences on their own; in a different setting, people observed the sentences produced by the model while writing their own sentences. Readers then assigned storiability preferences to the resulting sentences in a subsequent evaluation. We find that human-authored sentences were judged as more storiable when authors observed the generated examples, and that storiability increased as authors derived more semantic content from the examples. This result gives evidence of an "inspiration through observation" paradigm for human-computer collaborative writing, through which human writing can be enhanced by text generation models without directly copying their output.
翻译:长期追求的目标。 越来越多的研究将这一目标指向增强人类作者的创作能力。 在本文中,我们通过分析自动生成的文字的写作的观察实例来追求这一目标。 特别是,我们检查了称为句子加满的任务,这涉及到将一个单词列表转换成一个完整的句子。 我们强调“ 禁制”是由此产生的句子的一个可取的特征, 其中“ 禁制” 是那些表示读者会很想知道的故事的句子。 人和一个自动化系统( 以神经语言模型为基础) 都完成了这一句子的填充任务。 在一个设置中,人们自己写了句子; 在不同的场合中,人们在写自己的句子时观察了该模式的句子。 读者随后在一项评估中给由此产生的句子分配了禁制性偏好。 我们发现,当作者观察生成的示例时, 人类授权的句子被评为更具有限制性, 并且随着作者从这些实例中获取更多的语义内容而增加。 这提供了“ 通过协作性模型进行复制, ” 能够直接复制人类的版本。