We propose a new task for assessing machines' skills of understanding fictional characters in narrative stories. The task, TVShowGuess, builds on the scripts of TV series and takes the form of guessing the anonymous main characters based on the backgrounds of the scenes and the dialogues. Our human study supports that this form of task covers comprehension of multiple types of character persona, including understanding characters' personalities, facts and memories of personal experience, which are well aligned with the psychological and literary theories about the theory of mind (ToM) of human beings on understanding fictional characters during reading. We further propose new model architectures to support the contextualized encoding of long scene texts. Experiments show that our proposed approaches significantly outperform baselines, yet still largely lag behind the (nearly perfect) human performance. Our work serves as a first step toward the goal of narrative character comprehension.
翻译:我们提出了评估机器在叙述故事中理解虚构人物技能的新任务。TVShowGuess的任务以电视系列剧的脚本为基础,并以根据场景背景和对话背景猜测匿名主要人物的形式。我们的人类研究支持这种任务形式包括理解多种人格,包括理解人物的个性、事实和个人经验的记忆,这些特征、事实和个人经验与关于人类思想理论的心理和文学理论非常吻合,在阅读过程中理解虚构人物。我们进一步提出了新的模型结构,以支持长场文字的背景化编码。实验表明,我们所提议的方法大大超出了基线,但在很大程度上仍然落后于(近乎完美)人类表现。我们的工作是朝着理解叙述性特征的目标迈出的第一步。