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Narrative Hermeneutic Circle: Improving Character Role Identification from Natural Language Text via Feedback Loops

机译:叙事诠释学圈:通过反馈循环改善自然语言文本的角色角色识别

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While most natural language understanding systems rely on a pipeline-based architecture, certain human text interpretation methods are based on a cyclic process between the whole text and its parts: the hermeneutic circle. In the task of automatically identifying characters and their narrative roles, we propose a feedback-loop-based approach where the output of later modules of the pipeline is fed back to earlier ones. We analyze this approach using a corpus of 21 Russian folktales. Initial results show that feeding back high-level narrative information improves the performance of some NLP tasks.
机译:虽然大多数自然语言理解系统依赖于基于管道的架构,但某些人类文本解释方法基于整个文本及其部件之间的循环过程:诠释学圈。在自动识别字符及其叙事角色的任务中,我们提出了一种基于反馈循环的方法,其中稍后的管道模块的输出被反馈给更早的。我们使用21个俄罗斯民间专业人的语料来分析这种方法。初始结果表明,喂回高级叙述信息提高了某些NLP任务的性能。

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