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Inducing Semantic Micro-Clusters from Deep Multi-View Representations of Novels

机译:从深层多视图表示小说中诱导语义微簇

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Automatically understanding the plot of novels is important both for informing literary scholarship and applications such as summarization or recommendation. Various models have addressed this task, but their evaluation has remained largely intrinsic and qualitative. Here, we propose a principled and scalable framework leveraging expert-provided semantic tags (e.g., mystery, pirates) to evaluate plot representations in an extrinsic fashion, assessing their ability to produce locally coherent groupings of novels (micro-clusters) in model space. We present a deep recurrent autoencoder model that learns richly structured multi-view plot representations, and show that they i) yield better micro-clusters than less structured representations; and ii) are mterpretable, and thus useful for further literary analysis or labelling of the emerging micro-clusters.
机译:自动理解小说情节对于告知文学奖学金和概述或建议等申请非常重要。各种模型已经解决了这项任务,但他们的评估仍然很大程度上是内在和定性的。在这里,我们提出了一个原则和可扩展的框架,利用专家提供的语义标签(例如,神秘,海盗)来评估外在时尚的情节表示,评估它们在模型空间中产生局部相干的小说(微簇)的能力。我们介绍了一个深入的经常性AutoEncoder模型,了解丰富的结构化的多视图情节表示,并表明它们i)产生比结构化的表示更高的微簇;并且II)是可批量的,因此可用于进一步的文学分析或标记新出现的微簇。

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