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Text Mining and Subject Analysis for Fiction; or, Using Machine Learning and Information Extraction to Assign Subject Headings to Dime Novels

机译:小说的文本挖掘和主题分析;

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摘要

This article describes multiple experiments in text mining at Northern Illinois University that were undertaken to improve the efficiency and accuracy of cataloging. It focuses narrowly on subject analysis of dime novels, a format of inexpensive fiction that was popular in the United States between 1860 and 1915. NIU holds more than 55,000 dime novels in its collections, which it is in the process of comprehensively digitizing. Classification, keyword extraction, named-entity recognition, clustering, and topic modeling are discussed as means of assigning subject headings to improve their discoverability by researchers and to increase the productivity of digitization workflows.
机译:本文介绍了北伊利诺伊大学进行的文本挖掘中的多个实验,这些实验旨在提高编录的效率和准确性。它只关注于角钱小说的主题分析,一种廉价的小说形式,在1860至1915年间在美国很流行。NIU拥有超过55,000种角钱小说,并且正处于全面数字化的过程中。讨论了分类,关键字提取,命名实体识别,聚类和主题建模,以此作为分配主题标题的方式,以提高研究人员的发现能力并提高数字化工作流程的生产率。

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