CLDLSep 12, 2013

Mapping Mutable Genres in Structurally Complex Volumes

arXiv:1309.3323v231 citations
Originality Incremental advance
AI Analysis

This work addresses the need for scholars to mine digital libraries by genre, offering a domain-specific solution for humanities research.

The paper tackled the problem of genre classification in large digital libraries by addressing challenges of historical change and internal heterogeneity, achieving extraction of 32,209 fiction volumes from a collection of 469,200 volumes and tracing changes in narrative points of view.

To mine large digital libraries in humanistically meaningful ways, scholars need to divide them by genre. This is a task that classification algorithms are well suited to assist, but they need adjustment to address the specific challenges of this domain. Digital libraries pose two problems of scale not usually found in the article datasets used to test these algorithms. 1) Because libraries span several centuries, the genres being identified may change gradually across the time axis. 2) Because volumes are much longer than articles, they tend to be internally heterogeneous, and the classification task needs to begin with segmentation. We describe a multi-layered solution that trains hidden Markov models to segment volumes, and uses ensembles of overlapping classifiers to address historical change. We test this approach on a collection of 469,200 volumes drawn from HathiTrust Digital Library. To demonstrate the humanistic value of these methods, we extract 32,209 volumes of fiction from the digital library, and trace the changing proportions of first- and third-person narration in the corpus. We note that narrative points of view seem to have strong associations with particular themes and genres.

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