Automating Chapter-Level Classification for Electronic Theses and Dissertations
Bipasha Banerjee, William A. Ingram, Edward A. Fox

TL;DR
This paper presents an AI-driven method to automatically classify chapters in electronic theses and dissertations, enhancing their discoverability, accessibility, and interdisciplinary research potential.
Contribution
It introduces a novel machine learning approach for chapter-level classification of ETDs, enriching metadata and improving navigation and research utility.
Findings
Achieved high accuracy in chapter classification
Enhanced metadata improves search and retrieval
Facilitates interdisciplinary research and discovery
Abstract
Traditional archival practices for describing electronic theses and dissertations (ETDs) rely on broad, high-level metadata schemes that fail to capture the depth, complexity, and interdisciplinary nature of these long scholarly works. The lack of detailed, chapter-level content descriptions impedes researchers' ability to locate specific sections or themes, thereby reducing discoverability and overall accessibility. By providing chapter-level metadata information, we improve the effectiveness of ETDs as research resources. This makes it easier for scholars to navigate them efficiently and extract valuable insights. The absence of such metadata further obstructs interdisciplinary research by obscuring connections across fields, hindering new academic discoveries and collaboration. In this paper, we propose a machine learning and AI-driven solution to automatically categorize ETD…
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Taxonomy
TopicsBiomedical Text Mining and Ontologies · Semantic Web and Ontologies
