Publication Date
2006
Abstract
Measurements of the impact and history of research literature provide a useful complement to scientific digital library collections. Bibliometric indicators have been extensively studied, mostly in the context of journals. However, journal-based metrics poorly capture topical distinctions in fast-moving fields, and are increasingly problematic with the rise of open-access publishing. Recent developments in latent topic models have produced promising results for automatic sub-field discovery. The fine-grained, faceted topics produced by such models provide a clearer view of the topical divisions of a body of research literature and the interactions between those divisions. We demonstrate the usefulness of topic models in measuring impact by applying a new phrase-based topic discovery model to a collection of 300,000 Computer Science publications, collected by the Rexa automatic citation indexing system.
Recommended Citation
Mann, Gideon S., "Bibliometric Impact Measures Leveraging Topic Analysis" (2006). Computer Science Department Faculty Publication Series. 102.
Retrieved from https://scholarworks.umass.edu/cs_faculty_pubs/102
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