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Structural Variation Analysis (Chen)

Structural variation analysis (SVA), developed by Chaomei Chen in 2012, is a predictive bibliometric method that estimates the transformative potential of a newly published paper from how much it perturbs the existing structure of a field's literature. Building on the idea that scientific breakthroughs typically recombine previously disconnected bodies of knowledge, SVA represents a field as a baseline co-citation network and then measures the structural change a new paper introduces by adding the novel links implied by its reference list. Papers that forge boundary-spanning connections — bridging clusters that were formerly separate — are hypothesized to be more likely to attract future citations. Chen operationalized this with metrics such as the modularity-change rate, cluster linkage, and centrality divergence, and showed that they help predict a paper's eventual citation impact, giving the field an early, structural signal of potentially high-impact work.

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出典

  1. Chen, C. (2012). Predictive effects of structural variation on citation counts. Journal of the American Society for Information Science and Technology, 63(3), 431-449. DOI: 10.1002/asi.21694

このページの引用方法

ScholarGate. (2026, June 23). Structural Variation Analysis (SVA): Predicting Transformative Potential from Boundary-Spanning. ScholarGate. https://scholargate.app/ja/bibliometrics/structural-variation-analysis

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ScholarGateStructural Variation Analysis (Chen) (Structural Variation Analysis (SVA): Predicting Transformative Potential from Boundary-Spanning). 2026-06-24に以下より取得 https://scholargate.app/ja/bibliometrics/structural-variation-analysis · データセット: https://doi.org/10.5281/zenodo.20539026