Jake Ryland Williams: h-index, Total Citations, and Citation Map
Jake Ryland Williams's h-index is 17 (23 i10-index, 1,928+ total citations across 5+ publications) according to Google Scholar as of May 2026. Jake Ryland Williams is affiliated with Assistant Professor of Information Science, Drexel University.
Jake Ryland Williams is a researcher affiliated with Assistant Professor of Information Science, Drexel University, specializing in statistical physics, natural language processing, social computing. Their work has been cited 1,928 times. This profile visualizes their global influence, highlighting strong citation networks in United States.
Jake Ryland Williams's Citation Metrics
Bibliometric impact based on 5 indexed publications.
- H-Index
- 17
- i10-Index
- 23
- Total Citations
- 1,928
- Citing Countries
- 22
As of May 2026.
Jake Ryland Williams has an h-index of 17 and 1,928 total citations across 5 publications, with research cited by institutions in 22 countries.
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Global Impact Map
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Top Cited Works
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Human language reveals a universal positivity bias
2015550
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Significant Contributions
Auto-detected research lines — a seminal paper and the follow-up work building on it. Review and edit before using in a petition. Each Free PDF opens in a new tab — EB-1A organises this into the structure USCIS applies to Criterion 5 of 8 CFR § 204.5(h)(3)(v); EB-1B re-frames it under § 204.5(i)(3) (outstanding researcher); NIW presents it under prong 2 of Matter of Dhanasar.
The researcher established evidence for a universal positivity bias in human language, a finding that has garnered significant independent scholarly attention.
The researcher developed a natural language processing framework to distinguish automated robotic accounts from organic human users on Twitter, establishing a foundational method for social media automation detection.
The researcher advanced sentiment analysis by proposing continuum-scored words and word shift graphs to interpret large-scale texts, a framework validated by independent scholarly adoption.
Citation trend (last 10 years)Click to expand
Citation Trend (Last 10 Years)
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