Tim Nelson Source Confirmed
Affiliation confirmed via AI analysis of OpenAlex, ORCID, and web sources.
Researcher
John Brown University
faculty
Research Areas
Links
Is this your profile? Verify and claim your profile
Biography and Research Information
OverviewAI-generated summary
Tim Nelson, a faculty member at John Brown University, focuses on software testing, debugging techniques, and software-defined networks. His research also encompasses formal methods in verification, software engineering, network security, and intrusion detection. Nelson's recent publication record extends to 2025, indicating ongoing activity in these fields.
Metrics
- h-index: 12
- Publications: 42
- Citations: 420
Selected Publications
- Accepted Artifact for Little Tricky Logic: Misconceptions in the Understanding of LTL (2025) DOI
- Conceptual Mutation Testing for Student Programming Misconceptions (2023) DOI
- Applying Cognitive Principles to Model-Finding Output: The Positive Value of Negative Information (artifact) (2022) DOI
- Artifact for Little Tricky Logic: Misconceptions in the Understanding of LTL (2022) DOI
- Accepted Artifact for Little Tricky Logic: Misconceptions in the Understanding of LTL (2022) DOI
- Artifact for Little Tricky Logic: Misconceptions in the Understanding of LTL (2022) DOI
- Artifact for Little Tricky Logic: Misconceptions in the Understanding of LTL (2022) DOI
- Applying Cognitive Principles to Model-Finding Output: The Positive Value of Negative Information (artifact) (2022) DOI
- Accepted Artifact for Little Tricky Logic: Misconceptions in the Understanding of LTL (2022) DOI
- Making Hay from Wheats: A Classsourcing Method to Identify Misconceptions (2022) DOI
- Little Tricky Logic: Misconceptions in the Understanding of LTL (2022) DOI
- Applying cognitive principles to model-finding output: the positive value of negative information (2022) DOI
- Automated, Targeted Testing of Property-Based Testing Predicates (2021) DOI
- Automated, Targeted Testing of Property-Based Testing Predicates (2021) DOI
Collaborators
Researchers in the database who share publications
Similar Researchers
Based on overlapping research topics