4
Teaching data analysis with agentic AI for social science students
Notes on the Future of Quantitative Social Science
Preface
1
Reflections on using AI tools to aid in quantitative social science research
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Evaluation rules everything around me
3
The
Science
of Quantitative Social Science in an Age of Artificial Intelligence
4
Teaching data analysis with agentic AI for social science students
5
As AI Lowers the Cost of Research, Adjudication and Attention Will Become the Bottlenecks
6
The Shifting Production Function: AI, Reproducibility, and the Future of Quantitative Social Science
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All Models Are Wrong, But Some Are Trending
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Research Transparency and Collaboration in the Era of Generative AI Requires Open,
Clean
Code
9
Failing Faster, Learning Better: Agentic AI and Empirical Social Science Research
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A relational approach to agentic AI in social science research: Projects, roles, and tasks
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Fault Lines: Inequality and the Future of Quantitative Social Science in the Age of Artificial Intelligence
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My Title
13
My Title
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AI for Me, Not (Yet) for Thee? Desirable Difficulties and Deliberate Friction with LLMs
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AI Allows More Diversity in the Forms of Social Science
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Epistemic Standards and the Next Generation of Scholars
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With Great Powers: A Practical Guide to Agentic AI for Social Science Research
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Agentic AI and the Thawing of Frozen Data in Social Science
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Optimal Editorial Screening Under Cheap Testing
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Curation and Reproducibility in an Artificial Intelligence World: Challenges and Solutions for Scientific Research
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On Benchmarks
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Computational Social Scientists Need to Care About the Competitiveness of the AI Market
References
4
Teaching data analysis with agentic AI for social science students
Gabor Békés,
Central European University
To be submitted 15 May
3
The
Science
of Quantitative Social Science in an Age of Artificial Intelligence
5
As AI Lowers the Cost of Research, Adjudication and Attention Will Become the Bottlenecks