From Labor to Collaboration: A Methodological Experiment Using AI Agents to Augment Research Perspectives in Taiwan's Humanities and Social Sciences
Yi-Chih Huang

TL;DR
This paper introduces a new AI agent-based collaborative research framework tailored for humanities and social sciences, validated through empirical data from Taiwan, emphasizing human-AI roles and operational modes.
Contribution
It proposes a novel, modular AI collaboration workflow for humanities and social sciences, with a taxonomy of three operational modes of human-AI interaction.
Findings
Validated the workflow with Taiwan AEI data
Identified three human-AI operational modes
Highlighted the irreplaceability of human judgment
Abstract
Generative AI is reshaping knowledge work, yet existing research focuses predominantly on software engineering and the natural sciences, with limited methodological exploration for the humanities and social sciences. Positioned as a "methodological experiment," this study proposes an AI Agent-based collaborative research workflow (Agentic Workflow) for humanities and social science research. Taiwan's Claude.ai usage data (N = 7,729 conversations, November 2025) from the Anthropic Economic Index (AEI) serves as the empirical vehicle for validating the feasibility of this methodology. This study operates on two levels: the primary level is the design and validation of a methodological framework - a seven-stage modular workflow grounded in three principles: task modularization, human-AI division of labor, and verifiability, with each stage delineating clear roles for human researchers…
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Taxonomy
TopicsComputational and Text Analysis Methods · Digital Humanities and Scholarship · Language and cultural evolution
