AI RESEARCH

An Agentic Evaluation Architecture for Historical Bias Detection in Educational Textbooks

arXiv CS.CL

ArXi:2604.07883v1 Announce Type: cross History textbooks often contain implicit biases, nationalist framing, and selective omissions that are difficult to audit at scale. We propose an agentic evaluation architecture comprising a multimodal screening agent, a heterogeneous jury of five evaluative agents, and a meta-agent for verdict synthesis and human escalation. A central contribution is a Source Attribution Protocol that distinguishes textbook narrative from quoted historical sources, preventing the misattribution that causes systematic false positives in single-model evaluators.