My Bias Detector Found "Cherry-Picking" in the Answer "No Info"
A frontend engineer developed a bias detection tool called Biassemble, initially intended to identify cognitive biases in personal stories. When tested on a factual narrative about a woman named Anna, the tool incorrectly flagged "cherry-picking" because the user repeatedly answered "no info" to interpretive questions. Subsequent versions of the tool were refined to better handle factual data, explicitly defining what does not constitute evidence of bias and adding confidence gating to prevent unwarranted conclusions. AI
IMPACT Highlights challenges in grounding LLM outputs and the need for careful prompt engineering to avoid misinterpretations of factual data.