SPIN Unprocessed July 8, 2026 ai_technology research
The yes-no bias of large language models reflects answer order and wording, not shifts in moral judgment
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arXiv:2607.05552v1 Announce Type: new Abstract: Large language models (LLMs) increasingly issue judgments read as binary verdicts, and a growing literature reports such judgments shifting under logically irrelevant changes of wording - among them an amplified yes-no bias on moral dilemmas, absent in humans. A single framing cannot say what such a shift is: in a yes/no question the word "no" is at once logical verdict, lexical token, and last-printed option. We introduce a psychometric battery th
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