Two Wrongs, No Right: Auditing Social-Desirability Bias in LLM Annotators for Computational Social Science
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Computer Science > Computers and Society
Title:Two Wrongs, No Right: Auditing Social-Desirability Bias in LLM Annotators for Computational Social Science
Abstract:LLM annotators are increasingly used in computational social science (CSS), but it is unclear whether their alignment-shaped errors preserve the empirical conclusions a researcher would report. We audit three open-source 7B instruction-tuned models (Zephyr, Mistral-Instruct, Qwen2.5-Instruct) across six TweetEval tasks under four prompt conditions (72 cells) and find that social-desirability failures do not run in a single direction. Zephyr exhibits leniency bias, systematically under-applying harmful labels (offensive language: false benign rate 0.729, false alarm rate 0.031). Mistral and Qwen exhibit overcorrection, over-applying the same labels (Mistral hate-speech FAR = 0.604). All three models exhibit neutrality bias on abortion stance, underestimating opposition prevalence by 24 to 40 percentage points and inflating the neutral label. None of the four prompting interventions we test (neutral, safety framing, depersonalized, chain-of-thought) corrects these failures across models; safety framing can worsen stance distortion. Strikingly, Zephyr's hate-speech prevalence estimate matches the gold rate exactly while its class-conditional errors are large in both directions, an accidental cancellation that misleads aggregate validation. We translate these patterns into a three-part taxonomy with diagnostic FBR/FAR signatures and a lightweight gold-sample validation protocol. The headline for trustworthy CSS: a model that looks calibrated on aggregate metrics can still flip the substantive empirical conclusion a researcher would report.
| Subjects: | Computers and Society (cs.CY); Computation and Language (cs.CL); Machine Learning (cs.LG) |
| Cite as: | arXiv:2606.12426 [cs.CY] |
| (or arXiv:2606.12426v1 [cs.CY] for this version) | |
| https://doi.org/10.48550/arXiv.2606.12426
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