Using models as judges in evaluations can introduce subtle biases such as preferring outputs from the same families, showing a position bias towards first answers, favoring long and verbose responses, and struggling with evaluating models in a continuous range. Large models like GPT-4 may not be suitable due to being closed source and lacking reproducibility. Small models like Prometheus or JudgeLM are recommended for providing rankings rather than detailed assessments. Models trained in isolation with high-quality data are preferred over models trained with other outputs to avoid sounding similar. Relying solely on model evaluations can lead to homogenization of models, highlighting the importance of human evaluation.

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