CLAIHCApr 13, 2025

Meta-Evaluating Local LLMs: Rethinking Performance Metrics for Serious Games

arXiv:2504.12333v1h-index: 4
Originality Synthesis-oriented
AI Analysis

It addresses the challenge of subjective correctness in serious games for developers and researchers, but is incremental as it applies existing metrics to new data.

This study investigated the reliability of five small-scale LLMs for evaluating open-ended responses in the serious game En-join, revealing trade-offs in sensitivity, specificity, and overall performance among the models.

The evaluation of open-ended responses in serious games presents a unique challenge, as correctness is often subjective. Large Language Models (LLMs) are increasingly being explored as evaluators in such contexts, yet their accuracy and consistency remain uncertain, particularly for smaller models intended for local execution. This study investigates the reliability of five small-scale LLMs when assessing player responses in \textit{En-join}, a game that simulates decision-making within energy communities. By leveraging traditional binary classification metrics (including accuracy, true positive rate, and true negative rate), we systematically compare these models across different evaluation scenarios. Our results highlight the strengths and limitations of each model, revealing trade-offs between sensitivity, specificity, and overall performance. We demonstrate that while some models excel at identifying correct responses, others struggle with false positives or inconsistent evaluations. The findings highlight the need for context-aware evaluation frameworks and careful model selection when deploying LLMs as evaluators. This work contributes to the broader discourse on the trustworthiness of AI-driven assessment tools, offering insights into how different LLM architectures handle subjective evaluation tasks.

Foundations

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