CLAILGAPMar 17, 2025

Reliable and Efficient Amortized Model-based Evaluation

arXiv:2503.13335v118 citationsh-index: 39ICML
Originality Incremental advance
AI Analysis

This work addresses the problem of costly and unreliable evaluations for language model developers and users, offering an incremental improvement over existing subset-based methods.

The paper tackles the high cost and unreliability of evaluating language models by using a model to predict question difficulty from content, enabling reliable measurement at lower cost and improving efficiency through adaptive testing with a question generator. Experiments on 22 benchmarks and 172 LMs show this approach is more reliable and efficient than current methods.

Comprehensive evaluations of language models (LM) during both development and deployment phases are necessary because these models possess numerous capabilities (e.g., mathematical reasoning, legal support, or medical diagnostic) as well as safety risks (e.g., racial bias, toxicity, or misinformation). The average score across a wide range of benchmarks provides a signal that helps guide the use of these LMs in practice. Currently, holistic evaluations are costly due to the large volume of benchmark questions, making frequent evaluations impractical. A popular attempt to lower the cost is to compute the average score on a subset of the benchmark. This approach, unfortunately, often renders an unreliable measure of LM performance because the average score is often confounded with the difficulty of the questions in the benchmark subset. Item response theory (IRT) was designed to address this challenge, providing a reliable measurement by careful controlling for question difficulty. Unfortunately, question difficulty is expensive to estimate. Facing this challenge, we train a model that predicts question difficulty from its content, enabling a reliable measurement at a fraction of the cost. In addition, we leverage this difficulty predictor to further improve the evaluation efficiency through training a question generator given a difficulty level. This question generator is essential in adaptive testing, where, instead of using a random subset of the benchmark questions, informative questions are adaptively chosen based on the current estimation of LLM performance. Experiments on 22 common natural language benchmarks and 172 LMs show that this approach is more reliable and efficient compared to current common practice.

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