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Honey, I Shrunk the Language Model: Impact of Knowledge Distillation Methods on Performance and Explainability (2504.16056v1)

Published 22 Apr 2025 in cs.CL

Abstract: AI has increasingly influenced modern society, recently in particular through significant advancements in LLMs. However, high computational and storage demands of LLMs still limit their deployment in resource-constrained environments. Knowledge distillation addresses this challenge by training a small student model from a larger teacher model. Previous research has introduced several distillation methods for both generating training data and for training the student model. Despite their relevance, the effects of state-of-the-art distillation methods on model performance and explainability have not been thoroughly investigated and compared. In this work, we enlarge the set of available methods by applying critique-revision prompting to distillation for data generation and by synthesizing existing methods for training. For these methods, we provide a systematic comparison based on the widely used Commonsense Question-Answering (CQA) dataset. While we measure performance via student model accuracy, we employ a human-grounded study to evaluate explainability. We contribute new distillation methods and their comparison in terms of both performance and explainability. This should further advance the distillation of small LLMs and, thus, contribute to broader applicability and faster diffusion of LLM technology.

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