CLCVJun 26, 2025

Towards Transparent AI: A Survey on Explainable Large Language Models

arXiv:2506.21812v19 citationsh-index: 17
Originality Synthesis-oriented
AI Analysis

It tackles the problem of interpretability for high-stakes domain applications, but as a survey, it is incremental in synthesizing existing knowledge.

This survey addresses the lack of transparency in Large Language Models (LLMs) by comprehensively reviewing explainable AI methods, categorizing them based on transformer architectures and evaluating their applications.

Large Language Models (LLMs) have played a pivotal role in advancing Artificial Intelligence (AI). However, despite their achievements, LLMs often struggle to explain their decision-making processes, making them a 'black box' and presenting a substantial challenge to explainability. This lack of transparency poses a significant obstacle to the adoption of LLMs in high-stakes domain applications, where interpretability is particularly essential. To overcome these limitations, researchers have developed various explainable artificial intelligence (XAI) methods that provide human-interpretable explanations for LLMs. However, a systematic understanding of these methods remains limited. To address this gap, this survey provides a comprehensive review of explainability techniques by categorizing XAI methods based on the underlying transformer architectures of LLMs: encoder-only, decoder-only, and encoder-decoder models. Then these techniques are examined in terms of their evaluation for assessing explainability, and the survey further explores how these explanations are leveraged in practical applications. Finally, it discusses available resources, ongoing research challenges, and future directions, aiming to guide continued efforts toward developing transparent and responsible LLMs.

Foundations

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