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GLARE: A Natural Language Interface for Querying Global Explanations

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NOW LET US Article – GLARE: A Natural Language Interface for Querying Global Explanations

Researchers have introduced GLARE, an LLM-based interactive interface that allows users to query global explanations of image classifiers using natural language. By translating natural language questions into structured SQL queries, GLARE significantly improves the accessibility and usability of Explainable AI (XAI).

Computer Science > Artificial Intelligence

Title:GLARE: A Natural Language Interface for Querying Global Explanations

View PDF HTML (experimental)Abstract:While global explanations are crucial for understanding vision models across datasets, classes, and decision contexts, their complex and monolithic nature often hinders practical exploration. Because users typically seek targeted answers to specific questions rather than static artifacts, we present an LLM-based interactive interface that provides natural language access to global explanations for black-box image classifiers. The system's core LLM acts as a mediator, translating natural language questions into structured SQL queries over local explanation data. This enables flexible aggregation without exposing users to low-level representations. For each query, the interface outputs statistics-augmented natural language responses, supporting local explanations, and intent-aligned visualizations. We evaluate the system on intent interpretation, query mapping accuracy, generalization to novel queries and datasets, and robustness to linguistic errors. Our results demonstrate that LLM-mediated querying substantially improves the accessibility and usability of global explanations for human-centered XAI.

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Source: arXiv cs.AI Recent

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