Navigating the Maze of Explainable AI: A Systematic Approach to Evaluating Methods and Metrics
Lukas Klein, Carsten T. L\"uth, Udo Schlegel, Till J. Bungert,, Mennatallah El-Assady, Paul F. J\"ager

TL;DR
This paper introduces LATEC, a comprehensive benchmark evaluating 17 XAI methods across 20 metrics and various design parameters, revealing conflicts among metrics and highlighting Expected Gradients as a top performer.
Contribution
The paper presents LATEC, a large-scale, systematic benchmark for evaluating XAI methods considering multiple metrics and parameters, addressing current evaluation limitations.
Findings
High conflict among evaluation metrics leading to unreliable rankings
Expected Gradients identified as a top-performing XAI method
LATEC dataset released publicly for future research
Abstract
Explainable AI (XAI) is a rapidly growing domain with a myriad of proposed methods as well as metrics aiming to evaluate their efficacy. However, current studies are often of limited scope, examining only a handful of XAI methods and ignoring underlying design parameters for performance, such as the model architecture or the nature of input data. Moreover, they often rely on one or a few metrics and neglect thorough validation, increasing the risk of selection bias and ignoring discrepancies among metrics. These shortcomings leave practitioners confused about which method to choose for their problem. In response, we introduce LATEC, a large-scale benchmark that critically evaluates 17 prominent XAI methods using 20 distinct metrics. We systematically incorporate vital design parameters like varied architectures and diverse input modalities, resulting in 7,560 examined combinations.…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI)
