Challenges in explaining deep learning models for data with biological variation
Lenka T\v{e}tkov\'a, Erik Schou Dreier, Robin Malm, Lars Kai, Hansen

TL;DR
This paper explores the challenges of explaining deep learning models applied to biological data, specifically grain disease detection, highlighting issues with explainability methods, evaluation, and visualization in real-world biological variability.
Contribution
The paper identifies key challenges in explainability for biological data, evaluates various methods on grain datasets, and proposes a framework for assessing explainability techniques in complex biological scenarios.
Findings
Explainability methods show variability based on hyperparameters.
Visualization and comparison of explanations are problematic due to differing magnitudes.
Evaluating explanations is difficult without clear ground truth.
Abstract
Much machine learning research progress is based on developing models and evaluating them on a benchmark dataset (e.g., ImageNet for images). However, applying such benchmark-successful methods to real-world data often does not work as expected. This is particularly the case for biological data where we expect variability at multiple time and spatial scales. In this work, we are using grain data and the goal is to detect diseases and damages. Pink fusarium, skinned grains, and other diseases and damages are key factors in setting the price of grains or excluding dangerous grains from food production. Apart from challenges stemming from differences of the data from the standard toy datasets, we also present challenges that need to be overcome when explaining deep learning models. For example, explainability methods have many hyperparameters that can give different results, and the ones…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI)
MethodsFocus
