PCEvE: Part Contribution Evaluation Based Model Explanation for Human Figure Drawing Assessment and Beyond
For automatic human figure drawing (HFD) assessment tasks, such as diagnosing autism spectrum disorder (ASD) using HFD images, the clarity and explainability of a model decision are crucial. Existing pixel-level attribution-based explainable AI (XAI) approaches demand considerable effort from users...
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Zusammenfassung: | For automatic human figure drawing (HFD) assessment tasks, such as diagnosing
autism spectrum disorder (ASD) using HFD images, the clarity and explainability
of a model decision are crucial. Existing pixel-level attribution-based
explainable AI (XAI) approaches demand considerable effort from users to
interpret the semantic information of a region in an image, which can be often
time-consuming and impractical. To overcome this challenge, we propose a part
contribution evaluation based model explanation (PCEvE) framework. On top of
the part detection, we measure the Shapley Value of each individual part to
evaluate the contribution to a model decision. Unlike existing
attribution-based XAI approaches, the PCEvE provides a straightforward
explanation of a model decision, i.e., a part contribution histogram.
Furthermore, the PCEvE expands the scope of explanations beyond the
conventional sample-level to include class-level and task-level insights,
offering a richer, more comprehensive understanding of model behavior. We
rigorously validate the PCEvE via extensive experiments on multiple HFD
assessment datasets. Also, we sanity-check the proposed method with a set of
controlled experiments. Additionally, we demonstrate the versatility and
applicability of our method to other domains by applying it to a
photo-realistic dataset, the Stanford Cars. |
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DOI: | 10.48550/arxiv.2409.18260 |