AI Readiness in Healthcare through Storytelling XAI
Artificial Intelligence is rapidly advancing and radically impacting everyday life, driven by the increasing availability of computing power. Despite this trend, the adoption of AI in real-world healthcare is still limited. One of the main reasons is the trustworthiness of AI models and the potentia...
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Zusammenfassung: | Artificial Intelligence is rapidly advancing and radically impacting everyday
life, driven by the increasing availability of computing power. Despite this
trend, the adoption of AI in real-world healthcare is still limited. One of the
main reasons is the trustworthiness of AI models and the potential hesitation
of domain experts with model predictions. Explainable Artificial Intelligence
(XAI) techniques aim to address these issues. However, explainability can mean
different things to people with different backgrounds, expertise, and goals. To
address the target audience with diverse needs, we develop storytelling XAI. In
this research, we have developed an approach that combines multi-task
distillation with interpretability techniques to enable audience-centric
explainability. Using multi-task distillation allows the model to exploit the
relationships between tasks, potentially improving interpretability as each
task supports the other leading to an enhanced interpretability from the
perspective of a domain expert. The distillation process allows us to extend
this research to large deep models that are highly complex. We focus on both
model-agnostic and model-specific methods of interpretability, supported by
textual justification of the results in healthcare through our use case. Our
methods increase the trust of both the domain experts and the machine learning
experts to enable a responsible AI. |
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DOI: | 10.48550/arxiv.2410.18725 |