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A Type-2 Fuzzy Logic Based Explainable AI Approach for the Easy Calibration of AI models in IoT Environments

机译:基于Type-2模糊逻辑可解释的IOT环境AI模型易于校准的方法

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Internet of things is projected to make its way into all spheres of human life in the near future. This has been compounded with the growing demand for contactless solutions in the wake of the recent pandemic. A potential solution could involve a privacy-preserving gesture-based control system that could control a wide range of appliances. Implementing such gesture-based control systems is mainly conducted using opaque box Artificial Intelligence (AI) models. Systems based on such opaque box AI models have shown high-performance metrics on in-distribution data in a lab environment. However, they are prone to failure when exposed to real-world out-of-distribution data where they cannot be tuned or calibrated due to their complexity and opaqueness. Interval Type-2 Fuzzy Logic-based explainable AI models offer an alternative to opaque box models showing comparable performance on lab in-distribution data. In contrast, in the real world, out-of-distribution data, the type-2 fuzzy models could be easily calibrated and tuned (thanks for their explainability) to provide similar performance to those achieved on the lab in-distribution data.
机译:事情上互联网被预计将在不久的将来进入人类生活的所有领域。这在近期大流行后,对非接触式解决方案的需求增长。潜在的解决方案可以涉及一种隐私保留的基于手势的控制系统,可以控制各种各样的设备。实现这种基于手势的控制系统主要使用不透明框人工智能(AI)模型进行。基于此类不透明盒AI模型的系统在实验室环境中显示了高性能指标。然而,当暴露于现实世界外的数据时,它们易于失败,因为他们无法通过它们的复杂性和不透明进行调整或校准。间隔类型-2模糊逻辑可说明的AI型号为不透明盒式模型提供了替代方案,在实验室分布数据上显示了可比性的性能。相比之下,在现实世界中,分销数据外,可以轻松地校准和调整2型模糊模型(感谢其可解释性),为在实验室分配数据上实现的人提供类似的性能。

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