论文标题

PBRE:来自训练有素的神经网络的规则提取方法,专为智能家庭服务而设计

PBRE: A Rule Extraction Method from Trained Neural Networks Designed for Smart Home Services

论文作者

Qiu, Mingming, Najm, Elie, Sharrock, Remi, Traverson, Bruno

论文摘要

当多个具有大量传感器和执行器的服务同时部署的多个服务时,设计智能家庭服务是一项复杂的任务。它可能依靠基于知识或数据驱动的方法。前者可以使用基于规则的方法静态设计服务,后者可以使用学习方法动态地发现居民的偏好。但是,这些方法都不完全令人满意,因为规则不能涵盖可能改变的所有可能情况,而学习方法可能会做出有时对居民无法理解的决定。在本文中,提出了PBRE(基于教学的规则提取器)从学习方法中提取规则,以实现智能家居系统的动态规则生成。预期的优势是采用了基于规则的方法的解释性和学习方法的动态性。我们将PBRE与现有规则提取方法进行比较,结果显示PBRE的性能更好。我们还使用PBRE从NRL(基于神经网络的强化学习)代表的智能家庭服务中提取规则。结果表明,PBRE可以帮助NRL模拟的服务向居民提出可理解的建议。

Designing smart home services is a complex task when multiple services with a large number of sensors and actuators are deployed simultaneously. It may rely on knowledge-based or data-driven approaches. The former can use rule-based methods to design services statically, and the latter can use learning methods to discover inhabitants' preferences dynamically. However, neither of these approaches is entirely satisfactory because rules cannot cover all possible situations that may change, and learning methods may make decisions that are sometimes incomprehensible to the inhabitant. In this paper, PBRE (Pedagogic Based Rule Extractor) is proposed to extract rules from learning methods to realize dynamic rule generation for smart home systems. The expected advantage is that both the explainability of rule-based methods and the dynamicity of learning methods are adopted. We compare PBRE with an existing rule extraction method, and the results show better performance of PBRE. We also apply PBRE to extract rules from a smart home service represented by an NRL (Neural Network-based Reinforcement Learning). The results show that PBRE can help the NRL-simulated service to make understandable suggestions to the inhabitant.

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