Benitez J M, Castro J L, Requena I
Dept. de Ciencias de la Comput. e Inteligencia Artificial, Granada Univ.
IEEE Trans Neural Netw. 1997;8(5):1156-64. doi: 10.1109/72.623216.
Artificial neural networks are efficient computing models which have shown their strengths in solving hard problems in artificial intelligence. They have also been shown to be universal approximators. Notwithstanding, one of the major criticisms is their being black boxes, since no satisfactory explanation of their behavior has been offered. In this paper, we provide such an interpretation of neural networks so that they will no longer be seen as black boxes. This is stated after establishing the equality between a certain class of neural nets and fuzzy rule-based systems. This interpretation is built with fuzzy rules using a new fuzzy logic operator which is defined after introducing the concept of f-duality. In addition, this interpretation offers an automated knowledge acquisition procedure.
人工神经网络是高效的计算模型,在解决人工智能中的难题方面展现出了优势。它们也被证明是通用逼近器。尽管如此,主要批评之一是它们是黑箱,因为尚未对其行为给出令人满意的解释。在本文中,我们对神经网络给出这样一种解释,以使它们不再被视为黑箱。这是在建立了某类神经网络与基于模糊规则的系统之间的等价关系之后阐述的。这种解释是用模糊规则构建的,使用了一种新的模糊逻辑算子,该算子是在引入f -对偶性概念之后定义的。此外,这种解释提供了一种自动知识获取过程。