Regression problems have been more and more embraced by deep learning (DL) techniques. The increasing number of papers recently published in this domain, including surveys and reviews, shows that deep regression has captured the attention of the community due to efficiency and good accuracy in systems with high-dimensional data. However, many DL methodologies have complex structures that are not readily transparent to human users. Accessing the interpretability of these models is an essential factor for addressing problems in sensitive areas such as cyber-security systems, medical, financial surveillance, and industrial processes. Fuzzy logic systems (FLS) are inherently interpretable models, well known in the literature, capable of using nonlinear representations for complex systems through linguistic terms with membership degrees mimicking human thought. Within an atmosphere of explainable artificial intelligence, it is necessary to consider a trade-off between accuracy and interpretability for developing intelligent models. This paper aims to investigate the state-of-the-art on existing methodologies that combine DL and FLS, namely deep fuzzy systems, to address regression problems, configuring a topic that is currently not sufficiently explored in the literature and thus deserves a comprehensive survey.
翻译:最近在这一领域发表的越来越多的论文,包括调查和审查,表明深度回归已经引起社区的注意,因为具有高维数据的系统的效率和准确性很高,然而,许多DL方法的结构复杂,对人类用户来说不易透明。获取这些模型的可解释性是解决诸如网络安全系统、医疗、金融监督以及工业流程等敏感领域问题的基本因素。模糊逻辑系统(FLS)是内在的可解释模型,在文献中广为人知,能够通过成员语言术语和模拟人类思维的语系,对复杂系统使用非线性表示。在可解释的人工智能环境中,有必要考虑在准确性和可解释性之间作出权衡,以开发智能模型。本文旨在调查将DL和FLS(深模糊系统)相结合的现有方法的现状,以解决回归问题,将文献中目前尚未充分探讨的课题分类,因此值得全面调查。