基于规则的知识表示和高可解释性的模糊DBN

Xiongtao Zhang, Xingguang Pan, Shitong Wang
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引用次数: 8

摘要

虽然深度信念网络(Deep Belief Network, DBN)由于其强大的高分类精度,在图像分类、信号识别、剩余使用寿命估计等广泛的实际场景中得到了应用,但它具有不可解释的功能(对用户来说也希望具有高水平的可解释性)。本文提出了一种将DBN和TSK模糊系统相结合的模糊DBN系统TSK_DBN。首先,利用模糊聚类算法FCM对输入空间进行划分,定义模糊规则的隶属度函数;然后,通过DBN创建隐式特征。最后,用最小学习机(LLM)确定模糊规则的后续参数。TSK_DBN模糊系统具有自适应机制,可以自动调整深度,直到达到最佳精度。TSK_DBN系统的突出特点是存在自适应机制来调节DBN的深度以获得较高的精度。使用几个基准数据集对所提出的TSK_DBN处理模式分类任务的效率进行了实证评估。结果表明,TSK_DBN在以高可解释性规则库的形式提供显式知识方面的准确率至少与具有独特能力的DBN系统相当(如果不是优于)。
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Fuzzy DBN with rule-based knowledge representation and high interpretability
Although Deep Belief Network (DBN) has been applied to a wide range of practical scenarios, i.e. image classification, signal recognition, remaining useful life estimation, on account of its powerful high classification accuracy, but it has impossible interpretation of functionality (it is desirable to have a high level of interpretability for users also). In this paper, we propose a novel fuzzy DBN system called TSK_DBN which combines DBN and TSK fuzzy system. Firstly, the fuzzy clustering algorithm FCM is used to divide the input space, and the membership function of the fuzzy rule is defined. Then, the implicit feature is created by DBN. Finally, the consequent parameters of the fuzzy rule are determined by LLM(Least Learning Machine). The TSK_DBN fuzzy system has an adaptive mechanism, which can automatically adjust the depth until the optimal accuracy is achieved. The prominent character of the TSK_DBN system is that there is adaptive mechanism to regulate the depth of DBN to get a high accuracy. Several benchmark datasets have been used to empirically evaluate the efficiency of the proposed TSK_DBN in handling pattern classification tasks. The results show that the accuracy rates of TSK_DBN are at least comparable (if not superior) to DBN system with distinctive ability in providing explicit knowledge in the form of high interpretable rule base.
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