Automatic Generation of ANFIS Rules in Modelling Breast Cancer Survival

H. Hamdan, J. Garibaldi
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引用次数: 2

Abstract

Data collected to be processed by means of rules can be done in multiple ways. In our previous papers, the Adaptive Neuro-Fuzzy Inference System (ANFIS) has been applied to breast cancer data for modelling survival in the presence of censorship. In initial work, the membership functions for the input data were defined by experts, along with an estimation of output. However, if knowledge about the data is vague or the expert cannot express the knowledge explicitly, the initial membership functions can be defined by partitioning the input space equally. Extracting fuzzy rules from the data using clustering methods is another technique used to initialise the position of membership functions of the input data. In this paper, we investigate whether such automatic methods can be used to initialise the antecedents of our model. Two clustering methods were applied to partition the input space, namely fuzzy c-means clustering and subtractive clustering, to establish the initial membership functions and a set of rules for the models. Further, to improve the model performance and high model accuracy, model optimisation was performed using the ANFIS approach.
乳腺癌生存模型中ANFIS规则的自动生成
通过规则收集要处理的数据可以通过多种方式完成。在我们之前的论文中,自适应神经模糊推理系统(ANFIS)已应用于乳腺癌数据,用于在审查存在的情况下建模生存。在最初的工作中,输入数据的隶属函数由专家定义,并对输出进行估计。然而,如果数据的知识是模糊的,或者专家不能明确地表达知识,初始隶属度函数可以通过等分输入空间来定义。使用聚类方法从数据中提取模糊规则是用于初始化输入数据的隶属函数位置的另一种技术。在本文中,我们研究了这种自动方法是否可以用来初始化我们的模型的先决条件。采用模糊c均值聚类和减法聚类两种聚类方法对输入空间进行划分,建立模型的初始隶属函数和规则集。此外,为了提高模型性能和模型精度,使用ANFIS方法进行模型优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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