Fuzzycreator: A python-based toolkit for automatically generating and analysing data-driven fuzzy sets

J. McCulloch
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引用次数: 17

Abstract

This paper presents a toolkit for automatic generation and analysis of fuzzy sets (FS) from data. Toolkits are vital for the wider dissemination, accessibility and implementation of theoretic work and applications on FSs. There are currently several toolkits in the literature that focus on knowledge representation and fuzzy inference, but there are few that focus on the automatic generation and comparison of FSs. As there are several methods of constructing FSs from data, it is important to have the tools to use these methods. This paper presents an open-source, python-based toolkit, named fuzzycreator, that facilitates the creation of both conventional and non-conventional (nonnormal and non-convex) type-1, interval type-2 and general type-2 FSs from data. These FSs may then be analysed and compared through a series of tools and measures (included in the toolkit), such as evaluating their similarity and distance. An overview of the key features of the toolkit are given and demonstrations which provide rapid access to cutting-edge methodologies in FSs to both expert and non-expert users.
Fuzzycreator:一个基于python的工具集,用于自动生成和分析数据驱动的模糊集
本文提出了一个用于从数据中自动生成和分析模糊集(FS)的工具包。工具箱对于软件软件的理论工作和应用的广泛传播、可及性和实施至关重要。目前,文献中有一些侧重于知识表示和模糊推理的工具包,但很少关注fs的自动生成和比较。由于有几种从数据构建fs的方法,因此拥有使用这些方法的工具非常重要。本文提出了一个基于python的开源工具包,名为fuzzycreator,它有助于从数据创建常规和非常规(非正态和非凸)类型1,区间类型2和一般类型2 fs。然后可以通过一系列工具和措施(包括在工具包中)对这些金融系统进行分析和比较,例如评估它们的相似性和距离。该工具包的主要功能概述和演示,为专家和非专家用户提供了快速访问FSs中尖端方法的方法。
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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