对称三角模糊数群处理方法及其在四川省小微企业监测数据分析中的应用

Rui Wang, Ting Peng, Xi-feng Li
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引用次数: 1

摘要

在以往的研究中,成组数据处理方法已被证明是一种有效的知识挖掘工具,可以揭示企业成长性的影响因素,但在对四川省小微企业进行分析时,由于企业生产经营监测平台网站上获取的数据存在噪声,降低了成长性。为了提高该方法的抗噪性,首先将监测数据处理为若干对称三角模糊数,并将该方法中所有自组织的偏函数模型的参数估计技术由原来的用确定的训练数据集进行回归分析改为用模糊集进行模糊规划。在此基础上,提出了一种对称三角模糊数处理的群方法,并在四川省进行了实证研究,结果表明该方法能够揭示监测数据不稳定、有噪声的小微企业成长的一些关键影响因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A group method of symmetric triangular fuzzy numbers handling and its application to analyze monitoring data of small and micro enterprises in Sichuan Province
Group method of data handling has been proven an effective knowledge mining tool to emerge the influencing factors of enterprises growth in the past researches, but when employed to analyze the small and micro enterprises in Sichuan Province, its effectiveness is reduced by the noise in the data obtained from the enterprises' produce and business operations monitor platform website. In order to increase the noise immunity of the method, the monitoring data is firstly processed as some symmetric triangular fuzzy numbers in this paper, and the parameter estimation technique for all self-organized models named partial functions in the method is changed from the former regression analysis with determined training data set to the fuzzy programming with fuzzy set. Basing on this transform, a group method of the symmetric triangular fuzzy numbers handling is presented and the result of its empirical study in Sichuan Province proves the method is able to disclose some key influencing factors of the small and micro enterprises' growth with unstable and noisy monitoring data.
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