A Methodology for Statistical Matching with Fuzzy Logic

Patrick Noll, Paul Alpar
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引用次数: 1

Abstract

The Analysis of data often requires information that is not available from a single source, but from multiple sources. Statistical matching procedures are methods that help to merge information from different sources into a single data set. Traditionally, statistical matching is done on the basis of computed distances between selected variables found in all data sets. Situations where no decision can be made in traditional statistical matching, e.g., in the case of identical distances, cause problems. We present a methodology for statistical matching with fuzzy logic which solves these problems. After a short introduction, the basics of traditional statistical matching are presented. The description of the theory of statistical fuzzy matching follows thereafter. The paper concludes with a short example.
基于模糊逻辑的统计匹配方法
数据分析通常需要的信息不是来自单一来源,而是来自多个来源。统计匹配过程是帮助将来自不同来源的信息合并为单个数据集的方法。传统上,统计匹配是基于在所有数据集中找到的选定变量之间的计算距离来完成的。在传统的统计匹配中无法做出决定的情况下,例如,在相同距离的情况下,会导致问题。我们提出了一种用模糊逻辑进行统计匹配的方法来解决这些问题。简要介绍了传统统计匹配的基本原理。接下来是统计模糊匹配理论的描述。本文以一个简短的例子作结。
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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