一个更现实的k近邻方法及其在日常问题中的可能应用

J. M. Cadenas, M. C. Garrido, Raquel Martínez-España, A. Muñoz
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引用次数: 2

摘要

目前,我们日常生活中的许多元素都需要软件系统通过执行数据挖掘过程,从领域(数据驱动的应用程序领域)中可用的信息中工作。在日常问题中使用的数据挖掘技术中,我们发现了k近邻技术。然而,在领域和实际情况中,经常会发现模糊、模棱两可和有噪声的数据,即不完全信息。尽管这种不完美的信息是不可避免的,但大多数应用程序传统上忽略了开发适当的方法来表示和推理这种数据不完美的必要性。软计算领域已经将处理这类信息的技术发展作为一门学科,其主要特点是容忍不准确和不确定性。在这项工作中,我们使用软计算提供的概念和方法扩展了k近邻技术。目的是从不完全信息中进行日常问题的实例选择和分类过程,使该技术更加现实。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A More Realistic K-Nearest Neighbors Method and Its Possible Applications to Everyday Problems
Currently, many of the elements that surround us in daily life need software systems that work from the information available in the domain (data-driven application domains) by performing a process of data mining from it. Between the data mining techniques used in everyday problems we find the k-Nearest Neighbors technique. However, in domains and real situations it is very common to find vague, ambiguous and noisy data, that is, imperfect information.Although this imperfect information is inevitable, most applications have traditionally ignored the need for developing appropriate approaches for representing and reasoning with such data imperfections. The soft computing field has dealt with the development of techniques that can work with this kind of information as discipline whose main characteristic is tolerance to inaccuracy and uncertainty.In this work, we extend the k-Nearest Neighbors technique using concepts and methods provided by Soft Computing. The aim is to carry out the processes of instance selection and classification in everyday problems from imperfect information making the technique more realistic.
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