基于遗传算法优化的人工神经网络缺失值估计

Anjana Mishra, B. Naik, Suresh Kumar Srichandan
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引用次数: 8

摘要

缺失值在几乎所有严肃的统计分析中都会出现,并在处理数据库数据时产生许多问题。在现实世界的应用程序中,由于工具错误、可选字段和调查中某些问题的不响应、数据输入错误等原因,信息可能会丢失。大多数数据挖掘技术都需要分析完整的数据而不遗漏任何信息,这促使研究人员开发有效的方法来处理这些数据。它是各个领域长期以来进行研究的重要领域之一。本文的目标是使用进化(遗传)算法处理丢失的数据,该算法包括一些相对简单的方法,这些方法通常可以产生合理的结果。该方法采用遗传算法和多层感知器(MLP)对缺失数据进行准确预测,具有较高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Missing Value Imputation Using ANN Optimized by Genetic Algorithm
Missing value arises in almost all serious statistical analyses and creates numerous problems in processing data in databases. In real world applications, information may be missing due to instrumental errors, optional fields and non-response to some questions in surveys, data entry errors, etc. Most of the data mining techniques need analysis of complete data without any missing information and this induces researchers to develop efficient methods to handle them. It is one of the most important areas where research is being carried out for a long time in various domains. The objective of this article is to handle missing data, using an evolutionary (genetic) algorithm including some relatively simple methodologies that can often yield reasonable results. The proposed method uses genetic algorithm and multi-layer perceptron (MLP) for accurately predicting missing data with higher accuracy.
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