An estimating method for missing data by using multiple self-organizing maps

Y. Kikuchi, N. Okada, Y. Tsuji, K. Kiguchi
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引用次数: 4

Abstract

In this paper, we propose a new method that uses multiple SOMs for estimating values lacking in data analysis. Recently, development of information technology grows the importance of data analysis. In actual data, however, some values will be sometimes missing, and then dealing with such insufficient data has become one of the important subjects in data analysis. Estimating and completing the empty values are required to applying various data analysis techniques. Such an estimation method is also applicable to data prediction problems. In the former methods that use SOM, many empty values would have caused the lack of data for learning process. Our system can achieve effective learning by using multiple SOMs even for data that includes many missing values. Moreover, the system is still available for nonlinear data because of using SOMs. We performed some numerical simulation using the proposed and other methods. By the simulation results, we showed the advantages of our method over some traditional techniques including a technique that uses single SOM.
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基于多个自组织映射的缺失数据估计方法
在本文中,我们提出了一种使用多个SOMs来估计数据分析中缺乏的值的新方法。近年来,随着信息技术的发展,数据分析变得越来越重要。然而,在实际数据中,有时会出现一些值的缺失,因此如何处理这些不足的数据就成为数据分析中的重要课题之一。估算和完成空值是应用各种数据分析技术所必需的。这种估计方法同样适用于数据预测问题。在以前使用SOM的方法中,许多空值会导致学习过程缺乏数据。我们的系统可以通过使用多个som实现有效的学习,即使对于包含许多缺失值的数据。此外,由于使用了SOMs,该系统仍然可以用于非线性数据。采用本文提出的方法和其他方法进行了数值模拟。通过仿真结果,我们展示了我们的方法优于一些传统技术,包括使用单个SOM的技术。
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