基于贝叶斯网络的HCR决策缺失值估算方法

Yoshihiro Miyakoshi, Shohei Kato
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引用次数: 2

摘要

近年来,以人为本的机器人领域发展出了各种类型的机器人。以人为中心的机器人需要自主做出决定,才能与人类共同生活。因此,数据挖掘,特别是分类,作为开发决策系统的一项组成技术,受到了广泛的关注。在实际的数据挖掘中,经常会遇到缺失值问题,如语音中含有噪声、面部遮挡等。在以往的研究中,已经发展了各种各样的估算方法。以往的归算方法都是为了解决解释变量较多的缺失值问题,即使有些解释变量对归算无效。有人说,使用大量的变量会降低学习效率,因此我们认为应该开发考虑解释变量之间关系的归算方法。因此,我们提出了使用贝叶斯网络的估算方法。通过实验,我们可以证实该方法对缺失值进行了近似的输入,并且与一些常规方法相比,该分类系统成功地对缺失值输入的测试样本进行了分类。
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 method using Bayesian network for decision-making on HCR
Recently, varied types of robots have been developed in the field of human centered robotics. Human centered robots need to autonomously make their own decisions to live together with human. Accordingly, data mining, especially classification, has been drawing much attention as a component technology to develop decision-making systems. In the real-world data mining, missing value problem is happened, for example, speech containing noise, facial occlusion, and so on. In previous studies, various imputation methods have been developed. Previous imputation methods were developed to solve the missing value problem with lots of explanatory variable, even if some explanatory variables are ineffective for imputation. It has been said that using lots of variable deteriorates in learning efficiency, thus we believe that imputation methods should be developed considering relations among explanatory variables. Therefore we propose the imputation method using Bayesian network. Through the experiments, we can confirmed that proposed method imputes missing values with approximate values, and a classification system successfully classify the test sample, in which missing values are imputed by proposed method, in comparison with some conventional methods.
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