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基于异质矩阵完全的缺失数据恢复混合集成算法
引用本文:付明柏.基于异质矩阵完全的缺失数据恢复混合集成算法[J].云南师范大学学报(自然科学版),2013(6):67-72.
作者姓名:付明柏
作者单位:昭通学院计算机科学系,云南昭通657000
基金项目:云南省教育厅科研基金资助项目(2011C038).
摘    要:缺失数据广泛存在于现实世界中,它对后续的数据分析有很大的影响,有可能导致结果完全错误。近年来,很多基于压缩传感理论的矩阵完全算法被提出并用于缺失数据恢复,但不同的算法在不同的数据集上产生的结果有很大不同,都有自己的优缺点和适用场景。为此提出一种基于异质矩阵完全算法和最大多样性的集成策略的混合集成学习算法,实验结果表明,此算法在不同的数据集上优于那些单个算法。

关 键 词:压缩传感  矩阵完全  混合集成学习  缺失数据恢复  集成策略

Mixed Ensemble Heterogeneous Matrix Completion for Missing Value Estimation
Institution:FU Ming-ba (Department of Computer Science, Zhaotong University, Zhaotong 657000, China)
Abstract:The problem of incomplete data is ubiquitous in real world and has a significant effect on the application of data analysis method and final conclusion. Recently, many matrix completion algo- rithms based on compress sensing are proposed, while they all have respective advantages and disad- vantages, and every approach vary drastically on different datasets and their preferences and potential limitations are special. In this paper, a mixed ensemble method is proposed based on heterogeneous matrix completion algorithms and ensemble strategy with high--level diversity. The experiment re- sult shows that ensemble method outperforms all single matrix completion algorithms in different datasets.
Keywords:Compress Sensing  Matrix Completion  Mixed Ensemble Learning Missing Value Esti-mation  Ensemble Strategy
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