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Pattern classification with missing data: a review

机译:缺少数据的模式分类:回顾

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摘要

Pattern classification has been successfully applied in many problem domains, such as biometric recognition, document classification or medical diagnosis. Missing or unknown data are a common drawback that pattern recognition techniques need to deal with when solving real-life classification tasks. Machine learning approaches and methods imported from statistical learning theory have been most intensively studied and used in this subject. The aim of this work is to analyze the missing data problem in pattern classification tasks, and to summarize and compare some of the well-known methods used for handling missing values.
机译:模式分类已成功应用于许多问题领域,例如生物识别,文档分类或医学诊断。数据丢失或未知是模式识别技术在解决现实生活中的分类任务时需要处理的常见缺陷。从统计学习理论中引入的机器学习方法和方法已被最深入地研究和使用。这项工作的目的是分析模式分类任务中的缺失数据问题,并总结和比较一些用于处理缺失值的众所周知的方法。

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