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Data-driven missing data imputation in cluster monitoring system based on deep neural network

机译:基于深神经网络的集群监控系统中的数据驱动缺失数据载体

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摘要

Due to cluster instability, not in the cluster monitoring system. This paper focuses on the missing data imputation processing for the cluster monitoring application and proposes a new hybrid multiple imputation framework. This new imputation approach is different from the conventional multiple imputation technologies in the fact that it attempts to impute the missing data for an arbitrary missing pattern with a model-based and data-driven combination architecture. Essentially, the deep neural network, as the data model, extracts deep features from the data and deep features are further calculated then by a regression or data-driven strategies and used to create the estimation of missing data with the arbitrary missing pattern. This paper gives evidence that if we can train a deep neural network to construct the deep features of the data, imputation based on deep features is better than that directly on the original data. In the experiments, we compare the proposed method with other conventional multiple imputation approaches for varying missing data patterns, missing ratios, and different datasets including real cluster data. The result illustrates that when data encounters larger missing ratio and various missing patterns, the proposed algorithm has the ability to achieve more accurate and stable imputation performance.
机译:由于群集不稳定,不在群集监控系统中。本文重点介绍群集监控应用程序的缺失数据撤销处理,并提出了一种新的混合多重归属框架。这种新的归纳方法与传统的多重归纳技术不同,因为它试图利用基于模型和数据驱动的组合架构来赋予任意缺失模式的缺失数据。基本上,作为数据模型,深度神经网络从数据模型提取深度特征和深度特征,然后通过回归或数据驱动的策略进一步计算,并用于创建具有任意缺失模式的缺失数据的估计。本文提供了证据表明,如果我们可以培训深度神经网络来构建数据的深度特征,基于深度功能的估算比直接在原始数据上更好。在实验中,我们将所提出的方法与其他传统的多重归纳方法进行比较,用于改变缺失的数据模式,缺失比率和包括真实集群数据的不同数据集。结果说明,当数据遇到较大的缺失比和各种缺失模式时,所提出的算法具有实现更准确和稳定的归力性能的能力。

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