健康相关数据建模的AI: DCN应用分析

N. Cheng
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引用次数: 0

摘要

来自数据中心(DC)的健康相关数据的数据建模对健康监测、疾病预防和医疗保健研究具有积极影响。然而,健康相关数据具有庞大、高维、非归一化等特点,不利于直接分析,因此在数据建模之前需要对数据进行预处理。本文针对健康相关数据的特点,对数据预处理过程中的异常值检测进行了研究。同时,我们提出了一种改进的基于健康相关数据的离群值检测算法。实验结果表明,与三个基线相比,本文提出的离群点检测算法运行时间更短,检测到的离群点更多。此外,提出了基于局部重要度的随机森林特征选择算法来度量每个特征的重要度。实验结果表明,该算法可以选择最优特征子集应用于健康相关数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI for Health-Related Data Modeling: DCN Application Analysis
Data modeling of health-related data from Data Center (DC) has positive effects for health monitoring, disease prevention, and healthcare research. However, health-related data has the characteristics of huge, high-dimensional, and non-normalized, which are not beneficial to direct analysis, so data needs to be preprocessed before data modeling. This paper focuses on the features of health-related data, and outlier detection during data preprocessing is studied. Meanwhile, we propose an improved algorithm for health-related data based outlier detection. The experimental results reveal that the proposed outlier detection algorithm has a smaller running time, and more outliers are detected compared to three baselines. In addition, local importance based random forest feature selection algorithm is proposed to measure the importance of each feature. The experimental results indicate that the proposed algorithm can select optimal feature subset to apply health-related data.
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