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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Adjusted weight voting algorithm for random forests in handling missing values
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Adjusted weight voting algorithm for random forests in handling missing values

机译:处理缺失值中随机林的调整重量投票算法

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摘要

Random forests (RF) is known as an efficient algorithm in classification, however it depends on the integrity of datasets. Conventional methods in dealing with missing values usually employ estimation and imputation approaches whose efficiency is tied to the assumptions of data features. Recently, algorithm of surrogate decisions in RF was developed and this paper proposes a random forests algorithm with modified surrogate splits (Adjusted Weight Voting Random Forest, AWVRF) which is able to address the incomplete data without imputation.
机译:随机森林(RF)是一种高效的分类算法,但它依赖于数据集的完整性。处理缺失值的传统方法通常采用估算和插补方法,其效率与数据特征的假设有关。最近,RF中的代理决策算法得到了发展,本文提出了一种改进的代理分割随机森林算法(调整权重投票随机森林,AWVRF),该算法能够处理不完整的数据,而无需插补。

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