大数据约简中一种新颖的可扩展和有效的分区方法

M. Malhat, M. Elmenshawy, Hamdy M. Mousa, A. El-Sisi
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引用次数: 0

摘要

数据量的不断增加使得传统的实例选择方法无法在单个机器上减少大型训练数据集。最近解决这一技术问题的方法是先将训练数据集划分为子集,然后将实例选择方法分别应用于每个子集。然而,应用实例选择方法对子集的性能会受到负面影响,特别是当分区子集的数量增加时。在这项工作中,我们提出了一种新颖的可扩展和有效的自动分区方法,称为基于重叠距离的类平衡分区。该方法根据给定的距离度量将训练数据集实例分配到划分的子集中,并确保数据类在划分的子集中具有相等的表示。此外,一旦实例满足动态阈值,它们可能会被分配到两个子集。我们在8个标准数据集上使用精简最近邻方法实现并测试了所提出方法的可扩展性和有效性。本文将提出的方法与分层划分方法和我们的方法的非重叠版本进行了经验和分析比较,其中包括:1)减少率、分类准确性和有效性指标;2)可扩展性方面,其中子集的数量增加。对比结果表明,对于这些标准数据集,我们的方法比其他分区方法更具可扩展性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Scalable and Effective Partitioning Approach for Big Data Reduction
The continuous increment of data size makes the traditional instance selection methods ineffective to reduce big training datasets in a single machine. Recent approaches to solving this technical problem partition the training dataset into subsets prior to apply the instance selection methods into each subset separately. However, the performance of the applied instance selection methods to subsets is negatively affected, especially when the number of partitioned subsets is increased. In this work, we propose a novel scalable and effective automated partitioning approach, called overlapped distance-based class-balance partitioning. This approach distributes the training dataset instances to the partitioned subsets based on a given distance metric and ensures the equal representation of data classes into partitioned subsets. Moreover, the instances might be assigned to two subsets once they satisfy the dynamic threshold. We implement and test empirically the scalability and effectiveness of the proposed approach using condensed nearest neighbor method over eight standard datasets. The proposed approach is compared empirically and analytically with stratification partitioning approach and a non-overlapped version from our approach with respect to 1) the reduction rate, classification accuracy, and effectiveness metrics, and 2) the scalability aspect, where the number of subsets is increased. The comparison results demonstrate that our approach is more scalable and effective than other partitioning approaches with respect to these standard datasets.
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