Natural-neighborhood based, label-specific undersampling for imbalanced, multi-label data

IF 1.4 4区 计算机科学 Q2 STATISTICS & PROBABILITY
Payel Sadhukhan, Sarbani Palit
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Abstract

This work presents a novel undersampling scheme to tackle the imbalance problem in multi-label datasets. We use the principles of the natural nearest neighborhood and follow a paradigm of label-specific undersampling. Natural-nearest neighborhood is a parameter-free principle. Our scheme’s novelty lies in exploring the parameter-optimization-free natural nearest neighborhood principles. The class imbalance problem is particularly challenging in a multi-label context, as the imbalance ratio and the majority–minority distributions vary from label to label. Consequently, the majority–minority class overlaps also vary across the labels. Working on this aspect, we propose a framework where a single natural neighbor search is sufficient to identify all the label-specific overlaps. Natural neighbor information is also used to find the key lattices of the majority class (which we do not undersample). The performance of the proposed method, NaNUML, indicates its ability to mitigate the class-imbalance issue in multi-label datasets to a considerable extent. We could also establish a statistically superior performance over other competing methods several times. An empirical study involving twelve real-world multi-label datasets, seven competing methods, and four evaluating metrics—shows that the proposed method effectively handles the class-imbalance issue in multi-label datasets. In this work, we have presented a novel label-specific undersampling scheme, NaNUML, for multi-label datasets. NaNUML is based on the parameter-free natural neighbor search and the key factor, neighborhood size ‘k’ is determined without invoking any parameter optimization.

Abstract Image

基于自然邻域的特定标签欠采样,用于不平衡多标签数据
本研究提出了一种新颖的欠采样方案,用于解决多标签数据集中的不平衡问题。我们利用自然最近邻域原理,遵循特定标签欠采样范式。自然最近邻域是一种无参数原则。我们方案的新颖之处在于探索了无参数优化的自然最近邻原则。在多标签情况下,类不平衡问题尤其具有挑战性,因为不平衡率和多数-少数分布因标签而异。因此,不同标签的多数-少数类重叠也各不相同。针对这一点,我们提出了一个框架,只需一次自然邻接搜索就足以识别所有特定标签的重叠。自然邻接信息还可用于找到多数类的关键网格(我们不会对其进行低采样)。所提方法 NaNUML 的性能表明,它能在很大程度上缓解多标签数据集中的类不平衡问题。在统计上,我们也多次证明该方法优于其他竞争方法。一项涉及 12 个真实世界多标签数据集、7 种竞争方法和 4 个评估指标的实证研究表明,所提出的方法能有效地处理多标签数据集中的类不平衡问题。在这项工作中,我们针对多标签数据集提出了一种新颖的标签特定欠采样方案 NaNUML。NaNUML 基于无参数自然邻域搜索,关键因素邻域大小 "k "的确定不需要任何参数优化。
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来源期刊
CiteScore
3.40
自引率
6.20%
发文量
45
审稿时长
>12 weeks
期刊介绍: The international journal Advances in Data Analysis and Classification (ADAC) is designed as a forum for high standard publications on research and applications concerning the extraction of knowable aspects from many types of data. It publishes articles on such topics as structural, quantitative, or statistical approaches for the analysis of data; advances in classification, clustering, and pattern recognition methods; strategies for modeling complex data and mining large data sets; methods for the extraction of knowledge from data, and applications of advanced methods in specific domains of practice. Articles illustrate how new domain-specific knowledge can be made available from data by skillful use of data analysis methods. The journal also publishes survey papers that outline, and illuminate the basic ideas and techniques of special approaches.
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