Spectral clustering with scale fairness constraints

IF 2.5 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Zhijing Yang, Hui Zhang, Chunming Yang, Bo Li, Xujian Zhao, Yin Long
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Abstract

Spectral clustering is one of the most common unsupervised learning algorithms in machine learning and plays an important role in data science. Fair spectral clustering has also become a hot topic with the extensive research on fair machine learning in recent years. Current iterations of fair spectral clustering methods are based on the concepts of group and individual fairness. These concepts act as mechanisms to mitigate decision bias, particularly for individuals with analogous characteristics and groups that are considered to be sensitive. Existing algorithms in fair spectral clustering have made progress in redistributing resources during clustering to mitigate inequities for certain individuals or subgroups. However, these algorithms still suffer from an unresolved problem at the global level: the resulting clusters tend to be oversized and undersized. To this end, the first original research on scale fairness is presented, aiming to explore how to enhance scale fairness in spectral clustering. We define it as a cluster attribution problem for uncertain data points and introduce entropy to enhance scale fairness. We measure the scale fairness of clustering by designing two statistical metrics. In addition, two scale fair spectral clustering algorithms are proposed, the entropy weighted spectral clustering (EWSC) and the scale fair spectral clustering (SFSC). We have experimentally verified on several publicly available real datasets of different sizes that EWSC and SFSC have excellent scale fairness performance, along with comparable clustering effects.

Abstract Image

具有规模公平性约束的频谱聚类
光谱聚类是机器学习中最常见的无监督学习算法之一,在数据科学中发挥着重要作用。随着近年来对公平机器学习的广泛研究,公平光谱聚类也成为了一个热门话题。目前迭代的公平光谱聚类方法基于群体和个体公平的概念。这些概念是减轻决策偏差的机制,特别是对于具有类似特征的个体和被认为敏感的群体。现有的公平光谱聚类算法在聚类过程中重新分配资源以减轻对某些个体或子群体的不公平方面取得了进展。然而,这些算法在全局层面上仍存在一个尚未解决的问题:产生的聚类往往过大或过小。为此,我们首次提出了关于规模公平性的原创性研究,旨在探索如何在光谱聚类中增强规模公平性。我们将其定义为不确定数据点的聚类归属问题,并引入熵来增强规模公平性。我们通过设计两个统计指标来衡量聚类的规模公平性。此外,我们还提出了两种规模公平光谱聚类算法,即熵加权光谱聚类(EWSC)和规模公平光谱聚类(SFSC)。我们在几个公开的不同规模的真实数据集上进行了实验验证,结果表明 EWSC 和 SFSC 具有出色的规模公平性,同时聚类效果相当。
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来源期刊
Knowledge and Information Systems
Knowledge and Information Systems 工程技术-计算机:人工智能
CiteScore
5.70
自引率
7.40%
发文量
152
审稿时长
7.2 months
期刊介绍: Knowledge and Information Systems (KAIS) provides an international forum for researchers and professionals to share their knowledge and report new advances on all topics related to knowledge systems and advanced information systems. This monthly peer-reviewed archival journal publishes state-of-the-art research reports on emerging topics in KAIS, reviews of important techniques in related areas, and application papers of interest to a general readership.
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