Two key properties of dimensionality reduction methods

J. Lee, M. Verleysen
{"title":"Two key properties of dimensionality reduction methods","authors":"J. Lee, M. Verleysen","doi":"10.1109/CIDM.2014.7008663","DOIUrl":null,"url":null,"abstract":"Dimensionality reduction aims at providing faithful low-dimensional representations of high-dimensional data. Its general principle is to attempt to reproduce in a low-dimensional space the salient characteristics of data, such as proximities. A large variety of methods exist in the literature, ranging from principal component analysis to deep neural networks with a bottleneck layer. In this cornucopia, it is rather difficult to find out why a few methods clearly outperform others. This paper identifies two important properties that enable some recent methods like stochastic neighborhood embedding and its variants to produce improved visualizations of high-dimensional data. The first property is a low sensitivity to the phenomenon of distance concentration. The second one is plasticity, that is, the capability to forget about some data characteristics to better reproduce the other ones. In a manifold learning perspective, breaking some proximities typically allow for a better unfolding of data. Theoretical developments as well as experiments support our claim that both properties have a strong impact. In particular, we show that equipping classical methods with the missing properties significantly improves their results.","PeriodicalId":117542,"journal":{"name":"2014 IEEE Symposium on Computational Intelligence and Data Mining (CIDM)","volume":"4 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2014-12-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"22","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"2014 IEEE Symposium on Computational Intelligence and Data Mining (CIDM)","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1109/CIDM.2014.7008663","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 22

Abstract

Dimensionality reduction aims at providing faithful low-dimensional representations of high-dimensional data. Its general principle is to attempt to reproduce in a low-dimensional space the salient characteristics of data, such as proximities. A large variety of methods exist in the literature, ranging from principal component analysis to deep neural networks with a bottleneck layer. In this cornucopia, it is rather difficult to find out why a few methods clearly outperform others. This paper identifies two important properties that enable some recent methods like stochastic neighborhood embedding and its variants to produce improved visualizations of high-dimensional data. The first property is a low sensitivity to the phenomenon of distance concentration. The second one is plasticity, that is, the capability to forget about some data characteristics to better reproduce the other ones. In a manifold learning perspective, breaking some proximities typically allow for a better unfolding of data. Theoretical developments as well as experiments support our claim that both properties have a strong impact. In particular, we show that equipping classical methods with the missing properties significantly improves their results.
查看原文
分享 分享
微信好友 朋友圈 QQ好友 复制链接
本刊更多论文
降维方法的两个关键性质
降维的目的是为高维数据提供忠实的低维表示。它的一般原理是试图在低维空间中再现数据的显著特征,例如接近性。文献中存在各种各样的方法,从主成分分析到具有瓶颈层的深度神经网络。在这种丰富性中,很难找出为什么一些方法明显优于其他方法。本文确定了两个重要的性质,使一些最近的方法,如随机邻域嵌入及其变体,能够产生改进的高维数据的可视化。第一个性质是对距离集中现象的低灵敏度。第二个是可塑性,即忘记某些数据特征以更好地再现其他数据特征的能力。从多元学习的角度来看,打破一些接近性通常可以更好地展开数据。理论发展和实验都支持我们的说法,即这两种性质都有很强的影响。特别地,我们证明了在经典方法中加入缺失的性质可以显著改善它们的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
求助全文
约1分钟内获得全文 去求助
来源期刊
自引率
0.00%
发文量
0
期刊最新文献
Automatic relevance source determination in human brain tumors using Bayesian NMF Interpolation and extrapolation: Comparison of definitions and survey of algorithms for convex and concave hulls Generalized kernel framework for unsupervised spectral methods of dimensionality reduction Convex multi-task relationship learning using hinge loss Aggregating predictions vs. aggregating features for relational classification
×
引用
GB/T 7714-2015
复制
MLA
复制
APA
复制
导出至
BibTeX EndNote RefMan NoteFirst NoteExpress
×
×
提示
您的信息不完整,为了账户安全,请先补充。
现在去补充
×
提示
您因"违规操作"
具体请查看互助需知
我知道了
×
提示
现在去查看 取消
×
提示
确定
0
微信
客服QQ
Book学术公众号 扫码关注我们
反馈
×
意见反馈
请填写您的意见或建议
请填写您的手机或邮箱
已复制链接
已复制链接
快去分享给好友吧!
我知道了
×
扫码分享
扫码分享
Book学术官方微信
Book学术文献互助
Book学术文献互助群
群 号:481959085
Book学术
文献互助 智能选刊 最新文献 互助须知 联系我们:info@booksci.cn
Book学术提供免费学术资源搜索服务,方便国内外学者检索中英文文献。致力于提供最便捷和优质的服务体验。
Copyright © 2023 Book学术 All rights reserved.
ghs 京公网安备 11010802042870号 京ICP备2023020795号-1