Probabilistic methods for approximate archetypal analysis

Author:

Han Ruijian1,Osting Braxton2,Wang Dong34,Xu Yiming25

Affiliation:

1. Department of Statistics, The Chinese University of Hong Kong , Hong Kong , China

2. Department of Mathematics, University of Utah , Salt Lake City, UT , USA

3. School of Science and Engineering, The Chinese University of Hong Kong , Shenzhen , China

4. Guangdong Provincial Key Laboratory of Big Data Computing, The Chinese University of Hong Kong , Shenzhen , China

5. Scientific Computing and Imaging Institute, University of Utah , Salt Lake City, UT , USA

Abstract

Abstract Archetypal analysis (AA) is an unsupervised learning method for exploratory data analysis. One major challenge that limits the applicability of AA in practice is the inherent computational complexity of the existing algorithms. In this paper, we provide a novel approximation approach to partially address this issue. Utilizing probabilistic ideas from high-dimensional geometry, we introduce two preprocessing techniques to reduce the dimension and representation cardinality of the data, respectively. We prove that provided data are approximately embedded in a low-dimensional linear subspace and the convex hull of the corresponding representations is well approximated by a polytope with a few vertices, our method can effectively reduce the scaling of AA. Moreover, the solution of the reduced problem is near-optimal in terms of prediction errors. Our approach can be combined with other acceleration techniques to further mitigate the intrinsic complexity of AA. We demonstrate the usefulness of our results by applying our method to summarize several moderately large-scale datasets.

Funder

Hong Kong Research Grants Council

Chinese University of Hong Kong

National Science Foundation

National Natural Science Foundation of China

University Development Fund from The Chinese University of Hong Kong

Publisher

Oxford University Press (OUP)

Subject

Applied Mathematics,Computational Theory and Mathematics,Numerical Analysis,Statistics and Probability,Analysis

Reference45 articles.

1. A geometric approach to archetypal analysis via sparse projections;Abrol,2020

2. Blendenpik: supercharging LAPACK’s least-squares solver;Avron;SIAM J. Sci. Comput.,2010

3. A practical randomized CP tensor decomposition;Battaglino;SIAM J. Matrix Anal. Appl.,2018

4. Archetypal analysis as an autoencoder;Bauckhage,2015

5. Random projections for $k$-means clustering;Boutsidis;Advances in Neural Information Processing Systems,2010

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