Simultaneous Grouping and Denoising via Sparse Convex Wavelet Clustering

Type: Preprint

Publication Date: 2021-06-05

Citations: 3

DOI: https://doi.org/10.1109/dslw51110.2021.9523413

Download PDF

Abstract

Clustering is a ubiquitous problem in data science and signal processing. In many applications where we observe noisy signals, it is common practice to first denoise the data, perhaps using wavelet denoising, and then to apply a clustering algorithm. In this paper, we develop a sparse convex wavelet clustering approach that simultaneously denoises and discovers groups. Our approach utilizes convex fusion penalties to achieve agglomeration and group-sparse penalties to denoise through sparsity in the wavelet domain. In contrast to common practice which denoises then clusters, our method is a unified, convex approach that performs both simultaneously. Our method yields denoised (wavelet-sparse) cluster centroids that both improve interpretability and data compression. We demonstrate our method on synthetic examples and in an application to NMR spectroscopy.

Locations

  • arXiv (Cornell University) - View - PDF
  • DataCite API - View

Similar Works

Action Title Year Authors
+ Simultaneous Grouping and Denoising via Sparse Convex Wavelet Clustering 2020 Michael Weylandt
T. Mitchell Roddenberry
Genevera I. Allen
+ A Penalty Function Promoting Individual Sparsity in Groups. 2016 Ä°lker Bayram
Savaskan Bulek
+ PDF Chat Splitting Methods For Convex Bi-Clustering And Co-Clustering 2019 Michael Weylandt
+ Solving OSCAR regularization problems by proximal splitting algorithms 2013 Xiangrong Zeng
MĂĄrio A. T. Figueiredo
+ PDF Chat Sparse Convex Clustering 2017 Binhuan Wang
Yilong Zhang
Will Wei Sun
Yixin Fang
+ PDF Chat Splitting Methods for Convex Clustering 2014 C. Eric
Kenneth Lange
+ Convex Coding 2012 David M. Bradley
J. Andrew Bagnell
+ Robust convex clustering: How does fusion penalty enhance robustness? 2019 Qiang Sun
Archer Gong Zhang
Chenyu Liu
Kean Ming Tan
+ Convex Coding 2012 David M. Bradley
J. Andrew Bagnell
+ Clustering using Max-norm Constrained Optimization 2012 Ali Jalali
Nathan Srebro
+ PDF Chat A Penalty Function Promoting Sparsity Within and Across Groups 2017 Ä°lker Bayram
Savaskan Bulek
+ Convex Approaches to Model Wavelet Sparsity Patterns 2011 Nikhil Rao
Robert D. Nowak
Stephen J. Wright
Nick Kingsbury
+ Convex Approaches to Model Wavelet Sparsity Patterns 2011 Nikhil Rao
Robert D. Nowak
Stephen J. Wright
Nick Kingsbury
+ Convex Clustering through MM: An Efficient Algorithm to Perform Hierarchical Clustering 2022 Daniel J. W. Touw
Patrick J. F. Groenen
Yoshikazu Terada
+ On convex combinations of norms for group sparsity 2011 Ä°lker Bayram
+ Clustering Noisy Signals with Structured Sparsity Using Time-Frequency Representation 2015 Tom Hope
Avishai Wagner
Or Zuk
+ Clustering using Max-norm Constrained Optimization 2012 Ali Jalali
Nathan Srebro
+ Convex Hierarchical Clustering for Graph-Structured Data. 2019 Claire Donnat
Susan Holmes
+ Supervised Convex Clustering 2020 Minjie Wang
Tianyi Yao
Genevera I. Allen
+ PDF Chat Group-Sparse Signal Denoising: Non-Convex Regularization, Convex Optimization 2014 Po-Yu Chen
Ivan Selesnick