Clustering of Data with Missing Entries

01/03/2018
by   Sunrita Poddar, et al.
0

The analysis of large datasets is often complicated by the presence of missing entries, mainly because most of the current machine learning algorithms are designed to work with full data. The main focus of this work is to introduce a clustering algorithm, that will provide good clustering even in the presence of missing data. The proposed technique solves an ℓ_0 fusion penalty based optimization problem to recover the clusters. We theoretically analyze the conditions needed for the successful recovery of the clusters. We also propose an algorithm to solve a relaxation of this problem using saturating non-convex fusion penalties. The method is demonstrated on simulated and real datasets, and is observed to perform well in the presence of large fractions of missing entries.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/06/2017

Clustering of Data with Missing Entries using Non-convex Fusion Penalties

The presence of missing entries in data often creates challenges for pat...
research
12/15/2019

Polynomial Matrix Completion for Missing Data Imputation and Transductive Learning

This paper develops new methods to recover the missing entries of a high...
research
02/03/2023

Support Recovery in Sparse PCA with Non-Random Missing Data

We analyze a practical algorithm for sparse PCA on incomplete and noisy ...
research
01/29/2012

A robust and sparse K-means clustering algorithm

In many situations where the interest lies in identifying clusters one m...
research
07/11/2016

On Deterministic Conditions for Subspace Clustering under Missing Data

In this paper we present deterministic conditions for success of sparse ...
research
10/19/2020

EPTAS for k-means Clustering of Affine Subspaces

We consider a generalization of the fundamental k-means clustering for d...
research
11/18/2019

Safe squeezing for antisparse coding

Spreading the information over all coefficients of a representation is a...

Please sign up or login with your details

Forgot password? Click here to reset