학술논문

Co-clustering contaminated data: a robust model-based approach
Document Type
Original Paper
Source
Advances in Data Analysis and Classification: Theory, Methods, and Applications in Data Science. 18(1):121-161
Subject
Co-clustering
Robustness
Trimming
LBM
CEM algorithm
62F35
62H30
Language
English
ISSN
1862-5347
1862-5355
Abstract
The exploration and analysis of large high-dimensional data sets calls for well-thought techniques to extract the salient information from the data, such as co-clustering. Latent block models cast co-clustering in a probabilistic framework that extends finite mixture models to the two-way setting. Real-world data sets often contain anomalies which could be of interest per se and may make the results provided by standard, non-robust procedures unreliable. Also estimation of latent block models can be heavily affected by contaminated data. We propose an algorithm to compute robust estimates for latent block models. Experiments on both simulated and real data show that our method is able to resist high levels of contamination and can provide additional insight into the data by highlighting possible anomalies.