Deep Clustering with Measure Propagation
Minhua Chen, Badrinath Jayakumar, Padmasundari Gopalakrishnan, Qiming, Huang, Michael Johnston, and Patrick Haffner

TL;DR
This paper introduces DECAMP, a novel deep clustering method that integrates measure propagation to better preserve local geometry in the latent space, improving unsupervised clustering performance.
Contribution
DECAMP combines deep representation learning with measure propagation, a graph regularization technique, to enhance unsupervised clustering by preserving local neighborhood structure.
Findings
DECAMP achieves 79% accuracy on Stackoverflow dataset.
DECAMP outperforms existing baselines by about 5%.
DECAMP is effective for short text clustering.
Abstract
Deep models have improved state-of-the-art for both supervised and unsupervised learning. For example, deep embedded clustering (DEC) has greatly improved the unsupervised clustering performance, by using stacked autoencoders for representation learning. However, one weakness of deep modeling is that the local neighborhood structure in the original space is not necessarily preserved in the latent space. To preserve local geometry, various methods have been proposed in the supervised and semi-supervised learning literature (e.g., spectral clustering and label propagation) using graph Laplacian regularization. In this paper, we combine the strength of deep representation learning with measure propagation (MP), a KL-divergence based graph regularization method originally used in the semi-supervised scenario. The main assumption of MP is that if two data points are close in the original…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Topic Modeling · Text and Document Classification Technologies
MethodsSpectral Clustering · Solana Customer Service Number +1-833-534-1729
