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  4. MSM: Multi-stage Multicuts for Scalable Image Clustering
 
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2021
Conference Paper
Title

MSM: Multi-stage Multicuts for Scalable Image Clustering

Abstract
Correlation Clustering, also called the minimum cost Multicut problem, is the process of grouping data by pairwise similarities. It has proven to be effective on clustering problems, where the number of classes is unknown. However, not only is the Multicut problem NP-hard, an undirected graph G with n vertices representing single images has at most n(n-1)2 edges, thus making it challenging to implement correlation clustering for large datasets. In this work, we propose Multi-Stage Multicuts (MSM) as a scalable approach for image clustering. Specifically, we solve minimum cost Multicut problems across multiple distributed compute units. Our approach not only allows to solve problem instances which are too large to fit into the shared memory of a single compute node, but it also achieves significant speedups while preserving the clustering accuracy at the same time. We evaluate our proposed method on the CIFAR10 and CelebA image datasets. Furthermore, we also provide the proof for the theoretical speedup.
Author(s)
Ho, K.
Chatzimichailidis, A.
Keuper, M.
Keuper, J.
Mainwork
High Performance Computing  
Conference
High Performance Conference 2021  
DOI
10.1007/978-3-030-90539-2_18
Language
English
Fraunhofer-Institut für Techno- und Wirtschaftsmathematik ITWM  
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