Tree-structured data usually contain both topological and geometrical information, and are necessarily considered on manifold instead of euclidean space for appropriate data parameterization and analysis. In this study, we propose a novel tree-structured data parameterization, called Topology-Attribute matrix (T-A matrix), so the data clustering task can be conducted on matrix manifold. We incorporate the structure constraints embedded in data into the non-negative matrix factorization method to determine meta-trees from the T-A matrix, and the signature vector of each single tree can then be extracted by meta-tree decomposition. The meta-tree space turns out to be a cone space, in which we explore the distance metric and implement the clustering algorithm based on the concepts like Fréchet mean. Finally, the T-A matrix based clustering (TAMBAC) framework is evaluated and compared using both simulated data and real retinal images to illustrate its efficiency and accuracy.
Clustering Tree-Structured Data on Manifold
Published 2015 in IEEE Transactions on Pattern Analysis and Machine Intelligence
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- Publication year
2015
- Venue
IEEE Transactions on Pattern Analysis and Machine Intelligence
- Publication date
2015-07-20
- Fields of study
Mathematics, Computer Science, Medicine
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- External record
- Source metadata
Semantic Scholar, PubMed
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