Abstract
Maximum margin clustering can be regarded as the direct extension of support vector machines to unsupervised learning scenarios. The goal is to partition unlabeled data into two classes such that a subsequent application of a support vector machine would yield the overall best result (with respect to the optimization problem associated with support vector machines). While being very appealing from a conceptual point of view, the combinatorial nature of the induced optimization problem renders a direct application of this concept difficult. In order to obtain efficient optimization schemes, various surrogates of the original problem definition have been proposed in the literature. In this work, we consider one of these variants, called unsupervised regularized least-squares classification, which is based on the square loss, and develop polynomial upper runtime bounds for the induced combinatorial optimization task. In particular, we show that for n patterns and kernel matrix of fixed rank r (with given eigendecomposition), one can obtain an optimal solution in O(nr) time for r ≤ 2 and in O(nr-1) time for r ≥ 3. The algorithmic framework is based on an interesting connection to the field of quadratic zero-one programming and permits the computation of exact solutions for the more general case of non-linear kernel functions in polynomial time. Keywords: Maximum Margin Clustering, Combinatorial Optimization, Unsupervised Learning.
Original language | English |
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Title of host publication | Asian Conference on Machine Learning |
Editors | Cheng Soon Ong, Tu Bao Ho |
Number of pages | 10 |
Volume | 29 |
Publication date | 2013 |
Pages | 62-71 |
Publication status | Published - 2013 |
Event | Asian Conference on Machine Learning (ACML) 2013 - The Australian National University, Canberra, Australia Duration: 13 Nov 2013 → 15 Nov 2013 Conference number: 5 |
Conference
Conference | Asian Conference on Machine Learning (ACML) 2013 |
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Number | 5 |
Location | The Australian National University |
Country/Territory | Australia |
City | Canberra |
Period | 13/11/2013 → 15/11/2013 |
Series | JMLR: Workshop and Conference Proceedings |
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Volume | 29 |