Abstract:
Energy statistics was proposed by Székely in the 80’s inspired by Newton’s gravitational potential in classical mechanics and it provides a model-free hypothesis test for...Show MoreMetadata
Abstract:
Energy statistics was proposed by Székely in the 80’s inspired by Newton’s gravitational potential in classical mechanics and it provides a model-free hypothesis test for equality of distributions. In its original form, energy statistics was formulated in euclidean spaces. More recently, it was generalized to metric spaces of negative type. In this paper, we consider a formulation for the clustering problem using a weighted version of energy statistics in spaces of negative type. We show that this approach leads to a quadratically constrained quadratic program in the associated kernel space, establishing connections with graph partitioning problems and kernel methods in machine learning. To find local solutions of such an optimization problem, we propose kernel k-groups, which is an extension of Hartigan’s method to kernel spaces. Kernel k-groups is cheaper than spectral clustering and has the same computational cost as kernel k-means (which is based on Lloyd’s heuristic) but our numerical results show an improved performance, especially in higher dimensions. Moreover, we verify the efficiency of kernel k-groups in community detection in sparse stochastic block models which has fascinating applications in several areas of science.
Published in: IEEE Transactions on Pattern Analysis and Machine Intelligence ( Volume: 43, Issue: 12, 01 December 2021)
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- IEEE Keywords
- Index Terms
- Machine Learning ,
- Heuristic ,
- High-dimensional ,
- Optimization Problem ,
- Machine Learning Methods ,
- Equal Distribution ,
- Euclidean Space ,
- Community Detection ,
- Kernel Methods ,
- Types Of Spaces ,
- Spectral Clustering ,
- Clustering Problem ,
- Graph Partitioning ,
- Gravitational Potential ,
- Kernel Space ,
- Stochastic Block Model ,
- Székely ,
- Social Sciences ,
- Feature Space ,
- Clustering Method ,
- Reproducing Kernel Hilbert Space ,
- Gaussian Mixture Model ,
- Positive Semidefinite ,
- Gram Matrix ,
- Sparse Graph ,
- Maximum Mean Discrepancy ,
- Hilbert Space ,
- K-means Algorithm ,
- Real Networks ,
- Average Degree
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Machine Learning ,
- Heuristic ,
- High-dimensional ,
- Optimization Problem ,
- Machine Learning Methods ,
- Equal Distribution ,
- Euclidean Space ,
- Community Detection ,
- Kernel Methods ,
- Types Of Spaces ,
- Spectral Clustering ,
- Clustering Problem ,
- Graph Partitioning ,
- Gravitational Potential ,
- Kernel Space ,
- Stochastic Block Model ,
- Székely ,
- Social Sciences ,
- Feature Space ,
- Clustering Method ,
- Reproducing Kernel Hilbert Space ,
- Gaussian Mixture Model ,
- Positive Semidefinite ,
- Gram Matrix ,
- Sparse Graph ,
- Maximum Mean Discrepancy ,
- Hilbert Space ,
- K-means Algorithm ,
- Real Networks ,
- Average Degree
- Author Keywords