articleApr 26, 2010Closed access
Web-scale k-means clustering
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Abstract
We present two modifications to the popular k-means clustering algorithm to address the extreme requirements for latency, scalability, and sparsity encountered in user-facing web applications. First, we propose the use of mini-batch optimization for k-means clustering. This reduces computation cost by orders of magnitude compared to the classic batch algorithm while yielding significantly better solutions than online stochastic gradient descent. Second, we achieve sparsity with projected gradient descent, and give a fast ε-accurate projection onto the L1-ball. Source code is freely available: http://code.google.com/p/sofia-ml
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Topics
Keywords
- Computer science
- Cluster analysis
- Scalability
- Computation
- Gradient descent
- Stochastic gradient descent
- Code (set theory)
- Web application
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