Preconditioned Data Sparsification for Big Data with Applications to PCA and K-means
Pourkamali-Anaraki, Farhad, Becker, Stephen
We analyze a compression scheme for large data sets that randomly keeps a small percentage of the components of each data sample. The benefit is that the output is a sparse matrix and therefore subsequent processing, such as PCA or K-means, is significantly faster, especially in a distributed-data setting. Furthermore, the sampling is single-pass and applicable to streaming data. The sampling mechanism is a variant of previous methods proposed in the literature combined with a randomized preconditioning to smooth the data. We provide guarantees for PCA in terms of the covariance matrix, and guarantees for K-means in terms of the error in the center estimators at a given step. We present numerical evidence to show both that our bounds are nearly tight and that our algorithms provide a real benefit when applied to standard test data sets, as well as providing certain benefits over related sampling approaches.
Sep-19-2016
- Country:
- North America > United States > Colorado > Boulder County > Boulder (0.14)
- Genre:
- Research Report (0.64)
- Technology: