We present a one-pass sparsified Gaussian mixture model (SGMM). Given data points in dimensions, , the model fits Gaussian distributions to and (softly) classifies each point to these clusters. After paying an up-front cost of to precondition the data, we subsample entries of each data point and discard the full -dimensional data. SGMM operates in time per iteration for diagonal or spherical covariances, independent of , while estimating the model parameters in the full -dimensional space, making it one-pass and hence suitable for streaming data. We derive the maximum likelihood estimators for the parameters in the sparsified regime, demonstrate clustering on synthetic and real data, and show that SGMM is faster than GMM while preserving accuracy.
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