Density Estimation via Discrepancy Based Adaptive Sequential Partition
Li, Dangna, Yang, Kun, Wong, Wing Hung
–Neural Information Processing Systems
Given $iid$ observations from an unknown continuous distribution defined on some domain $\Omega$, we propose a nonparametric method to learn a piecewise constant function to approximate the underlying probability density function. Our density estimate is a piecewise constant function defined on a binary partition of $\Omega$. The key ingredient of the algorithm is to use discrepancy, a concept originates from Quasi Monte Carlo analysis, to control the partition process. The resulting algorithm is simple, efficient, and has provable convergence rate. We demonstrate empirically its efficiency as a density estimation method. We also show how it can be utilized to find good initializations for k-means.
Neural Information Processing Systems
Dec-31-2016
- Country:
- North America > United States > California > Santa Clara County (0.28)
- Industry:
- Health & Medicine (0.94)
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