Kernel Mean Estimation by Marginalized Corrupted Distributions (2107.04855v1)
Abstract: Estimating the kernel mean in a reproducing kernel Hilbert space is a critical component in many kernel learning algorithms. Given a finite sample, the standard estimate of the target kernel mean is the empirical average. Previous works have shown that better estimators can be constructed by shrinkage methods. In this work, we propose to corrupt data examples with noise from known distributions and present a new kernel mean estimator, called the marginalized kernel mean estimator, which estimates kernel mean under the corrupted distribution. Theoretically, we show that the marginalized kernel mean estimator introduces implicit regularization in kernel mean estimation. Empirically, we show on a variety of datasets that the marginalized kernel mean estimator obtains much lower estimation error than the existing estimators.
- Xiaobo Xia (44 papers)
- Shuo Shan (3 papers)
- Mingming Gong (135 papers)
- Nannan Wang (106 papers)
- Fei Gao (458 papers)
- Haikun Wei (6 papers)
- Tongliang Liu (251 papers)