We consider a problem of manifold estimation from noisy observations. Many manifold learning procedures locally approximate a manifold by a weighted average over a small neighborhood. However, in the presence of large noise, the assigned weights become so corrupted that the averaged estimate shows very poor performance. We suggest a structure-adaptive procedure, which simultaneously reconstructs a smooth manifold and estimates projections of the point cloud onto this manifold. The proposed approach iteratively refines the weights on each step, using the structural information obtained at previous steps. After several iterations, we obtain nearly "oracle" weights, so that the final estimates are nearly efficient even in the presence of relatively large noise. In our theoretical study, we establish tight lower and upper bounds proving asymptotic optimality of the method for manifold estimation under the Hausdorff loss, provided that the noise degrades to zero fast enough.
翻译:我们从吵闹的观测中考虑一个多重估算问题。 许多多重学习程序在本地以小邻居的加权平均值近似于方块。 但是,在有大噪音的情况下,分配的重量变得如此腐蚀,以致于平均估计的性能极差。 我们建议采用结构调整程序,同时重建一个平滑的倍数,并估计点云的预测值。 拟议的方法利用先前步骤获得的结构信息,迭接地完善了每个步骤的权重。 在几次反复演练后,我们获得了几乎“ 错觉” 的权重,因此最终估计几乎是有效的,即使有相对大的噪音。 在我们的理论研究中,我们设置了近低和上界限,证明在霍斯多夫夫损失下多种估算方法的最佳性,只要噪音迅速降为零。