Minimax Rates for Estimating the Dimension of a Manifold

Many algorithms in machine learning and computational geometry require, as input, the intrinsic dimension of the manifold that supports the probability distribution of the data. This parameter is rarely known and therefore has to be estimated. We characterize the statistical difficulty of this problem by deriving upper and lower bounds on the minimax rate for estimating the dimension. First, we consider the problem of testing the hypothesis that the support of the data-generating probability distribution is a well-behaved manifold of intrinsic dimension $d_1$ versus the alternative that it is of dimension $d_2$, with $d_{1}<d_{2}$. With an i.i.d. sample of size $n$, we provide an upper bound on the probability of choosing the wrong dimension of $O\left( n^{-\left(d_{2}/d_{1}-1-\epsilon\right)n} \right)$, where $\epsilon$ is an arbitrarily small positive number. The proof is based on bounding the length of the traveling salesman path through the data points. We also demonstrate a lower bound of $\Omega \left( n^{-(2d_{2}-2d_{1}+\epsilon)n} \right)$, by applying Le Cam's lemma with a specific set of $d_{1}$-dimensional probability distributions. We then extend these results to get minimax rates for estimating the dimension of well-behaved manifolds. We obtain an upper bound of order $O \left( n^{-(\frac{1}{m-1}-\epsilon)n} \right)$ and a lower bound of order $\Omega \left( n^{-(2+\epsilon)n} \right)$, where $m$ is the embedding dimension.

[1]  John M. Lee Introduction to Topological Manifolds , 2000 .

[2]  Mauro Maggioni,et al.  Multiscale Estimation of Intrinsic Dimensionality of Data Sets , 2009, AAAI Fall Symposium: Manifold Learning and Its Applications.

[3]  L. Rosasco,et al.  Multiscale Geometric Methods for Estimating Intrinsic Dimension , 2010 .

[4]  Antonino Staiano,et al.  Intrinsic dimension estimation: Advances and open problems , 2016, Inf. Sci..

[5]  John M. Lee Introduction to Smooth Manifolds , 2002 .

[6]  Yunqian Ma,et al.  Manifold Learning Theory and Applications , 2011 .

[7]  Richard Bellman,et al.  Adaptive Control Processes: A Guided Tour , 1961, The Mathematical Gazette.

[8]  Alfred O. Hero,et al.  Optimized intrinsic dimension estimator using nearest neighbor graphs , 2010, 2010 IEEE International Conference on Acoustics, Speech and Signal Processing.

[9]  Peter J. Bickel,et al.  Maximum Likelihood Estimation of Intrinsic Dimension , 2004, NIPS.

[10]  Matthias Hein,et al.  Intrinsic dimensionality estimation of submanifolds in Rd , 2005, ICML.

[11]  Alexandre B. Tsybakov,et al.  Introduction to Nonparametric Estimation , 2008, Springer series in statistics.

[12]  Stephen Smale,et al.  Finding the Homology of Submanifolds with High Confidence from Random Samples , 2008, Discret. Comput. Geom..

[13]  V. Koltchinskii Empirical geometry of multivariate data: a deconvolution approach , 2000 .

[14]  Alessandro Rinaldo,et al.  Estimating the reach of a manifold , 2017, Electronic Journal of Statistics.

[15]  Alessandro Rozza,et al.  Novel high intrinsic dimensionality estimators , 2012, Machine Learning.

[16]  J. Michael Steele 2. Concentration of Measure and the Classical Theorems , 1997 .

[17]  M. Bridson,et al.  Metric Spaces of Non-Positive Curvature , 1999 .

[18]  Svetlana Lazebnik,et al.  Estimation of Intrinsic Dimensionality Using High-Rate Vector Quantization , 2005, NIPS.