Abstract. Numerous dimensionality reduction problems in data analysis involve the recovery of low-dimensional models or the learning of manifolds underlying sets of data. Many manifold learning methods require the estimation of the tangent space of the manifold at a point from locally available data samples. Local sampling conditions such as (i) the size of the neighborhood (sampling width) and (ii) the number of samples in the neighborhood (sampling density) affect the performance of learning algorithms. In this work, we propose a theoretical analysis of local sampling conditions for the estimation of the tangent space at a point P lying on a m-dimensional Riemannian manifold S in Rn. Assuming a smooth embedding of S in Rn, we estimate the...
nsid disc ratel we employ a greedy technique that partitions manifold samples into groups, which are...
Thesis (Ph.D.)--University of Washington, 2019High-dimensional data sets often have lower-dimensiona...
International audienceGiven an $n$-sample drawn on a submanifold $M \subset \mathbb{R}^D$, we derive...
Numerous dimensionality reduction problems in data analysis involve the recovery of low-dimensional ...
Numerous dimensionality reduction problems in data analysis involve the recovery of low-dimensional ...
Constructing an efficient parameterization of a large, noisy data set of points lying close to a smo...
Constructing an efficient parametrization of a large, noisy data set of points lying close to a smoo...
Constructing an efficient parametrization of a large, noisy data set of points lying close to a smoo...
We present a method to estimate the manifold dimension by analyzing the shape of simplices formed by...
The design and analysis of methods in signal processing is greatly impacted by the model being selec...
International audienceGeometric statistics aim at shifting the classical paradigm for inference from...
Recently there has been a lot of interest in geometri-cally motivated approaches to data analysis in...
International audienceWith the possibility of interpreting data using increasingly complex models, w...
dissertationIntrinsic dimension estimation is a fundamental problem in manifold learning. In applica...
Learning in high-dim. space is hard and expensive. Good news: intrinsic dimensionality is often low....
nsid disc ratel we employ a greedy technique that partitions manifold samples into groups, which are...
Thesis (Ph.D.)--University of Washington, 2019High-dimensional data sets often have lower-dimensiona...
International audienceGiven an $n$-sample drawn on a submanifold $M \subset \mathbb{R}^D$, we derive...
Numerous dimensionality reduction problems in data analysis involve the recovery of low-dimensional ...
Numerous dimensionality reduction problems in data analysis involve the recovery of low-dimensional ...
Constructing an efficient parameterization of a large, noisy data set of points lying close to a smo...
Constructing an efficient parametrization of a large, noisy data set of points lying close to a smoo...
Constructing an efficient parametrization of a large, noisy data set of points lying close to a smoo...
We present a method to estimate the manifold dimension by analyzing the shape of simplices formed by...
The design and analysis of methods in signal processing is greatly impacted by the model being selec...
International audienceGeometric statistics aim at shifting the classical paradigm for inference from...
Recently there has been a lot of interest in geometri-cally motivated approaches to data analysis in...
International audienceWith the possibility of interpreting data using increasingly complex models, w...
dissertationIntrinsic dimension estimation is a fundamental problem in manifold learning. In applica...
Learning in high-dim. space is hard and expensive. Good news: intrinsic dimensionality is often low....
nsid disc ratel we employ a greedy technique that partitions manifold samples into groups, which are...
Thesis (Ph.D.)--University of Washington, 2019High-dimensional data sets often have lower-dimensiona...
International audienceGiven an $n$-sample drawn on a submanifold $M \subset \mathbb{R}^D$, we derive...