Estimating intrinsic dimension of data is an important problem in feature extraction and feature selection. It provides an estimation of the number of desired features. Principal Components Analysis (PCA) is a powerful tool in discovering the dimension of data sets with a linear structure; it, however, becomes ineffective when data have a nonlinear structure. In this paper, we propose a new PCA-based method to estimate the embedding dimension of data with nonlinear structures. Our method works by first finding a minimal cover of the data set, then performing PCA locally on each subset in the cover to obtain local intrinsic dimension estimations and finally giving the estimation result as the average of the local estimations. There are two m...
Intuitively, learning should be easier when the data points lie on a low-dimensional submanifold of ...
The size of datasets has been increasing rapidly both in terms of number of variables and number of ...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...
We analyze an algorithm based on principal component analysis (PCA) for detecting the dimension k of...
We propose an automated way of determining the optimal number of low-rank components in dimension re...
The problem of approximating multidimensional data with objects of lower dimension is a classical pr...
A new method for analyzing the intrinsic dimensionality (ID) of low dimensional manifolds in high di...
Identifying the minimal number of parameters needed to describe a dataset is a challenging problem k...
The high dimensionality of some real life signals makes the usage of the most common signal processi...
dissertationIntrinsic dimension estimation is a fundamental problem in manifold learning. In applica...
Principal Component Analysis (PCA) has been widely used for manifold description and dimensionality ...
Video and image datasets can often be described by a small number of parameters, even though each im...
Most high-dimensional real-life data exhibit some dependencies such that data points do not populate...
We consider the problems of classification and intrinsic dimension estimation on image data. A new s...
Abstract. Estimating the intrinsic dimensionality (ID) of an intrinsically low (d-) dimensional data...
Intuitively, learning should be easier when the data points lie on a low-dimensional submanifold of ...
The size of datasets has been increasing rapidly both in terms of number of variables and number of ...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...
We analyze an algorithm based on principal component analysis (PCA) for detecting the dimension k of...
We propose an automated way of determining the optimal number of low-rank components in dimension re...
The problem of approximating multidimensional data with objects of lower dimension is a classical pr...
A new method for analyzing the intrinsic dimensionality (ID) of low dimensional manifolds in high di...
Identifying the minimal number of parameters needed to describe a dataset is a challenging problem k...
The high dimensionality of some real life signals makes the usage of the most common signal processi...
dissertationIntrinsic dimension estimation is a fundamental problem in manifold learning. In applica...
Principal Component Analysis (PCA) has been widely used for manifold description and dimensionality ...
Video and image datasets can often be described by a small number of parameters, even though each im...
Most high-dimensional real-life data exhibit some dependencies such that data points do not populate...
We consider the problems of classification and intrinsic dimension estimation on image data. A new s...
Abstract. Estimating the intrinsic dimensionality (ID) of an intrinsically low (d-) dimensional data...
Intuitively, learning should be easier when the data points lie on a low-dimensional submanifold of ...
The size of datasets has been increasing rapidly both in terms of number of variables and number of ...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...