Intuitively, learning should be easier when the data points lie on a low-dimensional submanifold of the input space. Recently there has been a growing interest in algorithms that aim to exploit such geometrical properties of the data. Oftentimes these algorithms require estimating the dimension of the manifold first. In this paper we propose an algorithm for dimension estimation and study its finite-sample behaviour. The algorithm estimates the dimension locally around the data points using nearest neighbor techniques and then combines these local estimates. We show that the rate of convergence of the resulting estimate is independent of the dimension of the input space and hence the algorithm is “manifold-adaptive”. Thus, when the manifold...
Manifold learning has gained in recent years a great attention in facing the problem of dimensionali...
Manifold learning has gained in recent years a great attention in facing the problem of dimensionali...
The information explosion of the past few decades has created tremendous opportunities for Machine L...
Recently, there have been several advances in the machine learning and pattern recognition communiti...
We introduce the adaptive neighborhood graph as a data structure for modeling a smooth manifold M em...
Abstract—This paper proposes a new approach to analyze high-dimensional data set using low-dimension...
dissertationIntrinsic dimension estimation is a fundamental problem in manifold learning. In applica...
We introduce the adaptive neighborhood graph as a data structure for modeling a smooth manifold M em...
We are increasingly confronted with very high dimensional data from speech,images, genomes, and othe...
Manifold learning is a popular recent approach to nonlinear dimensionality reduction. Algorithms for...
In many machine learning applications, data sets are in a high dimensional space but have a low-dime...
We propose a novel method for linear dimensionality reduction of manifold modeled data. First, we sh...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...
Manifold learning has gained in recent years a great attention in facing the problem of dimensionali...
Manifold learning has gained in recent years a great attention in facing the problem of dimensionali...
Manifold learning has gained in recent years a great attention in facing the problem of dimensionali...
Manifold learning has gained in recent years a great attention in facing the problem of dimensionali...
The information explosion of the past few decades has created tremendous opportunities for Machine L...
Recently, there have been several advances in the machine learning and pattern recognition communiti...
We introduce the adaptive neighborhood graph as a data structure for modeling a smooth manifold M em...
Abstract—This paper proposes a new approach to analyze high-dimensional data set using low-dimension...
dissertationIntrinsic dimension estimation is a fundamental problem in manifold learning. In applica...
We introduce the adaptive neighborhood graph as a data structure for modeling a smooth manifold M em...
We are increasingly confronted with very high dimensional data from speech,images, genomes, and othe...
Manifold learning is a popular recent approach to nonlinear dimensionality reduction. Algorithms for...
In many machine learning applications, data sets are in a high dimensional space but have a low-dime...
We propose a novel method for linear dimensionality reduction of manifold modeled data. First, we sh...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...
Manifold learning has gained in recent years a great attention in facing the problem of dimensionali...
Manifold learning has gained in recent years a great attention in facing the problem of dimensionali...
Manifold learning has gained in recent years a great attention in facing the problem of dimensionali...
Manifold learning has gained in recent years a great attention in facing the problem of dimensionali...
The information explosion of the past few decades has created tremendous opportunities for Machine L...