Dimension reduction is the process of embedding high-dimensional data into a lower dimensional space to facilitate its analysis. In the Euclidean setting, one fundamental technique for dimension reduction is to apply a random linear map to the data. This dimension reduction procedure succeeds when it preserves certain geometric features of the set. The question is how large the embedding dimension must be to ensure that randomized dimension reduction succeeds with high probability. This paper studies a natural family of randomized dimension reduction maps and a large class of data sets. It proves that there is a phase transition in the success probability of the dimension reduction map as the embedding dimension increases. For a giv...
The coherence of a random matrix, which is defined to be the largest magnitude of the Pearson correl...
The spectra of random feature matrices provide essential information on the conditioning of the line...
Dimensionality reduction methods are widely used in informationprocessing systems to better understa...
Dimension reduction is the process of embedding high-dimensional data into a lower dimensional space...
This paper presents an improved analysis of a structured dimension-reduction map called the subsampl...
This paper presents an improved analysis of a structured dimension-reduction map called the subsampl...
Massive high-dimensional data sets are ubiquitous in all scientific disciplines. Extracting meaningf...
The concentrations of measure phenomena were discovered as the mathematical background to statistica...
The concentrations of measure phenomena were discovered as the mathematical background to statistica...
We consider the problem of efficient randomized dimensionality reduction with norm-preservation guar...
Random projection method is one of the important tools for the dimensionality reduction of data whic...
High-dimensional probability theory bears vital importance in the mathematical foundation ...
International audienceThis paper addresses the problem of dimension reduction of noisy data, more pr...
International audienceThis paper addresses the problem of dimension reduction of noisy data, more pr...
The coherence of a random matrix, which is defined to be the largest magnitude of the Pearson correl...
The coherence of a random matrix, which is defined to be the largest magnitude of the Pearson correl...
The spectra of random feature matrices provide essential information on the conditioning of the line...
Dimensionality reduction methods are widely used in informationprocessing systems to better understa...
Dimension reduction is the process of embedding high-dimensional data into a lower dimensional space...
This paper presents an improved analysis of a structured dimension-reduction map called the subsampl...
This paper presents an improved analysis of a structured dimension-reduction map called the subsampl...
Massive high-dimensional data sets are ubiquitous in all scientific disciplines. Extracting meaningf...
The concentrations of measure phenomena were discovered as the mathematical background to statistica...
The concentrations of measure phenomena were discovered as the mathematical background to statistica...
We consider the problem of efficient randomized dimensionality reduction with norm-preservation guar...
Random projection method is one of the important tools for the dimensionality reduction of data whic...
High-dimensional probability theory bears vital importance in the mathematical foundation ...
International audienceThis paper addresses the problem of dimension reduction of noisy data, more pr...
International audienceThis paper addresses the problem of dimension reduction of noisy data, more pr...
The coherence of a random matrix, which is defined to be the largest magnitude of the Pearson correl...
The coherence of a random matrix, which is defined to be the largest magnitude of the Pearson correl...
The spectra of random feature matrices provide essential information on the conditioning of the line...
Dimensionality reduction methods are widely used in informationprocessing systems to better understa...