Random projection method is one of the important tools for the dimensionality reduction of data which can be made efficient with strong error guarantees. In this thesis, we focus on linear transforms of high dimensional data to the low dimensional space satisfying the Johnson-Lindenstrauss lemma. In addition, we also prove some theoretical results relating to the projections that are of interest when applying them in practical applications. We show how the technique can be applied to synthetic data with probabilistic guarantee on the pairwise distance. The connection between dimensionality reduction and compressed sensing is also discussed
The enormous power of modern computers has made possible the statistical modelling of data with dime...
Massive high-dimensional data sets are ubiquitous in all scientific disciplines. Extracting meaningf...
The topic of this lecture is dimensionality reduction. Many problems have been efficiently solved in...
With the quick progression of technology and the increasing need to process large data, there has be...
With the quick progression of technology and the increasing need to process large data, there has be...
Johnson and Lindenstrauss (1984) proved that any finite set of data in a high dimensional space can ...
Dimensionality reduction methods are widely used in informationprocessing systems to better understa...
The story of this work is dimensionality reduction. Dimensionality reduction is a method that takes...
Random projection is a method used to reduce dimensionality of desired objects with pair-wise distan...
Johnson and Lindenstrauss (1984) proved that any finite set of data in a high dimensional space can b...
Random projections is a technique used primarily in dimension reduction, in order to estimate distan...
We consider the problem of efficient randomized dimensionality reduction with norm-preservation guar...
In this paper we present a technique to speed up ICA based on the idea of reducing the dimensionali...
In this paper we present a technique to speed up ICA based on the idea of reducing the dimensionalit...
We propose methods for improving both the accuracy and efficiency of random projections, the pop...
The enormous power of modern computers has made possible the statistical modelling of data with dime...
Massive high-dimensional data sets are ubiquitous in all scientific disciplines. Extracting meaningf...
The topic of this lecture is dimensionality reduction. Many problems have been efficiently solved in...
With the quick progression of technology and the increasing need to process large data, there has be...
With the quick progression of technology and the increasing need to process large data, there has be...
Johnson and Lindenstrauss (1984) proved that any finite set of data in a high dimensional space can ...
Dimensionality reduction methods are widely used in informationprocessing systems to better understa...
The story of this work is dimensionality reduction. Dimensionality reduction is a method that takes...
Random projection is a method used to reduce dimensionality of desired objects with pair-wise distan...
Johnson and Lindenstrauss (1984) proved that any finite set of data in a high dimensional space can b...
Random projections is a technique used primarily in dimension reduction, in order to estimate distan...
We consider the problem of efficient randomized dimensionality reduction with norm-preservation guar...
In this paper we present a technique to speed up ICA based on the idea of reducing the dimensionali...
In this paper we present a technique to speed up ICA based on the idea of reducing the dimensionalit...
We propose methods for improving both the accuracy and efficiency of random projections, the pop...
The enormous power of modern computers has made possible the statistical modelling of data with dime...
Massive high-dimensional data sets are ubiquitous in all scientific disciplines. Extracting meaningf...
The topic of this lecture is dimensionality reduction. Many problems have been efficiently solved in...