Random Projection is one of the most popular and successful dimensionality reduction algorithms for large volumes of data. However, given its stochastic nature, different initializations of the projection matrix can lead to very different levels of performance. This paper presents a guided random search algorithm to mitigate this problem. The proposed method uses a small number of training data samples to iteratively adjust a projection matrix, improving its performance on similarly distributed data. Experimental results show that projection matrices generated with the proposed method result in a better preservation of distances between data samples. Conveniently, this is achieved while preserving the database-friendliness of the projection...
There has been considerable interest in random projections, an approximate algorithm for estimating ...
Random projection has been widely used in data classification. It maps high-dimensional data into a ...
In this paper, a dimensionality reduction is achieved in large datasets using the proposed distance ...
Random Projection is one of the most popular and successful dimensionality reduction algorithms for ...
Random Projection is one of the most popular and successful dimensionality reduction algorithms for ...
Random Projection is one of the most popular and successful dimensionality reduction algorithms for ...
[EN] Random Projection is one of the most popular and successful dimensionality reduction algorithms...
Random projections is a technique used primarily in dimension reduction, in order to estimate distan...
As a typical dimensionality reduction technique, random projection can be simply implemented with li...
As a typical dimensionality reduction technique, random projection has been widely applied in a vari...
As a typical dimensionality reduction technique, random projection has been widely applied in a vari...
We propose methods for improving both the accuracy and efficiency of random projections, the pop...
Abstract — Random projection has been widely used in data classification. It maps high-dimensional d...
Random projection is a simple geometric technique for reducing the dimensionality of a set of points...
Random projections reduce the dimension of a set of vectors while preserving structural information,...
There has been considerable interest in random projections, an approximate algorithm for estimating ...
Random projection has been widely used in data classification. It maps high-dimensional data into a ...
In this paper, a dimensionality reduction is achieved in large datasets using the proposed distance ...
Random Projection is one of the most popular and successful dimensionality reduction algorithms for ...
Random Projection is one of the most popular and successful dimensionality reduction algorithms for ...
Random Projection is one of the most popular and successful dimensionality reduction algorithms for ...
[EN] Random Projection is one of the most popular and successful dimensionality reduction algorithms...
Random projections is a technique used primarily in dimension reduction, in order to estimate distan...
As a typical dimensionality reduction technique, random projection can be simply implemented with li...
As a typical dimensionality reduction technique, random projection has been widely applied in a vari...
As a typical dimensionality reduction technique, random projection has been widely applied in a vari...
We propose methods for improving both the accuracy and efficiency of random projections, the pop...
Abstract — Random projection has been widely used in data classification. It maps high-dimensional d...
Random projection is a simple geometric technique for reducing the dimensionality of a set of points...
Random projections reduce the dimension of a set of vectors while preserving structural information,...
There has been considerable interest in random projections, an approximate algorithm for estimating ...
Random projection has been widely used in data classification. It maps high-dimensional data into a ...
In this paper, a dimensionality reduction is achieved in large datasets using the proposed distance ...