Inspired by the use of random projections in biological sensing systems, we present a new algorithm for processing data in classification problems. This is based on observations of the human brain and the fruit fly’s olfactory system and involves randomly projecting data into a space of greatly increased dimension before applying a cap operation to truncate the smaller entries. This leads to a simple algorithm that is very computationally efficient and can be used to either give a sparse representation with minimal loss in classification accuracy or give improved robustness, in the sense that classification accuracy is improved when noise is added to the data. This is demonstrated with numerical experiments, which supplement theoretical res...
It has been recently shown via simulations [Dasgupta et al., 2017] that random projection followed b...
As a typical dimensionality reduction technique, random projection can be simply implemented with li...
We prove theoretical guarantees for an averaging-ensemble of randomly projected Fisher linear discri...
Inspired by the use of random projections in biological sensing systems, we present a new algorithm ...
Representing signals as linear combinations of basis vectors sparsely selected from an overcom-plete...
As a typical dimensionality reduction technique, random projection has been widely applied in a vari...
The mushroom body is the key network for the representation of learned olfactory stimuli in Drosophi...
International audienceThe representation of images in the brain is known to be sparse. That is, as n...
International audienceNatural images follow statistics inherited by the structure of our physical (v...
We propose a framework for exploiting dimension-reducing random projections in detection and classif...
© Yael Hitron, Nancy Lynch, Cameron Musco, and Merav Parter. We study input compression in a biologi...
Despite progress in understanding the organization and function of neural sensory systems, fundament...
An intriguing geometric primitive, "expand-and-sparsify", has been found in the olfactory system of ...
The escalating statistical variation of device behaviors in the nano-scale era has led to a search f...
The theory of compressed sensing shows that samples in the form of random projections are optimal fo...
It has been recently shown via simulations [Dasgupta et al., 2017] that random projection followed b...
As a typical dimensionality reduction technique, random projection can be simply implemented with li...
We prove theoretical guarantees for an averaging-ensemble of randomly projected Fisher linear discri...
Inspired by the use of random projections in biological sensing systems, we present a new algorithm ...
Representing signals as linear combinations of basis vectors sparsely selected from an overcom-plete...
As a typical dimensionality reduction technique, random projection has been widely applied in a vari...
The mushroom body is the key network for the representation of learned olfactory stimuli in Drosophi...
International audienceThe representation of images in the brain is known to be sparse. That is, as n...
International audienceNatural images follow statistics inherited by the structure of our physical (v...
We propose a framework for exploiting dimension-reducing random projections in detection and classif...
© Yael Hitron, Nancy Lynch, Cameron Musco, and Merav Parter. We study input compression in a biologi...
Despite progress in understanding the organization and function of neural sensory systems, fundament...
An intriguing geometric primitive, "expand-and-sparsify", has been found in the olfactory system of ...
The escalating statistical variation of device behaviors in the nano-scale era has led to a search f...
The theory of compressed sensing shows that samples in the form of random projections are optimal fo...
It has been recently shown via simulations [Dasgupta et al., 2017] that random projection followed b...
As a typical dimensionality reduction technique, random projection can be simply implemented with li...
We prove theoretical guarantees for an averaging-ensemble of randomly projected Fisher linear discri...