Despite the widely-spread consensus on the brain complexity, sprouts of the single neuron revolution emerged in neuroscience in the 1970s. They brought many unexpected discoveries, including grandmother or concept cells and sparse coding of information in the brain. In machine learning for a long time, the famous curse of dimensionality seemed to be an unsolvable problem. Nevertheless, the idea of the blessing of dimensionality becomes gradually more and more popular. Ensembles of non-interacting or weakly interacting simple units prove to be an effective tool for solving essentially multidimensional problems. This approach is especially useful for one-shot (non-iterative) correction of errors in large legacy artificial intelligence syste...
How do humans and other animals learn new tasks? A wave of brain recording studies has investigated ...
Understanding how the statistical and geometric properties of neural activations relate to network p...
Learning about a causal or statistical association depends on comparing frequencies of joint occurre...
Complexity is an indisputable, well-known, and broadly accepted feature of the brain. Despite the ap...
In their review article (this issue) [1], Gorban, Makarov and Tyukin develop a successful effort to ...
High-dimensional data and high-dimensional representations of reality are inherent features of moder...
Codifying memories is one of the fundamental problems of modern Neuroscience. The functional mechani...
If spikes are the medium, what is the message? Answering that question is driving the development of...
Projections from the study of the human universe onto the study of the self-organizing brain are her...
The concentrations of measure phenomena were discovered as the mathematical background to statistica...
Artificial intelligence algorithms are capable of fantastic exploits, yet they are still grossly ine...
Recent studies have applied dimensionality reduction methods to understand how the multi-dimensional...
Experience with complex systems more primitive than the brain teaches important lessons about big da...
Neuroscientists are generating data sets of enormous size, which are matching the complexity of real...
Codifying memories is one of the fundamental problems of modern Neuroscience. The functional mechani...
How do humans and other animals learn new tasks? A wave of brain recording studies has investigated ...
Understanding how the statistical and geometric properties of neural activations relate to network p...
Learning about a causal or statistical association depends on comparing frequencies of joint occurre...
Complexity is an indisputable, well-known, and broadly accepted feature of the brain. Despite the ap...
In their review article (this issue) [1], Gorban, Makarov and Tyukin develop a successful effort to ...
High-dimensional data and high-dimensional representations of reality are inherent features of moder...
Codifying memories is one of the fundamental problems of modern Neuroscience. The functional mechani...
If spikes are the medium, what is the message? Answering that question is driving the development of...
Projections from the study of the human universe onto the study of the self-organizing brain are her...
The concentrations of measure phenomena were discovered as the mathematical background to statistica...
Artificial intelligence algorithms are capable of fantastic exploits, yet they are still grossly ine...
Recent studies have applied dimensionality reduction methods to understand how the multi-dimensional...
Experience with complex systems more primitive than the brain teaches important lessons about big da...
Neuroscientists are generating data sets of enormous size, which are matching the complexity of real...
Codifying memories is one of the fundamental problems of modern Neuroscience. The functional mechani...
How do humans and other animals learn new tasks? A wave of brain recording studies has investigated ...
Understanding how the statistical and geometric properties of neural activations relate to network p...
Learning about a causal or statistical association depends on comparing frequencies of joint occurre...