In this thesis I present novel mechanisms for certain computational capabilities of the cerebral cortex, building on the established notion of attractor memory. A sparse binary coding network for generating efficient representation of sensory input is presented. It is demonstrated that this network model well reproduces receptive field shapes seen in primary visual cortex and that its representations are efficient with respect to storage in associative memory. I show how an autoassociative memory, augmented with dynamical synapses, can function as a general sequence learning network. I demonstrate how an abstract attractor memory system may be realized on the microcircuit level -- and how it may be analyzed using similar tools as used exper...
A fundamental problem in neuroscience is understanding how working memory—the ability to store infor...
For the last twenty years, several assumptions have been expressed in the fields of information proc...
this paper is contained in the projection theorem, which details the associative memory capabilitie...
Memory is a fundamental part of computational systems like the human brain. Theoretical models ident...
The theories of early brain scientists like Hebb and v. Hayek were in many ways analogous to modern ...
Memory is a pillar of intelligence, and to think like us, it may be that artificial systems must rem...
Neuromorphic chips embody computational principles operating in the nervous system, into microelectr...
This paper sketches several aspects of a hypothetical cortical architecture for visual object recogn...
International audienceIn this paper we summarize some of the main contributions of models of recurre...
Finding efficient patterns of connectivity in sparse associative memories is a difficult problem. It...
The work of this thesis concerns how cortical memories are stored and retrieved. In particular, larg...
We are interested in self-organization and adaptation in intelligent systems that are robustly coupl...
Denna avhandling i datalogi föreslår modeller för hur vissa beräkningsmässiga uppgifter kan utföras ...
Self-organizing attractor networks may comprise the building blocks for cortical dynamics, providing...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
A fundamental problem in neuroscience is understanding how working memory—the ability to store infor...
For the last twenty years, several assumptions have been expressed in the fields of information proc...
this paper is contained in the projection theorem, which details the associative memory capabilitie...
Memory is a fundamental part of computational systems like the human brain. Theoretical models ident...
The theories of early brain scientists like Hebb and v. Hayek were in many ways analogous to modern ...
Memory is a pillar of intelligence, and to think like us, it may be that artificial systems must rem...
Neuromorphic chips embody computational principles operating in the nervous system, into microelectr...
This paper sketches several aspects of a hypothetical cortical architecture for visual object recogn...
International audienceIn this paper we summarize some of the main contributions of models of recurre...
Finding efficient patterns of connectivity in sparse associative memories is a difficult problem. It...
The work of this thesis concerns how cortical memories are stored and retrieved. In particular, larg...
We are interested in self-organization and adaptation in intelligent systems that are robustly coupl...
Denna avhandling i datalogi föreslår modeller för hur vissa beräkningsmässiga uppgifter kan utföras ...
Self-organizing attractor networks may comprise the building blocks for cortical dynamics, providing...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
A fundamental problem in neuroscience is understanding how working memory—the ability to store infor...
For the last twenty years, several assumptions have been expressed in the fields of information proc...
this paper is contained in the projection theorem, which details the associative memory capabilitie...