Victor Eliashberg: Difference between revisions

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Created page with "Title: Victor Eliashberg Main Research Question: How can "dynamical" neural networks function as universal programmable "symbolic" machines? Methodology: The study uses the concept of E-machine, a hypothetical brain-like dynamically reconfigurable associative learning system. This concept is applied to various applications such as context-sensitive associative memory, context-dependent pattern classification, context-dependent motor control, imitation, simulation of co..."
 
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Results: The research suggests that "dynamical" neural networks can function as universal programmable "symbolic" machines. It also proposes that a universal learning machine can dynamically reconfigure its software depending on a combinatorial number of possible contexts.
Results: The research suggests that "dynamical" neural networks can function as universal programmable "symbolic" machines. It also proposes that a universal learning machine can dynamically reconfigure its software depending on a combinatorial number of possible contexts.


Implications: This study has significant implications for the understanding of human brain's remarkable information processing characteristics. It sheds light on the brain's universality as a learning system and its ability to dynamically change its behavior depending on a combinatorial number of different contexts. The concept of E-machine provides a neurobiologically consistent formalization of these processes, connecting symbolic and dynamical computational mechanisms in a way that is relative ly short and formal.
Implications: This study has significant implications for the understanding of human brain's remarkable information processing characteristics, such as its broad universality as a learning system and its ability to dynamically change its behavior. It also offers potential applications in various fields, including computer science, neuroscience, and artificial intelligence.


Link to Article: https://arxiv.org/abs/0403031v1
Link to Article: https://arxiv.org/abs/0403031v2
Authors:  
Authors:  
arXiv ID: 0403031v1
arXiv ID: 0403031v2


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Latest revision as of 15:36, 24 December 2023

Title: Victor Eliashberg

Main Research Question: How can "dynamical" neural networks function as universal programmable "symbolic" machines?

Methodology: The study uses the concept of E-machine, a hypothetical brain-like dynamically reconfigurable associative learning system. This concept is applied to various applications such as context-sensitive associative memory, context-dependent pattern classification, context-dependent motor control, imitation, simulation of complex "informal" environments, and natural language.

Results: The research suggests that "dynamical" neural networks can function as universal programmable "symbolic" machines. It also proposes that a universal learning machine can dynamically reconfigure its software depending on a combinatorial number of possible contexts.

Implications: This study has significant implications for the understanding of human brain's remarkable information processing characteristics, such as its broad universality as a learning system and its ability to dynamically change its behavior. It also offers potential applications in various fields, including computer science, neuroscience, and artificial intelligence.

Link to Article: https://arxiv.org/abs/0403031v2 Authors: arXiv ID: 0403031v2