Title :
Comparison of electrophysiological spatial pattern changes in short-and long-term learning
Author_Institution :
Dept. of Mol. & Cell Biol., Univ. of California at Berkeley, Berkeley, CA, USA
Abstract :
In cognition, sensation - "the activity of a sense organ and closely connected nerve structures" - is followed by perception - "the meaningful impression of any object obtained by use of the senses" (Webster). Brains perform the microscopic sensory processes of extracting and processing information from the world. They have been well modeled with cellular neural networks (CNN) by modifying connections in reinforcement learning. Brains perform the mesoscopic perceptual processes of categorizing the information and constructing its meaning by using distributed memories. Perception requires a different topology than CNN, which is provided by random graph theory. Correspondingly cerebral cortex has two kinds of networks that learn. The sensory and motor cortices contain numerous, highly specialized, local networks that are tuned by local, rapid, short-term learning to select features in the input and bind them into sustained discharges of microscopic cell assemblies. These local systems are embedded in brain-wide, scale-free, mesoscopic feedback connections that learn slowly in consolidation. The distributed architecture integrates sensory input with selected memories into sequences of large-scale, distributed neural activity patterns that express meanings of sensory information. The patterns resemble cinematographic frames. The construction of each frame is by a phase transition. The brain topology, process, and activity patterns may be modeled by embedding multiple CNN in a large-scale random graph. That is neuropercolation; its goal is to provide a superior alternative to differential equations, which are now used to model perception.
Keywords :
bioelectric phenomena; biology computing; brain-computer interfaces; cellular neural nets; cinematography; graph theory; learning (artificial intelligence); mesoscopic systems; microscopy; brain topology; cellular neural networks; cerebral cortex; cinematographic frames; differential equations; distributed architecture; distributed memories; electrophysiological spatial pattern; embedding multiple CNN; information categorisation; long-term learning; mesoscopic perceptual processes; microscopic cell assemblies; microscopic sensory processes; neuropercolation; processing information; random graph theory; reinforcement learning; short-term learning; Brain modeling; Cellular neural networks; Cerebral cortex; Cognition; Data mining; Graph theory; Learning; Microscopy; Network topology; Sense organs; AM patterns; cerebral cortex; electrocorticologram (ECoG); neuropercolation; neurotopology; scale-free;
Conference_Titel :
Cellular Nanoscale Networks and Their Applications (CNNA), 2010 12th International Workshop on
Conference_Location :
Berkeley, CA
Print_ISBN :
978-1-4244-6679-5
DOI :
10.1109/CNNA.2010.5430291