Title :
Presynaptic modulation as fast synaptic switching: state-dependent modulation of task performance
Author :
Scheler, Gabriele ; Schumann, Johann
Author_Institution :
ICSI, Berkeley, CA, USA
Abstract :
Neuromodulatory receptors in presynaptic position have the ability to suppress synaptic transmission for seconds to minutes when fully engaged. This effectively alters the synaptic strength of a connection. Much work on neuromodulation has rested on the assumption that these effects are uniform at every neuron. However, there is considerable evidence to suggest that presynaptic regulation may be in effect synapse-specific. This would define a second "weight modulation" matrix, which reflects presynaptic receptor efficacy at a given site. Here we explore functional consequences of this hypothesis. By analyzing and comparing the weight matrices of networks trained on different aspects of a task, we identify the potential for a low complexity "modulation matrix", which allows switching between differently trained subtasks while retraining general performance characteristics for the task. This means that a given network can adapt itself to different task demands be regulating its release of neuromodulators. Specifically, we suggest that (a) a network can provide optimized responses for related classification tasks without the need to train entirely separate networks and (b) a network can blend a "memory mode" which aims at reproducing memorized patterns and a "novelty mode" which aims to facilitate classification of new patterns. We relate this work to the known effects of neuromodulators on brain-state dependent processing.
Keywords :
brain models; learning systems; modulation; neural nets; switching; brain-state dependent processing; fast synaptic switching; memory mode; neuromodulation; neuromodulatory receptors; pattern classification; presynaptic modulation; presynaptic regulation; state-dependent modulation; synaptic strength; synaptic transmission suppression; task performance; weight modulation matrix; Biological neural networks; Biological system modeling; Brain; Computer networks; Nerve fibers; Neurons; Neurotransmitters; Performance analysis; Signal generators; Switches;
Conference_Titel :
Neural Networks, 2003. Proceedings of the International Joint Conference on
Print_ISBN :
0-7803-7898-9
DOI :
10.1109/IJCNN.2003.1223347