Title :
Operator Control of Interneural Computing Machines
Author :
Mau-Hsiang Shih ; Feng-Sheng Tsai
Author_Institution :
Dept. of Math., Nat. Taiwan Normal Univ., Taipei, Taiwan
Abstract :
A dynamic representation of neural population responses asserts that motor cortex is a flexible pattern generator sending rhythmic, oscillatory signals to generate multiphasic patterns of movement. This raises a question concerning the design and control of new computing machines that mimic the oscillatory patterns and multiphasic patterns seen in neural systems. To address this issue, we design an interneural computing machine (INCM) made of plastic random interneural connections. We develop a mechanical way to measure collective ensemble firing of neurons in INCM. Two sorts of plasticity operators are derived from the measure of synchronous neural activity and the measure of self-sustaining neural activity, respectively. Such plasticity operators conduct activity-dependent operation to modify the network structure of INCM. The activity-dependent operation meets the neurobiological perspective of Hebbian synaptic plasticity and displays the tendency toward circulation breaking aiming to control neural population dynamics. We call such operation operator control of INCM and develop a population analysis of operator control for measuring how well single neurons of INCM can produce rhythmic, oscillatory activity, but at the level of neural ensembles, generate multiphasic patterns of population responses.
Keywords :
neural nets; Hebbian synaptic plasticity; INCM; dynamic neural population representation; interneural computing machine; interneural computing machines; motor cortex; multiphasic pattern; neural systems; neurobiological perspective; oscillatory pattern; plastic random interneural connections; plasticity operators; self-sustaining neural activity measure; synchronous neural activity measure; Adaptive systems; Biological neural networks; Neurons; Process control; Sociology; Statistics; Vectors; Adaptive plan; decirculation process; machine learning; multiphasic patterns; nonlinear dynamics; oscillatory patterns; plasticity operators; population dynamics;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2013.2271258