Seven models of local cortical processing were examined and adapted to known circuit constraints of layer 4 of mouse primary somatosensory cortex. To test these hypotheses, an Approximate Bayesian Computation – Sequential Monte Carlo (ABC-SMC) model selection method for local cortical neuronal networks is proposed. For practical application, the pyABC framework together with a method for automated population size selection for ABC–SMC is developed. The method is evaluated for simulated noisy reconstruction conditions. Its robustness is demonstrated and a concrete cortical reconstruction experiment is designed.
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Seven models of local cortical processing were examined and adapted to known circuit constraints of layer 4 of mouse primary somatosensory cortex. To test these hypotheses, an Approximate Bayesian Computation – Sequential Monte Carlo (ABC-SMC) model selection method for local cortical neuronal networks is proposed. For practical application, the pyABC framework together with a method for automated population size selection for ABC–SMC is developed. The method is evaluated for simulated noisy rec...
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