#Takashi Nalkano et.al. 2015 #Nakano T, Otsuka M, Yoshimoto J, Doya K (2015) A Spiking Neural Network Model of Model-Free Reinforcement Learning with High-Dimensional Sensory Input and Perceptual Ambiguity. PLoS ONE 10(3): e0115620. doi:10.1371/journal.pone.0115620 #nest-1.9.7905 was used for the simulation. This is spiking neural network models of free-energy-based reinforcement learning. We test our SNN model on three tasks with increasing levels of difficulty: 1. center reaching task (a reinforcement learning (RL) problem), 2. digit center reaching task (a history-independent partially observable RL (PO RL) problem), 3. digit-matching T-maze task (a history-dependent PORL problem). 1. center reaching task (a reinforcement learning (RL) problem), Model file -SpikingRBM_CR.py The following files are generated after the simulation. -History.txt #history of states, actions, free-energy and firing of action neurons in decision making period that the agent experienced. -HistoryNstep.txt #steps to the goal -HistoryCumR.txt #cumulative reward -Wha.txt # learned weight between action and hidden neurons -Whs.txt # learned weight between state and hidden neurons 2. digit center reaching task (a history-independent partially observable RL (PORL) problem), Model file -SpikingRBM_Digit.py The following files are required for the simulation. -files in digit22 folder The following files are generated after the simulation. -History.txt #history of states, actions, free-energy and firing of action neurons in decision making period that the agent experienced. -HistoryNstep.txt #steps to the goal -HistoryCumR.txt #cumulative reward -Wha.txt # learned weight between action and hidden neurons -Whs.txt # learned weight between state and hidden neurons 3. digit-matching T-maze task (a history-dependent PORL problem). Model file -SpikingRBM_MTmaze.py The following files are required for the simulation. -files in shrunk_digit_easy_test_20_15T folder -Wcd50_noBias.txt #weights from observation to memory neurons -MMweight2301.txt #reccurent connection weights of memory neurons The following files are generated after the simulation. -History.txt #history of states, actions, free-energy and firing of action neurons in decision making period that the agent experienced. -HistoryNstep.txt #steps to the goal -HistoryCumR.txt #cumulative reward -Wha.txt # learned weight between action and hidden neurons -Whs.txt # learned weight between state and hidden neurons -Whm.txt # learned weight between memory and hidden neurons