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Deep Reinforcement Learning With Modulated Hebbian Plus Q-Network Architecture

Pawel Ladosz, Eseoghene Ben-Iwhiwhu, Jeffery Dick, Nicholas Ketz, Soheil Kolouri, Jeffrey L. Krichmar, Praveen K. Pilly, Andrea Soltoggio

2021IEEE Transactions on Neural Networks and Learning Systems19 citationsDOIOpen Access PDF

Abstract

In this article, we consider a subclass of partially observable Markov decision process (POMDP) problems which we termed confounding POMDPs. In these types of POMDPs, temporal difference (TD)-based reinforcement learning (RL) algorithms struggle, as TD error cannot be easily derived from observations. We solve these types of problems using a new bio-inspired neural architecture that combines a modulated Hebbian network (MOHN) with deep Q-network (DQN), which we call modulated Hebbian plus Q-network architecture (MOHQA). The key idea is to use a Hebbian network with rarely correlated bio-inspired neural traces to bridge temporal delays between actions and rewards when confounding observations and sparse rewards result in inaccurate TD errors. In MOHQA, DQN learns low-level features and control, while the MOHN contributes to high-level decisions by associating rewards with past states and actions. Thus, the proposed architecture combines two modules with significantly different learning algorithms, a Hebbian associative network and a classical DQN pipeline, exploiting the advantages of both. Simulations on a set of POMDPs and on the Malmo environment show that the proposed algorithm improved DQN's results and even outperformed control tests with advantage-actor critic (A2C), quantile regression DQN with long short-term memory (QRDQN + LSTM), Monte Carlo policy gradient (REINFORCE), and aggregated memory for reinforcement learning (AMRL) algorithms on most difficult POMDPs with confounding stimuli and sparse rewards.

Topics & Concepts

Hebbian theoryComputer scienceReinforcement learningLeabraArtificial intelligenceArtificial neural networkSet (abstract data type)Machine learningMarkov decision processProcess (computing)Synaptic weightContent-addressable memoryConnectionismKey (lock)Competitive learningDeep learningTemporal difference learningMarkov processAssociative propertyNeuroevolutionPartially observable Markov decision processConvergence (economics)Reinforcement Learning in RoboticsAdaptive Dynamic Programming ControlAdversarial Robustness in Machine Learning