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Novelty is not surprise: Human exploratory and adaptive behavior in sequential decision-making

Xu He, Alireza Modirshanechi, Marco P. Lehmann, Wulfram Gerstner, Michael H. Herzog

2021PLoS Computational Biology47 citationsDOIOpen Access PDF

Abstract

Classic reinforcement learning (RL) theories cannot explain human behavior in the absence of external reward or when the environment changes. Here, we employ a deep sequential decision-making paradigm with sparse reward and abrupt environmental changes. To explain the behavior of human participants in these environments, we show that RL theories need to include surprise and novelty, each with a distinct role. While novelty drives exploration before the first encounter of a reward, surprise increases the rate of learning of a world-model as well as of model-free action-values. Even though the world-model is available for model-based RL, we find that human decisions are dominated by model-free action choices. The world-model is only marginally used for planning, but it is important to detect surprising events. Our theory predicts human action choices with high probability and allows us to dissociate surprise, novelty, and reward in EEG signals.

Topics & Concepts

SurpriseNoveltyAction (physics)Reinforcement learningComputer scienceNovelty seekingArtificial intelligenceNovelty detectionMachine learningCognitive psychologyPsychologySocial psychologyTemperamentPhysicsQuantum mechanicsPersonalityNeural dynamics and brain functionNeural and Behavioral Psychology StudiesEEG and Brain-Computer Interfaces
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