Title :
Reinforcement learning and instance-based learning approaches to modeling human decision making in a prognostic foraging task
Author :
Suhas E. Chelian;Jaehyon Paik;Peter Pirolli;Christian Lebiere;Rajan Bhattacharyya
Author_Institution :
HRL Laboratories, LLC, 3011 Malibu Canyon Road Malibu, CA 90265
Abstract :
Procedural memory and episodic memory are known to be distinct and both underlie the performance of many tasks. Reinforcement learning (RL) and instance-based learning (IBL) represent common approaches to modeling procedural and episodic memory in that order. In this work, we present a neural model utilizing RL dynamics and an ACT-R model utilizing IBL productions to the task of modeling human decision making in a prognostic foraging task. The task performed was derived from a geospatial intelligence domain wherein agents must choose among information sources to more accurately predict the actions of an adversary. Results from both models are compared to human data and suggest that information gain is an important component in modeling decision-making behavior using either memory system; with respect to the episodic memory approach, the procedural memory approach has a small but significant advantage in fitting human data. Finally, we discuss the interactions of multi-memory systems in complex decision-making tasks.
Keywords :
"Decision making","Training","Electronic mail","Learning (artificial intelligence)","Roads","Geospatial analysis","Data models"
Conference_Titel :
Development and Learning and Epigenetic Robotics (ICDL-EpiRob), 2015 Joint IEEE International Conference on
DOI :
10.1109/DEVLRN.2015.7346127