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Value-complexity tradeoff explains mouse navigational learning
Authors:Nadav Amir  Reut Suliman-Lavie  Maayan Tal  Sagiv Shifman  Naftali Tishby  Israel Nelken
Affiliation:1. Edmond and Lily Safra Center for Brain Sciences (ELSC), Hebrew University, Jerusalem, Israel ; 2. The Alexander Silberman Institute of Life Sciences, Hebrew University, Jerusalem, Israel ; 3. The Benin School of Computer Science and Engineering, Hebrew University, Jerusalem, Israel ; University of Toronto at Scarborough, CANADA
Abstract:We introduce a novel methodology for describing animal behavior as a tradeoff between value and complexity, using the Morris Water Maze navigation task as a concrete example. We develop a dynamical system model of the Water Maze navigation task, solve its optimal control under varying complexity constraints, and analyze the learning process in terms of the value and complexity of swimming trajectories. The value of a trajectory is related to its energetic cost and is correlated with swimming time. Complexity is a novel learning metric which measures how unlikely is a trajectory to be generated by a naive animal. Our model is analytically tractable, provides good fit to observed behavior and reveals that the learning process is characterized by early value optimization followed by complexity reduction. Furthermore, complexity sensitively characterizes behavioral differences between mouse strains.
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