Behavior in its general form can be defined as a mapping between sensory inputs and a pattern of motor actions that are used to achieve a goal. Reinforcement learning in the last years emerged as a general framework to analyze behavior in its general definition. In this thesis exploiting the techniques of reinforcement learning we study several phenomena that can be classified as search, navigation and foraging behaviors. Regarding the search aspect we analyze random walks forced to reach a target in a confined region of the space. In this case we can solve analytically the problem that allows to find a very efficient way to generate such walks. The navigation problem is inspired by olfactory navigation in homing pigeons. In this case we propose an algorithm to navigate a noisy environment relying only on local signals. The foraging instead is analyzed starting from the observation that fossil traces show the evolution of foraging strategies towards highly compact and self-avoiding trajectories. We show how this optimal behavior can emerge in the reinforcement learning framework.
Search, navigation and foraging: an optimal decision-making perspective
Adorisio, Matteo
2018
Abstract
Behavior in its general form can be defined as a mapping between sensory inputs and a pattern of motor actions that are used to achieve a goal. Reinforcement learning in the last years emerged as a general framework to analyze behavior in its general definition. In this thesis exploiting the techniques of reinforcement learning we study several phenomena that can be classified as search, navigation and foraging behaviors. Regarding the search aspect we analyze random walks forced to reach a target in a confined region of the space. In this case we can solve analytically the problem that allows to find a very efficient way to generate such walks. The navigation problem is inspired by olfactory navigation in homing pigeons. In this case we propose an algorithm to navigate a noisy environment relying only on local signals. The foraging instead is analyzed starting from the observation that fossil traces show the evolution of foraging strategies towards highly compact and self-avoiding trajectories. We show how this optimal behavior can emerge in the reinforcement learning framework.File | Dimensione | Formato | |
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https://hdl.handle.net/20.500.14242/166634
URN:NBN:IT:SISSA-166634