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Main Authors: Madani, Omid, Burns, J. Brian, Eghbali, Reza, Dean, Thomas L.
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.15274
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author Madani, Omid
Burns, J. Brian
Eghbali, Reza
Dean, Thomas L.
author_facet Madani, Omid
Burns, J. Brian
Eghbali, Reza
Dean, Thomas L.
contents We explore how different types and uses of memory can aid spatial navigation in changing uncertain environments. In the simple foraging task we study, every day, our agent has to find its way from its home, through barriers, to food. Moreover, the world is non-stationary: from day to day, the location of the barriers and food may change, and the agent's sensing such as its location information is uncertain and very limited. Any model construction, such as a map, and use, such as planning, needs to be robust against these challenges, and if any learning is to be useful, it needs to be adequately fast. We look at a range of strategies, from simple to sophisticated, with various uses of memory and learning. We find that an architecture that can incorporate multiple strategies is required to handle (sub)tasks of a different nature, in particular for exploration and search, when food location is not known, and for planning a good path to a remembered (likely) food location. An agent that utilizes non-stationary probability learning techniques to keep updating its (episodic) memories and that uses those memories to build maps and plan on the fly (imperfect maps, i.e. noisy and limited to the agent's experience) can be increasingly and substantially more efficient than the simpler (minimal-memory) agents, as the task difficulties such as distance to goal are raised, as long as the uncertainty, from localization and change, is not too large.
format Preprint
id arxiv_https___arxiv_org_abs_2602_15274
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle When Remembering and Planning are Worth it: Navigating under Change
Madani, Omid
Burns, J. Brian
Eghbali, Reza
Dean, Thomas L.
Artificial Intelligence
Machine Learning
We explore how different types and uses of memory can aid spatial navigation in changing uncertain environments. In the simple foraging task we study, every day, our agent has to find its way from its home, through barriers, to food. Moreover, the world is non-stationary: from day to day, the location of the barriers and food may change, and the agent's sensing such as its location information is uncertain and very limited. Any model construction, such as a map, and use, such as planning, needs to be robust against these challenges, and if any learning is to be useful, it needs to be adequately fast. We look at a range of strategies, from simple to sophisticated, with various uses of memory and learning. We find that an architecture that can incorporate multiple strategies is required to handle (sub)tasks of a different nature, in particular for exploration and search, when food location is not known, and for planning a good path to a remembered (likely) food location. An agent that utilizes non-stationary probability learning techniques to keep updating its (episodic) memories and that uses those memories to build maps and plan on the fly (imperfect maps, i.e. noisy and limited to the agent's experience) can be increasingly and substantially more efficient than the simpler (minimal-memory) agents, as the task difficulties such as distance to goal are raised, as long as the uncertainty, from localization and change, is not too large.
title When Remembering and Planning are Worth it: Navigating under Change
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2602.15274