Understanding and Controlling a Maze-Solving Policy Network

MATS Alumnus

Ulisse Mini, Peli Grietzer

Collabortators

Ulisse Mini, Peli Grietzer, Mrinank Sharma, Austin Meek, Monte MacDiarmid, Alexander Matt Turner

Citations

20 Citations

Abstract

To understand the goals and goal representations of AI systems, we carefully study a pretrained reinforcement learning policy that solves mazes by navigating to a range of target squares. We find this network pursues multiple context-dependent goals, and we further identify circuits within the network that correspond to one of these goals. In particular, we identified eleven channels that track the location of the goal. By modifying these channels, either with hand-designed interventions or by combining forward passes, we can partially control the policy. We show that this network contains redundant, distributed, and retargetable goal representations, shedding light on the nature of goal-direction in trained policy networks.

Recent research

Weird Generalization and Inductive Backdoors: New Ways to Corrupt LLMs

Authors:

Jorio Cocola, Dylan Feng

Date:

December 10, 2025

Citations:

0

AI agents find $4.6M in blockchain smart contract exploits

Authors:

Fellow: Winnie Xiao

Date:

December 1, 2025

Citations:

0

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