Marti-5: A Mathematical Model of "Self in the World" as a First Step Toward Self-Awareness
- URL: http://arxiv.org/abs/2512.10985v1
- Date: Fri, 05 Dec 2025 11:15:06 GMT
- Title: Marti-5: A Mathematical Model of "Self in the World" as a First Step Toward Self-Awareness
- Authors: Igor Pivovarov, Sergey Shumsky,
- Abstract summary: We propose a mathematical model that uses this idea to identify and separate the self from the environment.<n>We present a reinforcement learning agent that learns purposeful behavior in a virtual environment.<n>We conclude that the ability to separate the self from the environment gives advantages to the agent and therefore such a model could appear in living organisms during evolution.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The existence of 'what' and 'where' pathways of information processing in the brain was proposed almost 30 years ago, but there is still a lack of a clear mathematical model that could show how these pathways work together. We propose a biologically inspired mathematical model that uses this idea to identify and separate the self from the environment and then build and use a self-model for better predictions. This is a model of neocortical columns governed by the basal ganglia to make predictions and choose the next action, where some columns act as 'what' columns and others act as 'where' columns. Based on this model, we present a reinforcement learning agent that learns purposeful behavior in a virtual environment. We evaluate the agent on the Atari games Pong and Breakout, where it successfully learns to play. We conclude that the ability to separate the self from the environment gives advantages to the agent and therefore such a model could appear in living organisms during evolution. We propose Self-Awareness Principle 1: the ability to separate the self from the world is a necessary but insufficient condition for self-awareness.
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