Agential AI for Integrated Continual Learning, Deliberative Behavior, and Comprehensible Models

Published: 01 Apr 2025, Last Modified: 01 May 2025ALAEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Continual learning, Planning, Behavior encapsulation
Abstract: Contemporary machine learning paradigm excels in statistical data analysis, solving problems that classical AI couldn't. However, it faces key limitations, such as a lack of integration with planning, incomprehensible internal structure, and inability to learn continually. We present initial design for an AI system, Agential AI (AAI), in principle operating independently or on top of statistical methods, that overcomes all these issues. AAI's core is a learning method that models temporal dynamics with guarantees of completeness, minimality, and continual learning. It integrates this with a behavior algorithm that plans on a learned model and encapsulates high-level behavior patterns. Preliminary experiments on a simple environment show AAI's effectiveness and potential.
Type Of Paper: Full paper (max page 8)
Anonymous Submission: Anonymized submission.
Submission Number: 24
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