StatePlane: A Cognitive State Plane for Long-Horizon AI Systems Under Bounded Context
arXiv cs.AI / 3/17/2026
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Key Points
- We present StatePlane, a model-agnostic cognitive state plane designed to manage episodic, semantic, and procedural state for AI systems operating under bounded context.
- The framework formalizes episodic segmentation, selective encoding via information-theoretic constraints, goal-conditioned retrieval with intent routing, reconstructive state synthesis, and adaptive forgetting.
- StatePlane provides a formal state model, KV-aware algorithms, security and governance features including write-path anti-poisoning, enterprise integration pathways, and an evaluation framework with six domain-specific benchmarks.
- Results show that long-horizon intelligence can be achieved without expanding context windows or retraining models.
- The work is model-agnostic and grounded in cognitive psychology and systems design.
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