Prediction and Empowerment: A Theory of Agency through Bridge Interfaces
Richard Csaky

TL;DR
This paper develops a theoretical framework for agency under partial observability, emphasizing the roles of prediction, compression, and empowerment in bridge interfaces, with implications for AI design and human-AI alignment.
Contribution
It introduces a formal model of agency through bridge interfaces, clarifies the separation between prediction and empowerment, and offers design principles for AI objectives and human-AI interaction.
Findings
Perfect prediction requires identifying relevant hidden states.
High empowerment alone does not guarantee prediction accuracy.
Interface refinement reduces uncertainty and enables target-conditioned control.
Abstract
We study agency under partial observability in deterministic physical or simulated worlds, where apparent randomness arises from uncertainty over initial conditions, fixed law bits, and unrolled exogenous noise. We model sensing and actuation as bridge interfaces split between agent-controlled parameters and environment-controlled channel state, inducing a deterministic POMDP through a prior over latent microstates and many-to-one observation coarsening. Within this framework, we prove a separation between prediction, compression, and empowerment. Perfect prediction can be achieved either by identifying the hidden quotient relevant to the target family or by overwrite control that makes the future target action-determined; high empowerment alone is insufficient. Under refinable interfaces and sufficient memory, action-conditioned observation-compression progress reduces posterior…
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