Dynamic Population Expectation Theory (DPET)
Intro paragraph
Dynamic Population Expectation Theory (DPET) studies how expected value (EV) evolves dynamically in finite non-replacement sampling systems.
Contrary to classical static expectation assumptions, DPET demonstrates that the true expectation at each sampling step is time-dependent and can exhibit systematic positive deviations.
Core formulation section
At sampling step t, the dynamic expectation is defined as:
μt=K−sN−t\mu_t = \frac{K – s}{N – t}μt=N−tK−s
where N is the population size, K the number of favorable outcomes, t the number of draws, and s the number of observed successes.
The deviation from static expectation is given by:
Dt=μt−μstaticD_t = \mu_t – \mu_{static}Dt=μt−μstatic
This deviation forms the theoretical basis for exploitable advantages in finite sampling environments.
Validation summary
DPET is primarily validated through:
- Cryptocurrency order book optimization, demonstrating significant reduction in execution slippage
- Baccarat, serving as a classical finite sampling benchmark
- Reinforcement learning, where DPET improves sampling efficiency under non-independent conditions
Scope & impact
DPET extends beyond financial markets to broader domains including operations research, healthcare systems, and game theory.
By relaxing the static expectation assumption, DPET offers a new analytical lens for sequential decision-making under finite resources.
Call to action (academic, not marketing)
→ Explore the DPET Theory
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