Single Trajectory Conformal Prediction
We study the performance of risk-controlling prediction sets (RCPS), an empirical risk minimization-based formulation of conformal prediction, with a single trajectory of temporally correlated data from an unknown stochastic dynamical system. First, we use the blocking technique to show that RCPS at...
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Zusammenfassung: | We study the performance of risk-controlling prediction sets (RCPS), an
empirical risk minimization-based formulation of conformal prediction, with a
single trajectory of temporally correlated data from an unknown stochastic
dynamical system. First, we use the blocking technique to show that RCPS
attains performance guarantees similar to those enjoyed in the iid setting
whenever data is generated by asymptotically stationary and contractive
dynamics. Next, we use the decoupling technique to characterize the graceful
degradation in RCPS guarantees when the data generating process deviates from
stationarity and contractivity. We conclude by discussing how these tools could
be used toward a unified analysis of online and offline conformal prediction
algorithms, which are currently treated with very different tools. |
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DOI: | 10.48550/arxiv.2406.01570 |