LGOct 26, 2023

High-Dimensional Prediction for Sequential Decision Making

arXiv:2310.17651v241 citationsh-index: 8
Originality Incremental advance
AI Analysis

This work addresses the challenge of tailoring predictions to multiple downstream decision makers in adversarial settings, offering incremental improvements in regret guarantees and prediction validity for applications like online optimization and game theory.

The paper tackles the problem of making unbiased high-dimensional predictions for sequential decision making under adversarial conditions, providing efficient algorithms that enable polynomially many decision makers to achieve optimal swap regret and no regret on polynomially many subsequences in online combinatorial optimization and extensive-form games. It also introduces a transparent alternative to conformal prediction for valid multiclass prediction sets with strong conditional validity guarantees and improved loss metrics compared to benchmark models.

We study the problem of making predictions of an adversarially chosen high-dimensional state that are unbiased subject to an arbitrary collection of conditioning events, with the goal of tailoring these events to downstream decision makers. We give efficient algorithms for solving this problem, as well as a number of applications that stem from choosing an appropriate set of conditioning events. For example, we can efficiently make predictions targeted at polynomially many decision makers, giving each of them optimal swap regret if they best-respond to our predictions. We generalize this to online combinatorial optimization, where the decision makers have a very large action space, to give the first algorithms offering polynomially many decision makers no regret on polynomially many subsequences that may depend on their actions and the context. We apply these results to get efficient no-subsequence-regret algorithms in extensive-form games (EFGs), yielding a new family of regret guarantees for EFGs that generalizes some existing EFG regret notions, e.g. regret to informed causal deviations, and is generally incomparable to other known such notions. Next, we develop a novel transparent alternative to conformal prediction for building valid online adversarial multiclass prediction sets. We produce class scores that downstream algorithms can use for producing valid-coverage prediction sets, as if these scores were the true conditional class probabilities. We show this implies strong conditional validity guarantees including set-size-conditional and multigroup-fair coverage for polynomially many downstream prediction sets. Moreover, our class scores can be guaranteed to have improved $L_2$ loss, cross-entropy loss, and generally any Bregman loss, compared to any collection of benchmark models, yielding a high-dimensional real-valued version of omniprediction.

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