LGMLFeb 24

Defensive Generation

arXiv:2602.21390v11 citationsh-index: 11
Originality Incremental advance
AI Analysis

This addresses the challenge of creating robust generative models for machine learning applications, though it appears incremental by building on existing connections and algorithms.

The paper tackles the problem of efficiently generating online generative models that are unfalsifiable by computational tests, achieving a near-linear runtime and optimal vanishing error rate of T^{-1/2} for non-Bernoulli outcomes.

We study the problem of efficiently producing, in an online fashion, generative models of scalar, multiclass, and vector-valued outcomes that cannot be falsified on the basis of the observed data and a pre-specified collection of computational tests. Our contributions are twofold. First, we expand on connections between online high-dimensional multicalibration with respect to an RKHS and recent advances in expected variational inequality problems, enabling efficient algorithms for the former. We then apply this algorithmic machinery to the problem of outcome indistinguishability. Our procedure, Defensive Generation, is the first to efficiently produce online outcome indistinguishable generative models of non-Bernoulli outcomes that are unfalsifiable with respect to infinite classes of tests, including those that examine higher-order moments of the generated distributions. Furthermore, our method runs in near-linear time in the number of samples and achieves the optimal, vanishing T^{-1/2} rate for generation error.

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