LGMLMar 9, 2022

Universal Regression with Adversarial Responses

arXiv:2203.05067v37 citationsh-index: 14
Originality Incremental advance
AI Analysis

This work addresses robust regression for scenarios with adversarial data, offering foundational insights but is incremental in extending existing frameworks.

The paper tackles regression with adversarial responses under non-i.i.d. sequences, showing that universal consistency is achievable for a broader class than stationary processes and revealing a dichotomy in value spaces based on finite-horizon mean estimation feasibility.

We provide algorithms for regression with adversarial responses under large classes of non-i.i.d. instance sequences, on general separable metric spaces, with provably minimal assumptions. We also give characterizations of learnability in this regression context. We consider universal consistency which asks for strong consistency of a learner without restrictions on the value responses. Our analysis shows that such an objective is achievable for a significantly larger class of instance sequences than stationary processes, and unveils a fundamental dichotomy between value spaces: whether finite-horizon mean estimation is achievable or not. We further provide optimistically universal learning rules, i.e., such that if they fail to achieve universal consistency, any other algorithms will fail as well. For unbounded losses, we propose a mild integrability condition under which there exist algorithms for adversarial regression under large classes of non-i.i.d. instance sequences. In addition, our analysis also provides a learning rule for mean estimation in general metric spaces that is consistent under adversarial responses without any moment conditions on the sequence, a result of independent interest.

Foundations

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