Rate-Preserving Reductions for Blackwell Approachability
Christoph Dann, Yishay Mansour, Mehryar Mohri, Jon Schneider,, Balasubramanian Sivan

TL;DR
This paper investigates when reductions between Blackwell approachability and no-regret learning preserve optimal convergence rates, revealing limitations of existing reductions and proposing a generalized form of regret minimization.
Contribution
It introduces a rate-preserving reduction from approachability to improper -regret minimization and characterizes when linear transformations suffice for such reductions.
Findings
Existing reductions do not preserve convergence rates.
A generalized -regret minimization framework is proposed.
Some approachability problems cannot be reduced to standard regret minimization.
Abstract
Abernethy et al. (2011) showed that Blackwell approachability and no-regret learning are equivalent, in the sense that any algorithm that solves a specific Blackwell approachability instance can be converted to a sublinear regret algorithm for a specific no-regret learning instance, and vice versa. In this paper, we study a more fine-grained form of such reductions, and ask when this translation between problems preserves not only a sublinear rate of convergence, but also preserves the optimal rate of convergence. That is, in which cases does it suffice to find the optimal regret bound for a no-regret learning instance in order to find the optimal rate of convergence for a corresponding approachability instance? We show that the reduction of Abernethy et al. (2011) does not preserve rates: their reduction may reduce a -dimensional approachability instance with optimal…
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Taxonomy
TopicsSemantic Web and Ontologies · Multi-Agent Systems and Negotiation · Natural Language Processing Techniques
