(α,β)-Stability for Boosting Vector-Valued Prediction

Abstract

Despite the widespread use of boosting in structured prediction, a general theoretical understanding of aggregation beyond scalar prediction remains incomplete. We study vector-valued prediction under a target divergence and identify a geometric stability property under which aggregation amplifies weak guarantees into strong ones. We formalize this property as (α,β)-stability by geometric median and show how it supports a boosting framework based on exponential reweighting and geometric-median aggregation. For vector-valued prediction, we characterize this stability property under several natural divergences: 1 and 2 distances for unconstrained vector-valued prediction, and TV, Hellinger, and KL for density estimation over finite probability vectors. Building on these results, we propose a generic boosting framework . Under a weak learner condition and (α,β)-stability, we obtain exponential decay of the empirical divergence error, which then yields population guarantees through a generalization bound.

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