LGOct 26, 2025

Last Iterate Analyses of FTRL in Stochasitc Bandits

arXiv:2510.22819v11 citationsh-index: 5
Originality Incremental advance
AI Analysis

This provides theoretical insights into the convergence behavior of FTRL algorithms in bandit problems, which is incremental as it builds on existing regret analyses.

The paper tackles the problem of analyzing the last-iterate convergence rate of Follow-the-Regularized-Leader (FTRL) algorithms in stochastic bandits, showing that the Bregman divergence decays at a rate of t^{-1/2}.

The convergence analysis of online learning algorithms is central to machine learning theory, where last-iterate convergence is particularly important, as it captures the learner's actual decisions and describes the evolution of the learning process over time. However, in multi-armed bandits, most existing algorithmic analyses mainly focus on the order of regret, while the last-iterate (simple regret) convergence rate remains less explored -- especially for the widely studied Follow-the-Regularized-Leader (FTRL) algorithms. Recently, a growing line of work has established the Best-of-Both-Worlds (BOBW) property of FTRL algorithms in bandit problems, showing in particular that they achieve logarithmic regret in stochastic bandits. Nevertheless, their last-iterate convergence rate has not yet been studied. Intuitively, logarithmic regret should correspond to a $t^{-1}$ last-iterate convergence rate. This paper partially confirms this intuition through theoretical analysis, showing that the Bregman divergence, defined by the regular function $Ψ(p)=-4\sum_{i=1}^{d}\sqrt{p_i}$ associated with the BOBW FTRL algorithm $1/2$-Tsallis-INF (arXiv:1807.07623), between the point mass on the optimal arm and the probability distribution over the arm set obtained at iteration $t$, decays at a rate of $t^{-1/2}$.

Foundations

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