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Stochastic approximation (SA) that involves multiple coupled sequences has diverse applications, including but not limited to bilevel optimization, meta learning and reinforcement learning. Unfortunately, the existing multi-timescale analysis of multiple-sequence SA (MSSA) implies a slow convergence rate, whereas the single-timescale analysis relies on assuming smoothness of fixed points. In this paper, we present tighter single-timescale analysis for MSSA, without assuming smoothness of fixed points. Our theoretical results demonstrate that, when all involved operators are strongly monotone, MSSA converges at a rate of O ({K^{ - 1}}), where K is the total number of iterations. Under a weaker assumption that all involved operators are strongly monotone except forO ({K^{ - 1{2}}}) the main one, MSSA converges at a rate of. These theoretical results align with those established in single-sequence SA (SSSA). Applying these theoretical results to bilevel optimization offers relaxed assumptions and/or simpler algorithms with performance guarantees, as validated by numerical experiments.
Huang et al. (Mon,) studied this question.