A Nearly Optimal Single Loop Algorithm for Stochastic Bilevel Optimization under Unbounded Smoothness
Xiaochuan Gong, Jie Hao, Mingrui Liu

TL;DR
This paper introduces a single loop algorithm for stochastic bilevel optimization with unbounded smoothness, achieving near-optimal convergence rates and outperforming existing methods in practical tasks.
Contribution
The paper proposes SLIP, a single loop bilevel optimizer that handles unbounded smoothness, simplifying implementation and improving convergence guarantees.
Findings
Achieves $ ilde{O}(1/ ext{epsilon}^4)$ complexity for $ ext{epsilon}$-stationary points.
Outperforms strong baselines in various bilevel optimization tasks.
Provides theoretical convergence guarantees under unbounded smoothness.
Abstract
This paper studies the problem of stochastic bilevel optimization where the upper-level function is nonconvex with potentially unbounded smoothness and the lower-level function is strongly convex. This problem is motivated by meta-learning applied to sequential data, such as text classification using recurrent neural networks, where the smoothness constant of the upper-level loss function scales linearly with the gradient norm and can be potentially unbounded. Existing algorithm crucially relies on the nested loop design, which requires significant tuning efforts and is not practical. In this paper, we address this issue by proposing a Single Loop bIlevel oPtimizer (SLIP). The proposed algorithm first updates the lower-level variable by a few steps of stochastic gradient descent, and then simultaneously updates the upper-level variable by normalized stochastic gradient descent with…
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Taxonomy
TopicsRisk and Portfolio Optimization · Stochastic processes and financial applications · Housing Market and Economics
