Natural Hypergradient Descent: Algorithm Design, Convergence Analysis, and Parallel Implementation
About
In this work, we propose Natural Hypergradient Descent (NHGD), a new method for solving bilevel optimization problems. To address the computational bottleneck in hypergradient estimation--namely, the need to compute or approximate Hessian inverse--we exploit the statistical structure of the inner optimization problem and use the empirical Fisher information matrix as an asymptotically consistent surrogate for the Hessian. This design enables a parallel optimize-and-approximate framework in which the Hessian-inverse approximation is updated synchronously with the stochastic inner optimization, reusing gradient information at negligible additional cost. Our main theoretical contribution establishes high-probability error bounds and sample complexity guarantees for NHGD that match those of state-of-the-art optimize-then-approximate methods, while significantly reducing computational time overhead. Empirical evaluations on representative bilevel learning tasks further demonstrate the practical advantages of NHGD, highlighting its scalability and effectiveness in large-scale machine learning settings.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Hyper-data Cleaning | MNIST (test) | Test Accuracy0.918 | 31 | |
| Data Distillation | Fashion MNIST (test) | Outer Loss0.4733 | 8 |