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PPI-SVRG: Unifying Prediction-Powered Inference and Variance Reduction for Semi-Supervised Optimization

Author

Listed:
  • Ruicheng Ao
  • Hongyu Chen
  • Haoyang Liu
  • David Simchi-Levi
  • Will Wei Sun

Abstract

We study semi-supervised stochastic optimization when labeled data is scarce but predictions from pre-trained models are available. PPI and SVRG both reduce variance through control variates -- PPI uses predictions, SVRG uses reference gradients. We show they are mathematically equivalent and develop PPI-SVRG, which combines both. Our convergence bound decomposes into the standard SVRG rate plus an error floor from prediction uncertainty. The rate depends only on loss geometry; predictions affect only the neighborhood size. When predictions are perfect, we recover SVRG exactly. When predictions degrade, convergence remains stable but reaches a larger neighborhood. Experiments confirm the theory: PPI-SVRG reduces MSE by 43--52\% under label scarcity on mean estimation benchmarks and improves test accuracy by 2.7--2.9 percentage points on MNIST with only 10\% labeled data.

Suggested Citation

  • Ruicheng Ao & Hongyu Chen & Haoyang Liu & David Simchi-Levi & Will Wei Sun, 2026. "PPI-SVRG: Unifying Prediction-Powered Inference and Variance Reduction for Semi-Supervised Optimization," Papers 2601.21470, arXiv.org.
  • Handle: RePEc:arx:papers:2601.21470
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    File URL: http://arxiv.org/pdf/2601.21470
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