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Hauptverfasser: Shi, Jiahao, Hagrass, Omar, Klusowski, Jason M.
Format: Preprint
Veröffentlicht: 2026
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2605.23268
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author Shi, Jiahao
Hagrass, Omar
Klusowski, Jason M.
author_facet Shi, Jiahao
Hagrass, Omar
Klusowski, Jason M.
contents In many prediction problems, we have extra information during training (for example, measurements that are expensive or slow to collect) that will not be available when the model is deployed. A common strategy is to first train a model that uses all training information, then use its predictions on unlabeled examples to train a second model that only uses the inputs available at test time. However, when the extra training-only information is weak or noisy, this Two-Stage approach can mislead the deployment model and even hurt accuracy. We propose a joint training method that learns the two models together, so the deployment model can benefit from the extra information only when it actually helps, instead of inheriting its mistakes. We provide guarantees that describe when joint training improves prediction accuracy and analyze a simple alternating training algorithm for large, high-dimensional models. Experiments on synthetic data and real-world prediction tasks show that our approach avoids these failures and robustly outperforms standard Two-Stage baselines.
format Preprint
id arxiv_https___arxiv_org_abs_2605_23268
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Coupled Training with Privileged Information and Unlabeled Data
Shi, Jiahao
Hagrass, Omar
Klusowski, Jason M.
Machine Learning
In many prediction problems, we have extra information during training (for example, measurements that are expensive or slow to collect) that will not be available when the model is deployed. A common strategy is to first train a model that uses all training information, then use its predictions on unlabeled examples to train a second model that only uses the inputs available at test time. However, when the extra training-only information is weak or noisy, this Two-Stage approach can mislead the deployment model and even hurt accuracy. We propose a joint training method that learns the two models together, so the deployment model can benefit from the extra information only when it actually helps, instead of inheriting its mistakes. We provide guarantees that describe when joint training improves prediction accuracy and analyze a simple alternating training algorithm for large, high-dimensional models. Experiments on synthetic data and real-world prediction tasks show that our approach avoids these failures and robustly outperforms standard Two-Stage baselines.
title Coupled Training with Privileged Information and Unlabeled Data
topic Machine Learning
url https://arxiv.org/abs/2605.23268