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Main Authors: Han, Seungju, Kim, Konwoo, Park, Chanwoo, Newman, Benjamin, Kotha, Suhas, Jung, Jaehun, Zou, James, Choi, Yejin
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.23562
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author Han, Seungju
Kim, Konwoo
Park, Chanwoo
Newman, Benjamin
Kotha, Suhas
Jung, Jaehun
Zou, James
Choi, Yejin
author_facet Han, Seungju
Kim, Konwoo
Park, Chanwoo
Newman, Benjamin
Kotha, Suhas
Jung, Jaehun
Zou, James
Choi, Yejin
contents Synthetic data augmentation helps language models learn new knowledge in data-constrained domains. However, naively scaling existing synthetic data methods by training on more synthetic tokens or using stronger generators yields diminishing returns below the performance of RAG. To break the RAG ceiling, we introduce Synthetic Mixed Training, which combines synthetic QAs and synthetic documents. This leverages their complementary training signals, and enables log-linear improvements as both synthetic data volume and generator strength increase. This allows the model to outperform RAG by a 2.6% relative gain on QuaLITY, a long-document reading comprehension benchmark. In addition, we introduce Focal Rewriting, a simple technique for synthetic document generation that explicitly conditions document generation on specific questions, improving the diversity of synthetic documents and yielding a steeper log-linear scaling curve. On QuaLITY, our final recipe trains a Llama 8B model that outperforms RAG by 4.4% relatively. Across models and benchmarks (QuaLITY, LongHealth, FinanceBench), our training enables models to beat RAG in five of six settings, outperforms by 2.6%, and achieves a 9.1% gain when combined with RAG.
format Preprint
id arxiv_https___arxiv_org_abs_2603_23562
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Synthetic Mixed Training: Scaling Parametric Knowledge Acquisition Beyond RAG
Han, Seungju
Kim, Konwoo
Park, Chanwoo
Newman, Benjamin
Kotha, Suhas
Jung, Jaehun
Zou, James
Choi, Yejin
Machine Learning
Artificial Intelligence
Synthetic data augmentation helps language models learn new knowledge in data-constrained domains. However, naively scaling existing synthetic data methods by training on more synthetic tokens or using stronger generators yields diminishing returns below the performance of RAG. To break the RAG ceiling, we introduce Synthetic Mixed Training, which combines synthetic QAs and synthetic documents. This leverages their complementary training signals, and enables log-linear improvements as both synthetic data volume and generator strength increase. This allows the model to outperform RAG by a 2.6% relative gain on QuaLITY, a long-document reading comprehension benchmark. In addition, we introduce Focal Rewriting, a simple technique for synthetic document generation that explicitly conditions document generation on specific questions, improving the diversity of synthetic documents and yielding a steeper log-linear scaling curve. On QuaLITY, our final recipe trains a Llama 8B model that outperforms RAG by 4.4% relatively. Across models and benchmarks (QuaLITY, LongHealth, FinanceBench), our training enables models to beat RAG in five of six settings, outperforms by 2.6%, and achieves a 9.1% gain when combined with RAG.
title Synthetic Mixed Training: Scaling Parametric Knowledge Acquisition Beyond RAG
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2603.23562