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Main Authors: Wang, Guangzhan, Zhang, Hongyu, Shen, Beijun, Gu, Xiaodong
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.14723
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author Wang, Guangzhan
Zhang, Hongyu
Shen, Beijun
Gu, Xiaodong
author_facet Wang, Guangzhan
Zhang, Hongyu
Shen, Beijun
Gu, Xiaodong
contents Data augmentation is a critical technique in deep learning. Traditional methods like Back-translation typically focus on lexical-level rephrasing, which primarily produces variations with the same semantics. While large language models (LLMs) have enhanced text augmentation by their "knowledge emergence" capability, controlling the style and structure of these outputs remains challenging and requires meticulous prompt engineering. In this paper, we propose LMTransplant, a novel text augmentation paradigm leveraging LLMs. The core idea of LMTransplant is transplant-then-regenerate: incorporating seed text into a context expanded by LLM, and asking the LLM to regenerate a variant based on the expanded context. This strategy allows the model to create more diverse and creative content-level variants by fully leveraging the knowledge embedded in LLMs, while preserving the core attributes of the original text. We evaluate LMTransplant across various text-related tasks, demonstrating its superior performance over existing text augmentation methods. Moreover, LMTransplant demonstrates exceptional scalability as the size of augmented data grows.
format Preprint
id arxiv_https___arxiv_org_abs_2508_14723
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Transplant Then Regenerate: A New Paradigm for Text Data Augmentation
Wang, Guangzhan
Zhang, Hongyu
Shen, Beijun
Gu, Xiaodong
Computation and Language
Artificial Intelligence
Data augmentation is a critical technique in deep learning. Traditional methods like Back-translation typically focus on lexical-level rephrasing, which primarily produces variations with the same semantics. While large language models (LLMs) have enhanced text augmentation by their "knowledge emergence" capability, controlling the style and structure of these outputs remains challenging and requires meticulous prompt engineering. In this paper, we propose LMTransplant, a novel text augmentation paradigm leveraging LLMs. The core idea of LMTransplant is transplant-then-regenerate: incorporating seed text into a context expanded by LLM, and asking the LLM to regenerate a variant based on the expanded context. This strategy allows the model to create more diverse and creative content-level variants by fully leveraging the knowledge embedded in LLMs, while preserving the core attributes of the original text. We evaluate LMTransplant across various text-related tasks, demonstrating its superior performance over existing text augmentation methods. Moreover, LMTransplant demonstrates exceptional scalability as the size of augmented data grows.
title Transplant Then Regenerate: A New Paradigm for Text Data Augmentation
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2508.14723