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Autori principali: Zou, Tianyuan, Liu, Yang, Li, Peng, Zhang, Jianqing, Liu, Jingjing, Zhang, Ya-Qin
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2406.12527
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author Zou, Tianyuan
Liu, Yang
Li, Peng
Zhang, Jianqing
Liu, Jingjing
Zhang, Ya-Qin
author_facet Zou, Tianyuan
Liu, Yang
Li, Peng
Zhang, Jianqing
Liu, Jingjing
Zhang, Ya-Qin
contents Data generation-based zero-shot learning, although effective in training Small Task-specific Models (STMs) via synthetic datasets generated by Pre-trained Language Models (PLMs), is often limited by the low quality of such synthetic datasets. Previous solutions have primarily focused on single PLM settings, where synthetic datasets are typically restricted to specific sub-spaces and often deviate from real-world distributions, leading to severe distribution bias. To mitigate such bias, we propose FuseGen, a novel data generation-based zero-shot learning framework that introduces a new criteria for subset selection from synthetic datasets via utilizing multiple PLMs and trained STMs. The chosen subset provides in-context feedback to each PLM, enhancing dataset quality through iterative data generation. Trained STMs are then used for sample re-weighting as well, further improving data quality. Extensive experiments across diverse tasks demonstrate that FuseGen substantially outperforms existing methods, highly effective in boosting STM performance in a PLM-agnostic way. Code is provided in https://github.com/LindaLydia/FuseGen.
format Preprint
id arxiv_https___arxiv_org_abs_2406_12527
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle FuseGen: PLM Fusion for Data-generation based Zero-shot Learning
Zou, Tianyuan
Liu, Yang
Li, Peng
Zhang, Jianqing
Liu, Jingjing
Zhang, Ya-Qin
Computation and Language
Data generation-based zero-shot learning, although effective in training Small Task-specific Models (STMs) via synthetic datasets generated by Pre-trained Language Models (PLMs), is often limited by the low quality of such synthetic datasets. Previous solutions have primarily focused on single PLM settings, where synthetic datasets are typically restricted to specific sub-spaces and often deviate from real-world distributions, leading to severe distribution bias. To mitigate such bias, we propose FuseGen, a novel data generation-based zero-shot learning framework that introduces a new criteria for subset selection from synthetic datasets via utilizing multiple PLMs and trained STMs. The chosen subset provides in-context feedback to each PLM, enhancing dataset quality through iterative data generation. Trained STMs are then used for sample re-weighting as well, further improving data quality. Extensive experiments across diverse tasks demonstrate that FuseGen substantially outperforms existing methods, highly effective in boosting STM performance in a PLM-agnostic way. Code is provided in https://github.com/LindaLydia/FuseGen.
title FuseGen: PLM Fusion for Data-generation based Zero-shot Learning
topic Computation and Language
url https://arxiv.org/abs/2406.12527