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General Framework for Self-Supervised Model Priming for Parameter-Efficient Fine-tuning
by
Shih-Heng, Wang
, Min-Han, Shih
, Hung-yi, Lee
, Shih-Cheng, Huang
, Sahay, Saurav
in
Adaptation
/ Domains
/ Mathematical models
/ Parameters
/ Priming
2022
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General Framework for Self-Supervised Model Priming for Parameter-Efficient Fine-tuning
by
Shih-Heng, Wang
, Min-Han, Shih
, Hung-yi, Lee
, Shih-Cheng, Huang
, Sahay, Saurav
in
Adaptation
/ Domains
/ Mathematical models
/ Parameters
/ Priming
2022
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General Framework for Self-Supervised Model Priming for Parameter-Efficient Fine-tuning
Paper
General Framework for Self-Supervised Model Priming for Parameter-Efficient Fine-tuning
2022
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Overview
Parameter-efficient methods (like Prompt or Adapters) for adapting pre-trained language models to downstream tasks have been popular recently. However, hindrances still prevent these methods from reaching their full potential. For example, two significant challenges are few-shot adaptation and cross-task generalization ability. To tackle these issues, we propose a general framework to enhance the few-shot adaptation and cross-domain generalization ability of parameter-efficient methods. In our framework, we prime the self-supervised model for parameter-efficient methods to rapidly adapt to various downstream few-shot tasks. To evaluate the authentic generalization ability of these parameter-efficient methods, we conduct experiments on a few-shot cross-domain benchmark containing 160 diverse NLP tasks. The experiment result reveals that priming by tuning PLM only with extra training tasks leads to the best performance. Also, we perform a comprehensive analysis of various parameter-efficient methods under few-shot cross-domain scenarios.
Publisher
Cornell University Library, arXiv.org
Subject
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