Learning for Amalgamation: A Multi-Source Transfer Learning Framework For Sentiment Classification
Transfer learning plays an essential role in Deep Learning, which can remarkably improve the performance of the target domain, whose training data is not sufficient. Our work explores beyond the common practice of transfer learning with a single pre-trained model. We focus on the task of Vietnamese...
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Zusammenfassung: | Transfer learning plays an essential role in Deep Learning, which can
remarkably improve the performance of the target domain, whose training data is
not sufficient. Our work explores beyond the common practice of transfer
learning with a single pre-trained model. We focus on the task of Vietnamese
sentiment classification and propose LIFA, a framework to learn a unified
embedding from several pre-trained models. We further propose two more LIFA
variants that encourage the pre-trained models to either cooperate or compete
with one another. Studying these variants sheds light on the success of LIFA by
showing that sharing knowledge among the models is more beneficial for transfer
learning. Moreover, we construct the AISIA-VN-Review-F dataset, the first
large-scale Vietnamese sentiment classification database. We conduct extensive
experiments on the AISIA-VN-Review-F and existing benchmarks to demonstrate the
efficacy of LIFA compared to other techniques. To contribute to the Vietnamese
NLP research, we publish our source code and datasets to the research community
upon acceptance. |
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DOI: | 10.48550/arxiv.2303.09115 |