利用期望统计正则化改进低资源跨语言解析

IF 4.2 1区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Transactions of the Association for Computational Linguistics Pub Date : 2022-10-17 DOI:10.1162/tacl_a_00537
Thomas Effland, Michael Collins
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引用次数: 1

摘要

我们提出了期望统计正则化(ESR),这是一种新的正则化技术,它利用低阶多任务结构统计来塑造模型分布,用于低资源数据集的半监督学习。我们研究了跨语言迁移背景下的ESR句法分析(词性标注和标记依赖解析),并提出了几种影响模型行为的低阶统计函数。在实验中,我们用ESR对5种不同目标语言的无监督迁移进行了评估,结果表明,当准确估计时,所有统计数据都能提高POS和LAS,其中最佳统计数据平均提高POS 7.0和LAS 8.5。我们还提出了半监督迁移和学习曲线实验,这些实验表明,对于适量的标签数据,ESR比强跨语言迁移加微调基线提供了显著的收益。这些结果表明,ESR是跨语言解析中模型迁移方法的一种很有前途的补充方法
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Improving Low-Resource Cross-lingual Parsing with Expected Statistic Regularization
We present Expected Statistic Regulariza tion (ESR), a novel regularization technique that utilizes low-order multi-task structural statistics to shape model distributions for semi- supervised learning on low-resource datasets. We study ESR in the context of cross-lingual transfer for syntactic analysis (POS tagging and labeled dependency parsing) and present several classes of low-order statistic functions that bear on model behavior. Experimentally, we evaluate the proposed statistics with ESR for unsupervised transfer on 5 diverse target languages and show that all statistics, when estimated accurately, yield improvements to both POS and LAS, with the best statistic improving POS by +7.0 and LAS by +8.5 on average. We also present semi-supervised transfer and learning curve experiments that show ESR provides significant gains over strong cross-lingual-transfer-plus-fine-tuning baselines for modest amounts of label data. These results indicate that ESR is a promising and complementary approach to model-transfer approaches for cross-lingual parsing.1
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来源期刊
CiteScore
32.60
自引率
4.60%
发文量
58
审稿时长
8 weeks
期刊介绍: The highly regarded quarterly journal Computational Linguistics has a companion journal called Transactions of the Association for Computational Linguistics. This open access journal publishes articles in all areas of natural language processing and is an important resource for academic and industry computational linguists, natural language processing experts, artificial intelligence and machine learning investigators, cognitive scientists, speech specialists, as well as linguists and philosophers. The journal disseminates work of vital relevance to these professionals on an annual basis.
期刊最新文献
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