Parameter-efficient feature-based transfer for paraphrase identification

IF 2.3 3区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Xiaodong Liu, Rafal Rzepka, K. Araki
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引用次数: 0

Abstract

Abstract There are many types of approaches for Paraphrase Identification (PI), an NLP task of determining whether a sentence pair has equivalent semantics. Traditional approaches mainly consist of unsupervised learning and feature engineering, which are computationally inexpensive. However, their task performance is moderate nowadays. To seek a method that can preserve the low computational costs of traditional approaches but yield better task performance, we take an investigation into neural network-based transfer learning approaches. We discover that by improving the usage of parameters efficiently for feature-based transfer, our research goal can be accomplished. Regarding the improvement, we propose a pre-trained task-specific architecture. The fixed parameters of the pre-trained architecture can be shared by multiple classifiers with small additional parameters. As a result, the computational cost left involving parameter update is only generated from classifier-tuning: the features output from the architecture combined with lexical overlap features are fed into a single classifier for tuning. Furthermore, the pre-trained task-specific architecture can be applied to natural language inference and semantic textual similarity tasks as well. Such technical novelty leads to slight consumption of computational and memory resources for each task and is also conducive to power-efficient continual learning. The experimental results show that our proposed method is competitive with adapter-BERT (a parameter-efficient fine-tuning approach) over some tasks while consuming only 16% trainable parameters and saving 69-96% time for parameter update.
基于参数高效特征的意译识别转移
意译识别(释义识别)是一项确定句子对是否具有等效语义的NLP任务,有许多类型的方法。传统的方法主要包括无监督学习和特征工程,这些方法的计算成本不高。然而,目前他们的任务绩效一般。为了寻求一种既能保持传统方法的低计算成本,又能获得更好的任务性能的方法,我们对基于神经网络的迁移学习方法进行了研究。我们发现,通过有效地改进参数在基于特征的迁移中的使用,可以实现我们的研究目标。关于改进,我们提出了一个预先训练的任务特定架构。预训练体系结构的固定参数可以被多个分类器共享,附加参数较小。因此,涉及参数更新的剩余计算成本仅由分类器调优产生:结合词法重叠特征的架构输出的特征被输入到单个分类器中进行调优。此外,预训练的任务特定架构也可以应用于自然语言推理和语义文本相似性任务。这种技术的新颖性会导致每个任务的计算和内存资源的轻微消耗,并且还有助于节能的持续学习。实验结果表明,该方法在某些任务上与adapter-BERT(一种参数有效的微调方法)具有竞争力,同时只消耗16%的可训练参数,节省69-96%的参数更新时间。
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来源期刊
Natural Language Engineering
Natural Language Engineering COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
5.90
自引率
12.00%
发文量
60
审稿时长
>12 weeks
期刊介绍: Natural Language Engineering meets the needs of professionals and researchers working in all areas of computerised language processing, whether from the perspective of theoretical or descriptive linguistics, lexicology, computer science or engineering. Its aim is to bridge the gap between traditional computational linguistics research and the implementation of practical applications with potential real-world use. As well as publishing research articles on a broad range of topics - from text analysis, machine translation, information retrieval and speech analysis and generation to integrated systems and multi modal interfaces - it also publishes special issues on specific areas and technologies within these topics, an industry watch column and book reviews.
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