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Multi-task learning for natural language processing in the 2020s: Where are we going?

机译:2020年代自然语言处理的多任务学习:我们要去哪里?

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摘要

Multi-task learning (MTL) significantly pre-dates the deep learning era, and it has seen a resurgence in the past few years as researchers have been applying MTL to deep learning solutions for natural language tasks. While steady MTL research has always been present, there is a growing interest driven by the impressive successes published in the related fields of transfer learning and pre-training, such as BERT, and the release of new challenge problems, such as GLUE and the NLP Decathlon (decaNLP). These efforts place more focus on how weights are shared across networks, evaluate the re-usability of network components and identify use cases where MTL can significantly outperform single-task solutions. This paper strives to provide a comprehensive survey of the numerous recent MTL contributions to the field of natural language processing and provide a forum to focus efforts on the hardest unsolved problems in the next decade. While novel models that improve performance on NLP benchmarks are continually produced, lasting MTL challenges remain unsolved which could hold the key to better language understanding, knowledge discovery and natural language interfaces.
机译:多任务学习(MTL)显着预先追溯到深度学习时代,并且在过去几年中,随着研究人员对自然语言任务的深入学习解决方案申请了MTL来说,这是过去几年的复兴。虽然稳定的MTL研究始终存在,但在传输学习和训练前的相关领域发表的令人印象深刻的成功导致了越来越令人兴趣的兴趣,如伯特,以及新的挑战问题,如胶水和NLP迪卡侬(Decanlp)。这些努力更加注重权重如何在网络中共享,评估网络组件的可用性,并识别MTL可以显着优于单任务解决方案的使用情况。本文致力于为自然语言处理领域的众多MTL贡献提供全面的调查,并提供一个论坛,以重点在未来十年中最艰难的未解决问题。虽然不断产生提高NLP基准测试性能的新型模型,但持续的MTL挑战仍然是未解决的,这可能会使关键更好地了解语言理解,知识发现和自然语言界面。

著录项

  • 来源
    《Pattern recognition letters》 |2020年第8期|120-126|共7页
  • 作者

    Joseph Worsham; Jugal Kalita;

  • 作者单位

    University of Colorado Colorado Springs 1420 Austin Bluffs Parkway Colorado Springs CO 80918 USA;

    University of Colorado Colorado Springs 1420 Austin Bluffs Parkway Colorado Springs CO 80918 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Multi-task learning; Task relationship; Natural language processing;

    机译:多任务学习;任务关系;自然语言处理;
  • 入库时间 2022-08-18 21:28:45

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