抽象文本摘要的主动学习

Akim Tsvigun, Ivan Lysenko, Danila Sedashov, Ivan Lazichny, Eldar Damirov, Vladimir E. Karlov, Artemy Belousov, Leonid Sanochkin, Maxim Panov, A. Panchenko, M. Burtsev, Artem Shelmanov
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引用次数: 4

摘要

为抽象文本摘要(ATS)构建人工管理的注释数据集是非常耗时和昂贵的,因为创建每个实例都需要人工注释者阅读长文档并编写较短的摘要,以保留原始文档传递的关键信息。主动学习(AL)是一种开发的技术,用于减少达到一定水平的机器学习模型性能所需的注释量。在信息提取和文本分类方面,人工智能可以将人工智能的工作量减少数倍。尽管它有可能帮助昂贵的注释,但据我们所知,还没有针对ATS的有效的ai查询策略。这源于许多人工智能策略依赖于不确定性估计的事实,而正如我们在工作中所示,不确定性实例通常是嘈杂的,与被动注释相比,选择它们会降低模型的性能。针对这一问题,我们提出了首个基于多样性原则的人工智能查询策略。我们表明,给定一定的注释预算,在人工智能注释中使用我们的策略有助于提高模型在ROUGE和一致性分数方面的性能。此外,我们分析了自学习的效果,表明它可以进一步提高模型的性能。
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Active Learning for Abstractive Text Summarization
Construction of human-curated annotated datasets for abstractive text summarization (ATS) is very time-consuming and expensive because creating each instance requires a human annotator to read a long document and compose a shorter summary that would preserve the key information relayed by the original document. Active Learning (AL) is a technique developed to reduce the amount of annotation required to achieve a certain level of machine learning model performance. In information extraction and text classification, AL can reduce the amount of labor up to multiple times. Despite its potential for aiding expensive annotation, as far as we know, there were no effective AL query strategies for ATS. This stems from the fact that many AL strategies rely on uncertainty estimation, while as we show in our work, uncertain instances are usually noisy, and selecting them can degrade the model performance compared to passive annotation. We address this problem by proposing the first effective query strategy for AL in ATS based on diversity principles. We show that given a certain annotation budget, using our strategy in AL annotation helps to improve the model performance in terms of ROUGE and consistency scores. Additionally, we analyze the effect of self-learning and show that it can further increase the performance of the model.
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