Automatic Genre Identification for Robust Enrichment of Massive Text Collections: Investigation of Classification Methods in the Era of Large Language Models

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2023-09-12 DOI:10.3390/make5030059
Taja Kuzman, Igor Mozetič, Nikola Ljubešić
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Abstract

Massive text collections are the backbone of large language models, the main ingredient of the current significant progress in artificial intelligence. However, as these collections are mostly collected using automatic methods, researchers have few insights into what types of texts they consist of. Automatic genre identification is a text classification task that enriches texts with genre labels, such as promotional and legal, providing meaningful insights into the composition of these large text collections. In this paper, we evaluate machine learning approaches for the genre identification task based on their generalizability across different datasets to assess which model is the most suitable for the downstream task of enriching large web corpora with genre information. We train and test multiple fine-tuned BERT-like Transformer-based models and show that merging different genre-annotated datasets yields superior results. Moreover, we explore the zero-shot capabilities of large GPT Transformer models in this task and discuss the advantages and disadvantages of the zero-shot approach. We also publish the best-performing fine-tuned model that enables automatic genre annotation in multiple languages. In addition, to promote further research in this area, we plan to share, upon request, a new benchmark for automatic genre annotation, ensuring the non-exposure of the latest large language models.
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面向海量文本集鲁棒扩充的自动体裁识别:大语言模型时代分类方法研究
海量文本集合是大型语言模型的支柱,是当前人工智能取得重大进展的主要因素。然而,由于这些集合大多是使用自动方法收集的,研究人员对它们包含的文本类型知之甚少。自动体裁识别是一项文本分类任务,它使用体裁标签(如促销和法律)丰富文本,为这些大型文本集合的组成提供有意义的见解。在本文中,我们基于类型识别任务的机器学习方法在不同数据集上的泛化性来评估哪种模型最适合用类型信息丰富大型web语料库的下游任务。我们训练和测试了多个经过微调的基于BERT-like transformer的模型,并表明合并不同类型注释的数据集可以产生更好的结果。此外,我们在本任务中探讨了大型GPT变压器模型的零射击能力,并讨论了零射击方法的优缺点。我们还发布了性能最好的微调模型,该模型支持多种语言的自动类型注释。此外,为了促进这一领域的进一步研究,我们计划应要求分享一个自动类型标注的新基准,以确保最新的大型语言模型不被泄露。
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CiteScore
6.30
自引率
0.00%
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0
审稿时长
7 weeks
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