匈牙利语的抽象文本摘要

Zijian Győző Yang, A. Agocs, Gábor Kusper, T. Váradi
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引用次数: 5

摘要

在我们的研究中,我们使用多语言和匈牙利语bert模型为匈牙利语创建了一个文本摘要软件工具。文本摘要方法有抽象和抽取两种。抽象摘要更类似于人工生成的摘要。目标摘要可能包含原始文本不一定包含的短语。该方法通过应用从原始文本中提取的关键字来生成摘要文本。提取法是从原文中提取出最重要的短语或句子,对原文进行总结。在我们的研究中,我们为匈牙利语建立了抽象和抽取模型。对于抽象模型,我们使用了多语言BERT模型和匈牙利语单语言BERT模型。为了进行提取总结,除了BERT模型,我们还用ELECTRA模型进行了实验。我们发现匈牙利语单语模型在所有情况下都优于多语BERT模型。此外,ELECTRA小模型比一些BERT模型取得了更高的结果。这个结果很重要,因为ELECTRA小型模型的参数要少得多,并且在几天内仅在1个GPU上进行了训练。另一个重要的考虑因素是ELECTRA模型比BERT模型小得多,这对最终用户来说很重要。据我们所知,本论文中报道的第一个抽取和抽象摘要系统是匈牙利语的第一个这样的系统。
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Abstractive text summarization for Hungarian
In our research we have created a text summarization software tool for Hungarian using multilingual and Hungarian BERT-based models. Two types of text summarization method exist: abstractive and extractive. The abstractive summarization is more similar to human generated summarization. Target summaries may include phrases that the original text does not necessarily contain. This method generates the summarized text by applying keywords that were extracted from the original text. The extractive method summarizes the text by using the most important extracted phrases or sentences from the original text. In our research we have built both abstractive and extractive models for Hungarian. For abstractive models, we have used a multilingual BERT model and Hungarian monolingual BERT models. For extractive summarization, in addition to the BERT models, we have also made experiments with ELECTRA models. We find that the Hungarian monolingual models outperformed the multilingual BERT model in all cases. Furthermore, the ELECTRA small models achieved higher results than some of the BERT models. This result is important because the ELECTRA small models have much fewer parameters and were trained on only 1 GPU within a couple of days. Another important consideration is that the ELECTRA models are much smaller than the BERT models, which is important for the end users. To our best knowledge the first extractive and abstractive summarization systems reported in the present paper are the first such systems for Hungarian.
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