面向过程长形式答案抽取的变形器(BERT)变量双向编码器表示

S. Nitish, R. Darsini, G. Shashank, V. Tejas, Arti Arya
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引用次数: 5

摘要

从冗长的大型文档中提取信息是一项艰苦的任务,需要耐心和大量的努力。冗长的文档,如可移植文档格式(pdf)包含大量的信息,包括表格、数字等,这使得很难检索具体的文本内容,如分步说明或程序。据我们所知,这项工作是第一次从上述信息源中有效地提取这种长格式的程序答案。该方法使用嵌入了注意力机制的转换器模型,从给定用户查询的相关pdf中检索简洁的响应。该模型使用自制数据集Pro-LongQA进行训练,该数据集由精心制作的基于过程的问题和答案组成。比较研究了最先进的变压器模型之一,即双向编码器表示从变压器(BERT)和它的不同变体,如RoBerta,艾伯特和蒸馏伯特为长形式的问题回答任务。其中,BERT和RoBerta被证明是该任务中表现最好的模型,准确率分别为87.2%和86.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bidirectional Encoder Representation from Transformers (BERT) Variants for Procedural Long-Form Answer Extraction
Extracting information from large verbose documents is a gruelling task which requires patience and huge amounts of effort. Lengthy documents like Portable Document Formats (PDFs) contain tonnes of information including tables, figures, etc. which makes it hard to retrieve specific pieces of textual content like step-by-step instructions or procedures. To the best of our knowledge, this work is the maiden effort to efficiently extract such long-form procedural answers from the aforementioned information sources. The proposed approach retrieves succinct responses from the relevant PDFs for a given user query using a transformer model embedded with attention mechanism. This model is trained using a self-made dataset namely, Pro-LongQA, consisting of carefully crafted procedure based questions and answers. A comparative study of one of the state-of-the-art transformer models, namely, Bidirectional Encoder Representation from Transformers (BERT) and its different variants such as RoBerta, Albert and DistilBert for the task of long-form question answering is performed. Among which, BERT and RoBerta proved to be the best performing models for this task with an accuracy of 87.2% and 86.4% respectively.
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