EntailClass: EntailSum和端到端文档提取、识别和评估的分类方法

P. Balaji, Helena Merker, Amar Gupta
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引用次数: 0

摘要

零射击文本分类的新颖性可以解决缺乏标记训练数据的基本挑战。随着当前多学科、非标准化文本数据的泛滥,可扩展的分类模型倾向于非监督方法,而不是有监督的对应方法。总的来说,目标是自动标记由章节标题和章节文本组成的输入文档中的每个句子。我们提出了一个端到端管道,它包括一个文档解析器、一个名为EntailClass的文本分类模型,最后还有一个评估器来确定平衡的准确性。建议的管道使用零射击方法对任何所需方面集合中的文本进行分类。此外,文本句子与其章节标题配对,并且在同一方面的句子中保持时间顺序。提出的自动化三步管道代表了解决文本分类挑战的一步,而不需要每个方面都有单独的数据集。它还提供了与现有工作流无缝集成的潜力。这个零射击,可推广的管道达到了87.2%的准确率,并且在应用于监管文件时优于其他最先进的模型。
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EntailClass: A Classification Approach to EntailSum and End-to-End Document Extraction, Identification, and Evaluation
The novelty of zero-shot text classification can address the fundamental challenge of the lack of labeled training data. With the current plethora of multidisciplinary, unstandardized text data, scalable classification models favor unsupervised methods over their supervised counterparts. Overall, the aim is to automate the labelling of each sentence in an input document consisting of section titles and section text. We propose an end-to-end pipeline that includes a document parser, a text classification model called EntailClass, and finally an evaluator to determine balanced accuracy. The suggested pipeline employs a zero-shot approach to classify text within any desired set of aspects. Moreover, text sentences are paired with their section titles and chronological order is maintained within sentences of the same aspect. The proposed automated, three-step pipeline represents a step towards solving the challenge of text classification without the need for an individual dataset for each aspect. It also offers the potential for seamless integration into existing workflows. This zero-shot, generalizable pipeline has achieved 87.2% accuracy and outperformed other state-of-the-art models when applied to supervisory documents.
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