基于迁移学习的问答模型构建

Aimoldir Aldabergen, B. Kynabay, A. Zhamanov
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引用次数: 0

摘要

每天都需要为各种目的和任务查询不同类型的数据。因此,有一个像问答系统(QAS)这样的工具来快速地从任何形式的数据中检索信息变得非常重要。在这项工作中,QAS结合了现代研究主题的主要领域:深度学习(DL),自然语言处理(NLP)和信息技术(IT)。这个系统的主要目标是根据它所拥有的信息,为用户提供一个合适的答案。研究了基于预训练双向节点的迁移学习在问答任务中的实现。开发的模型专注于问答,并在一个特殊的斯坦福QAS数据集上进行了训练。详细阐述了模型的结构、工作流程和实现方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Question answering model construction by using transfer learning
Every day there is a need for querying different kinds of data for a number of purposes and tasks. Therefore it became very important to have a tool like a Question Answering System (QAS) for information retrieving from any form of data in a quick manner. In this work a QAS which combines major fields of modern research topics: Deep Learning (DL), Natural Language Processing (NLP) and Information Technology (IT) is developed. Primary goal of this system is to provide users with an appropriate answer, based on the information that it has. Also an implementation of transfer learning on pre-trained bidirctionl nodr for question answering tasks is researched. Developed model is focused on question answering and was trained on a special Stanford dataset for QAS. The work explains the model’s structure, workflow and implementation in a detailed manner.
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