减少特征嵌入数据以发现大文本数据中的关系

Haojie Huang, R. Wong
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引用次数: 1

摘要

关系提取是从非结构化文本文档中构建知识库的一项关键任务。大多数自动关系提取的工作都是在大文本语料库中应用卷积神经网络(CNN)和长短期记忆(LSTM)等深度学习技术。然而,它们需要大量的人工标记数据,这是劳动密集型的,并且在没有人工监督的情况下很难应用于新的文件领域。本文提出了一种新的多领域文本关系提取框架。具体而言,我们分预处理、特征嵌入和关系提取三个阶段构建了该框架。研究表明,少量的训练数据足以训练我们的关系提取框架,并在关系提取工作中取得良好的准确性。
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Reducing Feature Embedding Data for Discovering Relations in Big Text Data
Relation extraction is a critical task in building a knowledge base from unstructured text documents. Most works in automatic relation extraction have applied deep learning techniques such as Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) in large text corpora. However, they require a large amount of human labelling data, which is labour intensive and is hardly applied in a new domain of document without human supervision. This paper proposes a novel framework to extract relations in multi-domain texts effectively. In particular, we construct the framework in three phases including preprocessing, feature embedding and relation extraction. We show that a small proportion of training data is sufficient to train our relation extraction framework and achieve a good accuracy in relation extraction works.
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