迭代机器学习在文本数据集标注中的应用

Thiago Abdo, Fabiano Silva
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引用次数: 0

摘要

本文的目的是分析不同机器学习方法和算法的使用,将其集成为工具上的自动辅助,以帮助创建新的注释数据集。我们评估它们在没有专用机器学习硬件的环境中如何扩展。特别是,我们研究了对一个数据集的影响,其中有几个例子和一个正在构建的数据集。我们使用深度学习算法(Bert)和计算成本较低的经典学习算法(W2V和Glove结合RF和SVM)进行了实验。我们的实验表明,深度学习算法比经典技术具有性能优势。然而,深度学习算法的计算成本很高,不适合硬件资源较少的环境。模拟使用主动和迭代机器学习技术,以协助创建新的数据集进行。对于这些模拟,我们使用经典的学习算法,因为它们的计算成本。通过我们的实验评估收集的知识旨在支持创建用于构建新文本数据集的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Iterative machine learning applied to annotation of text datasets
The purpose of this paper is to analyze the use of different machine learning approaches and algorithms to be integrated as an automated assistance on a tool to aid the creation of new annotated datasets. We evaluate how they scale in an environment without dedicated machine learning hardware. In particular, we study the impact over a dataset with few examples and one that is being constructed. We experiment using deep learning algorithms (Bert) and classical learning algorithms with a lower computational cost (W2V and Glove combined with RF and SVM). Our experiments show that deep learning algorithms have a performance advantage over classical techniques. However, deep learning algorithms have a high computational cost, making them inadequate to an environment with reduced hardware resources. Simulations using Active and Iterative machine learning techniques to assist the creation of new datasets are conducted. For these simulations, we use the classical learning algorithms because of their computational cost. The knowledge gathered with our experimental evaluation aims to support the creation of a tool for building new text datasets.
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