区域投诉投诉处理的优先关系估计

Kohei Yamaguchi, Tsunenori Mine
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引用次数: 0

摘要

一个由公民和政府共同努力解决地区问题的系统被称为政府2.0。为推广该系统,正在推进通过移动人群感知和协同物联网收集区域问题。另一方面,虽然对收集到的问题进行排序是必要的,但传统的方法只是对问题进行分类,而没有确定问题之间的优先关系。此外,最新的深度学习模型尚未应用于该任务。在本研究中,我们将BERT应用于任务中,以确定基于公民安全和保障的收集问题的优先级。我们对一组区域投诉公民报告数据进行了实验。实验结果表明,BERT(微调方法)即使在具有较小词汇量和优先级标签偏差的数据集(例如本任务中的数据集)的情况下,也优于其他基线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of Precedence Relations to Deal with Regional Complaint Reports
A system in which citizens and the government work together to solve regional issues is known as Government 2.0. To promote this system, the collection of regional issues through mobile crowd sensing and collaborative IoT is being promoted. On the other hand, although prioritization is essential to solve the collected issues, conventional methods only classify the issues and do not identify the precedence relations between the issues. In addition, the latest deep learning models have not been applied to this task. In this study, we apply BERT to the task to identify the priorities of the collected issues based on the safety and security of citizens. We conduct experiments on a data set of regional complaint citizen reports. Experimental results illustrate that the BERT (fine-tuned approach) outperformed the other baseline methods even in the case of data sets with small vocabulary and biases among priority labels, such as the one in this task.
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