An Intelligent Government Complaint Prediction Approach

IF 3.5 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Siqi Chen , Yanling Zhang , Bin Song , Xiaojiang Du , Mohsen Guizani
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引用次数: 2

Abstract

Recent advances in machine learning (ML) bring more opportunities for greater implementation of smart government construction. However, there are many challenges in terms of government data application due to the previous nonstandard records and man-made errors. In this paper, we propose a practical intelligent government complaint prediction (IGCP) framework that helps governments quickly respond to citizens' consultations and complaints via ML technologies. In addition, we put forward an automatic label correction method and demonstrate its effectiveness on the performance improvement of intelligent government complaint prediction task. Specifically, the central server collects the interaction records from users and departments and automatically integrates them by the label correction approach which is designed to evaluate the similarity between different labels in data, and merge highly similar labels and corresponding samples into their most similar category. Based on those refined data, the central server quickly generates accurate solutions to complaints through text classification algorithms. The main innovation of our approach is that we turn the task of government complaint distribution into a text classification problem which is uniformly coordinated by the central server, and employ the label correction approach to correct redundant labels for training better models based on limited complaint records. To explore the influences of our approach, we evaluate its performance on real-world government service records provided by our collaborator. The experimental results demonstrate the prediction task which uses the label correction algorithm achieves significant improvements on almost all metrics of the classifier.

一种智能政府投诉预测方法
近年来,机器学习的发展为智能政府建设带来了更多的机会。然而,由于以往的不规范记录和人为错误,在政府数据应用方面存在许多挑战。在本文中,我们提出了一个实用的智能政府投诉预测(IGCP)框架,帮助政府通过ML技术快速响应公民的咨询和投诉。此外,我们还提出了一种自动标签校正方法,并验证了其在智能政府投诉预测任务性能提升中的有效性。具体而言,中央服务器收集来自用户和部门的交互记录,并通过标签校正方法自动整合,该方法旨在评估数据中不同标签之间的相似度,并将高度相似的标签和相应的样本合并到最相似的类别中。基于这些精细化的数据,中央服务器通过文本分类算法快速生成准确的投诉解决方案。该方法的主要创新点是将政府投诉分发任务转化为由中央服务器统一协调的文本分类问题,并采用标签校正方法对冗余标签进行校正,从而在有限的投诉记录基础上训练出更好的模型。为了探索我们的方法的影响,我们在合作者提供的真实政府服务记录上评估了它的表现。实验结果表明,使用标签校正算法的预测任务在分类器的几乎所有指标上都取得了显著的改进。
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来源期刊
Big Data Research
Big Data Research Computer Science-Computer Science Applications
CiteScore
8.40
自引率
3.00%
发文量
0
期刊介绍: The journal aims to promote and communicate advances in big data research by providing a fast and high quality forum for researchers, practitioners and policy makers from the very many different communities working on, and with, this topic. The journal will accept papers on foundational aspects in dealing with big data, as well as papers on specific Platforms and Technologies used to deal with big data. To promote Data Science and interdisciplinary collaboration between fields, and to showcase the benefits of data driven research, papers demonstrating applications of big data in domains as diverse as Geoscience, Social Web, Finance, e-Commerce, Health Care, Environment and Climate, Physics and Astronomy, Chemistry, life sciences and drug discovery, digital libraries and scientific publications, security and government will also be considered. Occasionally the journal may publish whitepapers on policies, standards and best practices.
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