Complaint Analysis and Classification for Economic and Food Safety

João Filgueiras, Luís Barbosa, Gil Rocha, Henrique Lopes Cardoso, Luís Paulo Reis, J. Machado, Ana Maria Oliveira
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引用次数: 9

Abstract

Governmental institutions are employing artificial intelligence techniques to deal with their specific problems and exploit their huge amounts of both structured and unstructured information. In particular, natural language processing and machine learning techniques are being used to process citizen feedback. In this paper, we report on the use of such techniques for analyzing and classifying complaints, in the context of the Portuguese Economic and Food Safety Authority. Grounded in its operational process, we address three different classification problems: target economic activity, implied infraction severity level, and institutional competence. We show promising results obtained using feature-based approaches and traditional classifiers, with accuracy scores above 70%, and analyze the shortcomings of our current results and avenues for further improvement, taking into account the intended use of our classifiers in helping human officers to cope with thousands of yearly complaints.
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经济与食品安全投诉分析与分类
政府机构正在利用人工智能技术来处理他们的具体问题,并利用他们大量的结构化和非结构化信息。特别是,自然语言处理和机器学习技术被用于处理公民反馈。在本文中,我们报告了在葡萄牙经济和食品安全局的背景下使用这种技术来分析和分类投诉。在其操作过程的基础上,我们解决了三个不同的分类问题:目标经济活动、隐含的违规严重程度和机构能力。我们展示了使用基于特征的方法和传统分类器获得的有希望的结果,准确率超过70%,并分析了我们目前结果的缺点和进一步改进的途径,考虑到我们的分类器在帮助人类官员处理每年成千上万的投诉方面的预期用途。
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