从投诉报告中提取当前的实际状态和需求表达

Yuta Sano, Tsunenori Mine
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引用次数: 3

摘要

政府2.0活动最近变得非常有吸引力和流行。使用诸如FixMyStreet、SeeClickFix或citysource等支持活动的平台,任何人都可以随时在网络上报告城市中的问题或投诉以及他们的照片和地理信息,并与其他人分享。另一方面,与电话不同,报道的真实性取决于报道者;实际状态和对状态的需求可能没有被清楚地描述,或者其中任何一个可能在报告中被遗漏。因此,城管部门的工作人员可能无法从报告中了解实际情况或对情况的要求。要解决这些问题,就必须对缺失的信息进行补充,并从报告中的模糊信息中估计出实际状态或对状态的需求。本文提出了一种新的方法来检测报告中与实际状态相关的段和对状态的需求。该方法将经验规则与几种机器学习技术相结合,主动使用单词之间的依赖关系。实验结果验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extraction of current actual status and demand expressions from complaint reports
Government 2.0 activities have become very attractive and popular these days. Using platforms to support the activities such as FixMyStreet, SeeClickFix, or CitySourced, anyone can anytime report issues or complaints in a city with their photographs and geographical information on the Web, and share them with other people. On the other hand, unlike telephone calls, the concreteness of a report depends on its reporter; the actual status and demand to the status may not be described clearly or either one may be miss-described in the report. It may accordingly happen that officials in the city management section can not understand the actual status or a demand to the status from the report. To solve the problems, it is indispensable to complement missing information and estimate the actual status or the demand to the status from ambiguous information in the report. This paper proposes novel methods to detect segments related to an actual status and the demand to the status in a report. The methods combine empirical rules with several machine learning techniques that actively use dependency relation between words. Experimental results illustrate the validity of the proposed methods.
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