基于社交媒体数据的洪水监测信息提取方法

P. K. Putra, D. B. Sencaki, G. P. Dinanta, F. Alhasanah, R. Ramadhan
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引用次数: 2

摘要

雅加达经常发生的洪水自然灾害对许多部门产生了不良影响。需要采取对策、快速行动和监测,以尽量减少所发生的影响。社交媒体是一个技术平台,可以提供与洪水相关的数据,这些数据可以作为监测系统的主要数据或补充数据。本研究的重点是利用社交媒体数据作为洪水监测数据。使用的分析是使用自然语言处理方法的分析。本研究使用的分类算法方法是朴素贝叶斯、随机森林、支持向量机、逻辑回归和条件随机场。使用的位置信息提取方法是Standford NER和Geocoding。本研究产生了三种模型。第一个模型是分类模型,用于对相关数据进行分类,f1-评分评价值为82.5%。第二个模型是NER模型,该模型用于从句子中提取位置实体,其f1评分评价值为73%。最后一个是地理编码定位器,识别道路的成功率为75%。这项研究还产生了一个简单的仪表板,可以用作可视化工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flood Monitoring with Information Extraction Approach from Social Media Data
Flood natural disasters that often occur in Jakarta have a bad impact on many sectors. Countermeasures, fast action, and monitoring need to be done to minimize the impact that occurs. Social Media is a technology platform that can provide flood-related data that can be used as primary data or complementary data for monitoring systems. This study focuses on using social media data to be used as flood monitoring data. The analysis used is an analysis with a natural language processing approach. The classification algorithm method used in this study is naive Bayes, random forest, support vector machine, logistic regression, and conditional random field. Location information extraction methods used are Standford NER and Geocoding. This research produces three models. The first model is the classification model used to classify relevant data with an f1- score evaluation value of 82.5%. The second model is the NER model which is used to extract location entities from sentences with an f1-score evaluation value of 73%. The last one is the locator of geocoding with a success rate of 75% for identifying roads. This research also produces a simple dashboard that can be used as a visualization tool.
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