从交通事件相关文本中提取位置

A. Rozie, P. Khotimah, Andria Arisal, Lia Sadita, M. H. Izzaturrahim
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引用次数: 0

摘要

与地理空间相关的内容是出行规划系统中非常重要的内容之一。为了确保旅行计划系统是最优和安全的,需要有关交通状况、事件及其位置的信息。人们经常在社交媒体上谈论交通状况,比如交通堵塞、弯路或事故。这些活动提供与交通事件相关的文本数据。位置被认为是交通事件相关文本中识别事件发生地点的重要信息。本研究使用印尼语短文本与命名实体识别(NER)技术进行位置提取。数据来自基于twitter的社交媒体(lewatmana.com)。利用双向长短期记忆-条件随机场(BiLSTM - CRF)模型和印尼语词性标注器建立命名实体识别模型进行位置提取。我们目前的模型显示出很好的结果,准确率为91.21%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Location extraction from Traffic Event-related Text
One of the contents that will play an important role in the trip planning system is content related to geospatial. To ensure that the trip planning system is optimal and safe, information about traffic conditions, events, as well as their location is required. People often talk about traffic conditions on social media, such as traffic jams, detours, or accidents. These activities provide textual data related to traffic events. Location is regarded as essential information from traffic event-related texts to identify where the event took place. This study uses Indonesian short text for location extraction with named entity recognition (NER) technique. Data from twitter-based social media (lewatmana.com) are collected. Bidirectional Long Short-Term Memory - Conditional Random Field (BiLSTM - CRF) model and Indonesian POS tagger are used to develop the named entity recognition model for location extraction. Our current model shows promising results with 91.21% accuracy.
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