用户生成文本中基于位置的情感跨城市分析

Christopher Stelzmüller, Sebastian Tanzer, M. Schedl
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引用次数: 2

摘要

定位用户生成的内容是反映公民生活和感受的一个很有前景的数据来源。从这一来源提取的信息越来越多地用于城市规划和政策评价目的。虽然许多现有的研究都集中在社交媒体帖子中的位置和情绪之间的关系上,但我们的目标是揭示世界各地城市的位置和情绪之间的关系。因此,在本文中,我们分析了OpenStreetMap数据集中的多个兴趣点(poi)类别与附近发送的英语微博消息的情感之间的关系,使用了三个阶段的处理管道:(1)从Twitter上发布的地理定位微博中提取情感分数,(2)城市和poi的情感空间聚合,(3)分析聚合情感中的关系。我们根据poi确定了城市内Twitter用户情绪的差异,我们调查了这些情绪的时间动态,并比较了多个国家主要城市之间的发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-city Analysis of Location-based Sentiment in User-generated Text
Geolocated user-generated content is a promising source of data reflecting how citizens live and feel. Information extracted from this source is being increasingly used for urban planning and policy evaluation purposes. While a lot of existing research focuses on the relationship between locations and sentiment in social media postings, we aim to uncover relations between location and sentiment that are consistent over cities around the world. In this paper, we therefore analyze the relationship between multiple categories of points of interest (POIs) in the OpenStreetMap dataset and the sentiment of English microblogging messages sent nearby using a three-stage processing pipeline: (1) extract sentiment scores from geolocated microblogs posted on Twitter, (2) spatial aggregation of sentiment in cities and POIs, (3) analyze relationships in aggregated sentiment. We identify differences in Twitter users’ sentiments within cities based on POIs, and we investigate the temporal dynamics of these sentiments and compare our findings between major cities in multiple countries.
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