Social Media-based Profiling of Business Locations

GeoMM '14 Pub Date : 2014-11-07 DOI:10.1145/2661118.2661119
Francine Chen, D. Joshi, Yasuhide Miura, T. Ohkuma
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引用次数: 15

Abstract

We present a method for profiling businesses at specific locations that is based on mining information from social media. The method matches geo-tagged tweets from Twitter against venues from Foursquare to identify the specific business mentioned in a tweet. By linking geo-coordinates to places, the tweets associated with a business, such as a store, can then be used to profile that business. We used a sentiment estimator developed for tweets to create sentiment profiles of the stores in a chain, computing the average sentiment of tweets associated with each store. We present the results as heatmaps which show how sentiment differs across stores in the same chain and how some chains have more positive sentiment than other chains. We also created profiles of social group size for businesses and show sample heatmaps illustrating how the size of a social group can vary.
基于社交媒体的商业地点分析
我们提出了一种基于从社交媒体中挖掘信息的方法来分析特定地点的企业。该方法将Twitter上带有地理标记的推文与Foursquare上的地点进行比对,以识别推文中提到的具体业务。通过将地理坐标链接到地点,与企业(如商店)相关的tweet就可以用来分析该企业。我们使用为tweet开发的情感估计器来创建连锁店中商店的情感配置文件,计算与每个商店相关的tweet的平均情感。我们将结果以热图的形式呈现,热图显示了同一连锁店中不同商店的情绪差异,以及一些连锁店的情绪比其他连锁店更积极。我们还为企业创建了社会群体规模的概况,并展示了示例热图,说明社会群体的规模如何变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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