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Geolocation prediction in social media data using text analysis: A review

机译:使用文本分析的社交媒体数据中的地理位置预测:回顾

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Geolocation information from social media data is essential for conducting geolocation-based analyzes such as traffic analysis and tourism analysis. However, geolocation information on social media data is still very limited. Only about 0.87% to 3% of data are geotagged data. Geolocation Prediction (GP) becomes a solution to overcome the problem. There are various approach to conduct Geolocation Prediction and each approach may give different result of location. The selection of the Geolocation Prediction approach then become important. Selected approach must be suitable for the needs of the analysis conducted. This paper focuses on reviewing geolocation prediction approaches based on text analysis in social media data. The review result shows that geolocation prediction approaches can be categorized into two categories called Content-based Geolocation Prediction and User-profiling-based Geolocation Prediction. This review further concludes that Content-based Geolocation Prediction is suitable for addressing geotagged data limitations in Location-specific Analysis because the location prediction results are specific to place-level. While combination approach is suitable to overcome the problem of geotagged data limitations on Location-distribution Analysis because it produces predictions of location at higher levels such as city-level, province-level, and country-level.
机译:来自社交媒体数据的地理位置信息对于进行基于地理位置的分析(例如流量分析和旅游分析)至关重要。但是,社交媒体数据上的地理位置信息仍然非常有限。只有约0.87%至3%的数据是地理标记数据。地理位置预测(GP)成为解决该问题的解决方案。进行地理位置预测的方法多种多样,每种方法可能会给出不同的位置结果。然后,地理位置预测方法的选择就变得很重要。选择的方法必须适合进行的分析需求。本文重点研究基于社交媒体数据中文本分析的地理位置预测方法。审查结果表明,地理位置预测方法可以分为两类,分别是基于内容的地理位置预测和基于用户配置文件的地理位置预测。这篇评论进一步得出结论,基于内容的地理位置预测适用于解决位置特定分析中的地理标记数据限制,因为位置预测结果特定于地点级别。尽管组合方法适用于克服地理位置分布分析中的地理标记数据限制的问题,因为组合方法可生成更高级别(例如城市级别,省级别和国家级别)的位置预测。

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