来自flickr的基于性别的位置模型

GeoMM '12 Pub Date : 2012-10-29 DOI:10.1145/2390790.2390802
Neil O'Hare, Vanessa Murdock
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引用次数: 8

摘要

来自Flickr等社交媒体平台的地理标记内容提供了关于任何给定位置的大量数据,这些数据可用于创建用于描述位置的语言模型。迄今为止,位置模型忽略了用户之间的差异。本文关注人口统计学的一个方面,即性别,并在一个大规模的地理标记Flickr图像语料库中探索性别和位置之间的关系。我们发现男性用户比女性用户更有可能给他们的照片打上地理标签,并且男性用户的地理标签照片比女性用户的地理覆盖范围更广。我们使用描述地理标记照片的Flickr标签创建了基于性别的位置语言模型,并发现男性用户创建的Flickr标签比女性用户创建的Flickr标签包含更多的地理信息,并且基于他们的标签可以更准确地定位他们。此外,仅使用男性用户数据创建的模型比使用女性用户数据创建的模型更准确。尽管我们的研究结果表明,使用特定性别的模型有一些好处,但这种好处是相当小的,并且被男性数据中更丰富的位置信息所淹没。研究结果还表明,基于性别的区位模型差异在超局部水平上更为重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gender-based models of location from flickr
Geo-tagged content from social media platforms such as Flickr provide large amounts of data about any given location, which can be used to create models of the language used to describe locations. To date, models of location have ignored the differences between users. This paper focuses on one aspect of demographics, namely gender, and explores the relationship between gender and location in a large-scale corpus of geo-tagged Flickr images. We find that male users are much more likely to geo-tag their photos than female users, and that the geo-tagged photos of male users have wider geographic coverage than those of females. We create gender-based language models of location using the Flickr tags describing geo-tagged photos, and find that Flickr tags created by male users contain more geographic information than those created by female users, and that they can be located based on their tags far more accurately. Further, models created exclusively with data from male users are more accurate than those created from female users' data. Although our results suggest that there is some benefit from using gender-specific models, this benefit is quite minor, and is overwhelmed by the richer location information in the male data. The results also show that gender-based differences in location models are more important at the hyper-local level.
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