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首页> 外文期刊>Information Sciences: An International Journal >Categorizing events using spatio-temporal and user features from Flickr
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Categorizing events using spatio-temporal and user features from Flickr

机译:使用Flickr中的时空和用户功能对事件进行分类

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摘要

Even though the problem of event detection from social media has been well studied in recent years, few authors have looked at deriving structured representations for their detected events. We envision the use of social media for extracting large-scale structured event databases, which could in turn be used for answering complex (historical) queries. As a key stepping-stone towards this goal, we introduce a method for discovering the semantic type of extracted events, focusing in particular on how this type is influenced by the spatio-temporal grounding of the event, the profile of its attendees, and the semantic type of the venue and other entities which are associated with the event. We estimate the aforementioned characteristics from metadata associated with Flickr photos of the event and then use an ensemble learner to identify its most likely semantic type. Experimental results based on an event dataset from Upcoming.org and Last.fm show a marked improvement over bag-of-words based methods. (C) 2015 Elsevier Inc. All rights reserved.
机译:尽管近年来对社交媒体的事件检测问题进行了深入研究,但很少有作者关注于为其检测到的事件推导结构化表示。我们设想使用社交媒体来提取大规模结构化事件数据库,而该数据库又可以用于回答复杂(历史)查询。作为实现此目标的关键垫脚石,我们介绍了一种发现提取事件的语义类型的方法,尤其着重于事件的时空基础,参与者的个人资料以及场所和与事件相关联的其他实体的语义类型。我们从与事件的Flickr照片关联的元数据中估算上述特征,然后使用整体学习器识别其最可能的语义类型。基于来自Upcoming.org和Last.fm的事件数据集的实验结果表明,与基于词袋的方法相比,该方法有明显的改进。 (C)2015 Elsevier Inc.保留所有权利。

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