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首页> 外文期刊>International journal on Semantic Web and information systems >Ontology With Hybrid Clustering Approach for Improving the Retrieval Relevancy in Social Event Detection
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Ontology With Hybrid Clustering Approach for Improving the Retrieval Relevancy in Social Event Detection

机译:具有混合聚类方法的本体论,用于改善社交事件检测中的检索相关性

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摘要

Progression in digital technology and the fame of social media sites such as Facebook, YouTube, Flicker etc., necessitate sharing memories. This results in a colossal amount of multimedia content such as text, audio, photographs and video on the web. Retrieving photographs exclusively from web in the large collection is a challenging task. One way to retrieve photographs is by identifying them as events. The automatic organization of a multimedia collection into groups of items, where each group corresponds to a distinct event is described as Social Event Detection (SED). Contextual information, present for each photograph in social media adds semantics to the photographs. For semantic based retrieval, ontology based approaches yield good retrieval results, by reducing the number of false positives. So, the proposed approach moves with domain ontology construction followed by a hybrid clustering approach. Compared to the existing single-pass incremental clustering algorithm, the proposed approach ensures a good f-measure of 0.8608.
机译:数字技术的进展和Facebook,YouTube,Flicker等社交媒体网站的名声,需要分享回忆。这导致多媒体内容的巨大量,例如网络上的文本,音频,照片和视频。在大集合中专门从Web中检索照片是一个具有挑战性的任务。检索照片的一种方法是将它们识别为事件。将多媒体集合的自动组织成项目组,其中每个组对应于不同事件被描述为社交事件检测(SED)。社交媒体中每张照片的上下文信息为照片添加了语义。对于基于语义的检索,基于本体的方法通过减少误报的数量来产生良好的检索结果。因此,所提出的方法随着域本体建设的方式,然后是混合聚类方法。与现有的单通过增量聚类算法相比,所提出的方法确保了0.8608的良好F测量。

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