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Hierarchical clustering pseudo-relevance feedback for social image search result diversification

机译:分层聚类伪相关性反馈用于社会图像搜索结果多样化

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This article addresses the issue of social image search result diversification. We propose a novel perspective for the diversification problem via Relevance Feedback (RF). Traditional RF introduces the user in the processing loop by harvesting feedback about the relevance of the search results. This information is used for recomputing a better representation of the data needed. The novelty of our work is in exploiting this concept in a completely automated manner via pseudo-relevance, while pushing in priority the diversification of the results, rather than relevance. User feedback is simulated automatically by selecting positive and negative examples with regard to relevance, from the initial query results. Unsupervised hierarchical clustering is used to re-group images according to their content. Diversification is finally achieved with a re-ranking approach. Experimental validation on Flickr data shows the advantages of this approach.
机译:本文解决了社交图像搜索结果多样化的问题。我们通过相关性反馈(RF)为多元化问题提出了一种新颖的观点。传统的RF通过收集有关搜索结果相关性的反馈将用户引入处理循环。此信息用于重新计算所需数据的更好表示。我们工作的新颖性在于通过伪相关性以完全自动化的方式利用这一概念,同时优先推动结果的多样化而不是相关性。通过从初始查询结果中选择相关性的肯定和否定示例,可以自动模拟用户反馈。无监督分层聚类用于根据图像的内容对图像进行重新分组。最终,通过重新排序方法实现了多元化。对Flickr数据的实验验证表明了这种方法的优势。

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