首页> 外文会议>Twenty-Seventh International Conference on Very Large Data Bases, 27th, Sep 11-14th, 2001, Roma, Italy >FeedbackBypass: A New Approach to Interactive Similarity Query Processing
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FeedbackBypass: A New Approach to Interactive Similarity Query Processing

机译:FeedbackBypass:交互式相似性查询处理的新方法

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In recent years, several methods have been proposed for implementing interactive similarity queries on multimedia databases. Common to all these methods is the idea to exploit user feedback in order to progressively adjust the query parameters and to eventually converge to an "optimal" parameter setting. However, all these methods also share the drawback to "forget" user preferences across multiple query sessions, thus requiring the feedback loop to be restarted for every new query, i.e. using default parameter values. Not only is this proceeding frustrating from the user's point of view but it also constitutes a significant waste of system resources. In this paper we present FeedbackBypass, a new approach to interactive similarity query processing. It complements the role of relevance feedback engines by storing and maintaining the query parameters determined with feedback loops over time, using a wavelet-based data structure (the Simplex Tree). For each query, a favorable set of query parameters can be determined and used to either "bypass" the feedback loop completely for already-seen queries, or to start the search process from a near-optimal configuration. FeedbackBypass can be combined well with all state-of-the-art relevance feedback techniques working in high-dimensional vector spaces. Its storage requirements scale linearly with the dimensionality of the query space, thus making even sophisticated query spaces amenable. Experimental results demonstrate both the effectiveness and efficiency of our technique.
机译:近年来,已经提出了几种在多媒体数据库上实现交互式相似性查询的方法。所有这些方法的共同点是利用用户反馈以逐步调整查询参数并最终收敛到“最佳”参数设置的想法。但是,所有这些方法还具有在多个查询会话中“忘记”用户首选项的缺点,因此需要针对每个新查询重新启动反馈循环,即使用默认参数值。从用户的角度来看,这不仅令人沮丧,而且还严重浪费了系统资源。在本文中,我们提出了FeedbackBypass,这是一种用于交互式相似性查询处理的新方法。通过使用基于小波的数据结构(单纯形树),随着时间的推移存储和维护由反馈循环确定的查询参数,它补充了相关性反馈引擎的作用。对于每个查询,可以确定一组有利的查询参数,并用于完全“绕过”已见过的查询的反馈循环,或从接近最佳的配置开始搜索过程。 FeedbackBypass可以与在高维向量空间中工作的所有最新相关反馈技术很好地结合在一起。它的存储需求随查询空间的维数线性增长,因此,即使是复杂的查询空间也可以使用。实验结果证明了我们技术的有效性和效率。

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