Active selection for multi-example querying by content

A. Natsev, John R. Smith
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引用次数: 11

Abstract

Multi-example content-based retrieval (MECBR) is the process of querying content by specifying multiple query examples with single query iteration. MECBR attempts to mitigate some of the semantic limitations of traditional relevance feedback or CBR techniques by allowing multiple query examples and thus a more accurate modeling of the user's query need. It also attempts to minimize the burden on the user, as compared to relevance feedback methods, by eliminating the need for user feedback and limiting all interaction into a single query specification step. Multi-example content-based retrieval is therefore a simple alternative for modeling low- and mid-level semantics without the need for heavy user interaction or extensive training, as in interactive feedback systems or complex statistical modeling approaches. In this paper, we describe the MECBR technique in some detail and study methods for active selection of query examples and query features. In particular, we propose and investigate techniques for automatic query example selection, feature selection, and feature fusion. We compare different approaches and evaluate performance of different parameter settings through an extensive empirical study. We also compare MECBR performance to that of explicitly built semantic models using state-of-the-art support vector machines (SVM). We find that lightweight MECBR performs up to 60% better for rare concepts and only 12% to 25% worse for frequent concepts, as compared to heavy-weight SVM modeling! This shows that MECBR is not only a viable lightweight alternative to statistical semantic modeling but is also preferred for very diverse or rare-class semantic modeling situations.
根据内容进行多示例查询的主动选择
基于内容的多示例检索(MECBR)是通过单个查询迭代指定多个查询示例来查询内容的过程。MECBR试图通过允许多个查询示例来减轻传统相关反馈或CBR技术的一些语义限制,从而更准确地建模用户的查询需求。与相关反馈方法相比,它还试图通过消除对用户反馈的需求并将所有交互限制在单个查询规范步骤中,从而将用户的负担降至最低。因此,多示例基于内容的检索是一种简单的替代方法,可用于对低级和中级语义进行建模,而不需要像交互式反馈系统或复杂的统计建模方法那样进行大量的用户交互或广泛的培训。本文对MECBR技术进行了较为详细的描述,并研究了主动选择查询实例和查询特征的方法。特别地,我们提出并研究了自动查询示例选择、特征选择和特征融合技术。通过广泛的实证研究,我们比较了不同的方法并评估了不同参数设置的性能。我们还将MECBR的性能与使用最先进的支持向量机(SVM)明确构建的语义模型进行了比较。我们发现,与权重SVM建模相比,轻量级的MECBR在罕见概念上的性能提高了60%,而在频繁概念上的性能只差了12%到25% !这表明MECBR不仅是统计语义建模的一种可行的轻量级替代方案,而且对于非常多样化或稀有类的语义建模情况也是首选。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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