面向图像搜索的上下文感知评价

Yunqiu Shao, Jiaxin Mao, Yiqun Liu, Min Zhang, Shaoping Ma
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引用次数: 1

摘要

与一般的网络搜索相比,图像搜索引擎呈现结果的方式明显不同,这导致了用户行为模式的变化,从而给现有的评估机制带来了挑战。在本文中,我们关注图像搜索场景中的上下文因素。在均值方差分析的基础上,我们研究了上下文的影响,发现当返回的图像结果具有高方差时,评估指标与用户满意度更一致。此外,假设用户检查的图像结果可能会影响她接下来的判断,我们提出了上下文感知增益(CAG),这是一种新的评估指标,将上下文效应纳入众所周知的增益-折扣框架。实验结果表明,以用户满意度为黄金标准,通过适当组合折扣函数,所提出的上下文感知评价指标可以显著提高离线图像搜索评价指标的性能。
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Towards Context-Aware Evaluation for Image Search
Compared to general web search, image search engines present results in a significantly different way, which leads to changes in user behavior patterns, and thus creates challenges for the existing evaluation mechanisms. In this paper, we pay attention to the context factor in the image search scenario. On the basis of a mean-variance analysis, we investigate the effects of context and find that evaluation metrics align with user satisfaction better when the returned image results have high variance. Furthermore, assuming that the image results a user has examined might affect her following judgments, we propose the Context-Aware Gain (CAG), a novel evaluation metric that incorporates the contextual effects within the well-known gain-discount framework. Our experiment results show that, with a proper combination of discount functions, the proposed context-aware evaluation metric can significantly improve the performances of offline metrics for image search evaluation, considering user satisfaction as the golden standard.
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