Component-based Analysis of Dynamic Search Performance

Ameer Albahem, Damiano Spina, Falk Scholer, L. Cavedon
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引用次数: 1

Abstract

In many search scenarios, such as exploratory, comparative, or survey-oriented search, users interact with dynamic search systems to satisfy multi-aspect information needs. These systems utilize different dynamic approaches that exploit various user feedback granularity types. Although studies have provided insights about the role of many components of these systems, they used black-box and isolated experimental setups. Therefore, the effects of these components or their interactions are still not well understood. We address this by following a methodology based on Analysis of Variance (ANOVA). We built a Grid Of Points that consists of systems based on different ways to instantiate three components: initial rankers, dynamic rerankers, and user feedback granularity. Using evaluation scores based on the TREC Dynamic Domain collections, we built several ANOVA models to estimate the effects. We found that (i) although all components significantly affect search effectiveness, the initial ranker has the largest effective size, (ii) the effect sizes of these components vary based on the length of the search session and the used effectiveness metric, and (iii) initial rankers and dynamic rerankers have more prominent effects than user feedback granularity. To improve effectiveness, we recommend improving the quality of initial rankers and dynamic rerankers. This does not require eliciting detailed user feedback, which might be expensive or invasive.
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基于组件的动态搜索性能分析
在许多搜索场景中,例如探索性、比较性或面向调查的搜索,用户与动态搜索系统交互以满足多方面的信息需求。这些系统利用不同的动态方法,利用不同的用户反馈粒度类型。尽管研究已经对这些系统的许多组成部分的作用提供了见解,但他们使用的是黑盒和孤立的实验设置。因此,这些成分的作用或它们之间的相互作用仍然没有得到很好的理解。我们通过遵循基于方差分析(ANOVA)的方法来解决这个问题。我们构建了一个由基于不同方式实例化三个组件的系统组成的点网格:初始排名、动态重新排名和用户反馈粒度。使用基于TREC动态域集合的评价分数,我们建立了几个方差分析模型来估计效果。我们发现(i)尽管所有成分都显著影响搜索有效性,但初始排名具有最大的有效大小,(ii)这些成分的效应大小根据搜索会话的长度和使用的有效性度量而变化,以及(iii)初始排名和动态重新排名的影响比用户反馈粒度更突出。为了提高有效性,我们建议提高初始排名和动态重新排名的质量。这不需要获取详细的用户反馈,这可能是昂贵的或侵入性的。
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