搜索引擎评估使用用户的努力

R. K. Goutam, S. Dwivedi
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引用次数: 5

摘要

搜索引擎的性能评价不断成为一个研究问题。许多研究者尝试用不同的参数来衡量信息检索系统的质量,并取得了一些里程碑式的成果。在分级相关性依赖度量的情况下,存在处理检索结果位置的贴现累积增益度量。在本文中,我们提出了在人工评估和点击点击的帮助下学习排名的任务。我们将专家对结果的判断与用户的点击次数相结合,发现该策略对排序是有效的。所提出的排名方法可以看作是期望互惠排名的扩展,它与点击指标的相关性比编辑指标更强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Search engines evaluation using users efforts
The performance evaluation of search engines continues to become an research problem. Numerous researchers tried to measure the quality of information retrieval systems with different parameters and achieved several milestones. in case of graded relevance dependent measures, the Discounted Cumulative Gain metric exists that deals with the position of the retrieved results. In this paper, we present the task of learning rankings with the help of human assessment and click hits. we combined experts judgments about the results with the users clicks hits and found that this strategy is effective to assign ranking. The proposed ranking method can be seen as an extension of Expected Reciprocal Ranking that correlates better with clicks metrics than editorial metrics.
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