Content-Based Relevance Estimation in Retrieval Settings with Ranking-Incentivized Document Manipulations

Ziv Vasilisky, Oren Kurland, Moshe Tennenholtz, Fiana Raiber
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Abstract

In retrieval settings such as the Web, many document authors are ranking incentivized: they opt to have their documents highly ranked for queries of interest. Consequently, they often respond to rankings by modifying their documents. These modifications can hurt retrieval effectiveness even if the resultant documents are of high quality. We present novel content-based relevance estimates which are "ranking-incentives aware"; that is, the underlying assumption is that content can be the result of ranking incentives rather than of pure authorship considerations. The suggested estimates are based on inducing information from past dynamics of the document corpus. Empirical evaluation attests to the clear merits of our most effective methods. For example, they substantially outperform state-of-the-art approaches that were not designed to address ranking-incentivized document manipulations.
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排序激励文档操作检索设置中基于内容的相关性估计
在诸如Web之类的检索设置中,许多文档作者都有排序的动机:他们选择根据感兴趣的查询对文档进行高排序。因此,他们经常通过修改他们的文档来回应排名。即使生成的文档质量很高,这些修改也会损害检索的有效性。我们提出了新颖的基于内容的相关性估计,这是“排名激励意识”;也就是说,潜在的假设是,内容可能是排名激励的结果,而不是纯粹的作者考虑。建议的估计是基于从文档语料库的过去动态中引入的信息。经验评价证明了我们最有效的方法的明显优点。例如,它们在性能上大大优于没有设计用于解决排名激励文档操作的最先进方法。
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