使用历史数据增强等级聚合

Miriam Fernández, D. Vallet, P. Castells
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引用次数: 21

摘要

等级聚合是红外技术中普遍存在的一种操作。我们假设基于分数的聚合的性能可能会受到输入分数分布中持续出现的人为的、通常是无意义的偏差的影响,当个体偏差彼此不同时,这些偏差会扭曲组合结果。我们提出了一个基于分数的排名聚合模型,其中源分数在组合之前被归一化为共同分布。对几个TREC收集的可用数据进行的早期实验表明支持我们的建议。
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Using historical data to enhance rank aggregation
Rank aggregation is a pervading operation in IR technology. We hypothesize that the performance of score-based aggregation may be affected by artificial, usually meaningless deviations consistently occurring in the input score distributions, which distort the combined result when the individual biases differ from each other. We propose a score-based rank aggregation model where the source scores are normalized to a common distribution before being combined. Early experiments on available data from several TREC collections are shown to support our proposal.
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