从比较数据推断排名分数的加速MM算法

Oper. Res. Pub Date : 2022-08-09 DOI:10.1287/opre.2022.2264
M. Vojnović, Se-Young Yun, Kaifang Zhou
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引用次数: 1

摘要

基于观察到的比较数据(例如,配对比较,选择和完整排名结果)为项目分配排名分数在广泛的应用中一直受到关注,包括信息搜索,社会意见聚合,电子商务,在线游戏平台,以及最近的机器学习算法评估。关键问题是计算排名分数,这对于量化技能、相关性或偏好的强度以及预测排名结果很有意义。最流行的排名结果统计模型之一是成对比较的布拉德利-特里模型及其扩展到选择和完整排名结果。在“从比较数据推断排名分数的加速MM算法”,M. Vojnovic, S.-Y。Yun和K. Zhou表明,用于推断广义Bradley-Terry排名模型的排名分数的流行MM算法存在缓慢的收敛问题,他们提出了一种新的加速算法来解决这一缺点,并可以产生显着的收敛速度。
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Accelerated MM Algorithms for Inference of Ranking Scores from Comparison Data
Accelerated Algorithms for Ranking Assigning ranking scores to items based on observed comparison data (e.g., paired comparisons, choice, and full ranking outcomes) has been of continued interest in a wide range of applications, including information search, aggregation of social opinions, electronic commerce, online gaming platforms, and more recently, evaluation of machine learning algorithms. The key problem is to compute ranking scores, which are of interest for quantifying the strength of skills, relevancies, or preferences, and prediction of ranking outcomes. One of the most popular statistical models of ranking outcomes is the Bradley–Terry model for paired comparisons and its extensions to choice and full ranking outcomes. In “Accelerated MM Algorithms for Inference of Ranking Scores from Comparison Data,” M. Vojnovic, S.-Y. Yun, and K. Zhou show that a popular MM algorithm for inference of ranking scores for generalized Bradley–Terry ranking models suffers a slow convergence issue, and they propose a new accelerated algorithm that resolves this shortcoming and can yield substantial convergence speedups.
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