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Iterative Ranking from Pair-wise Comparisons

机译:成对比较的迭代排名

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The question of aggregating pairwise comparisons to obtain a global ranking over a collection of objects has been of interest for a very long time: be it ranking of online gamers (e.g. MSR's TrueSkill system) and chess players, aggregating social opinions, or deciding which product to sell based on transactions. In most settings, in addition to obtaining ranking, finding 'scores' for each object (e.g. player's rating) is of interest to understanding the intensity of the preferences. In this paper, we propose a novel iterative rank aggregation algorithm for discovering scores for objects from pairwise comparisons. The algorithm has a natural random walk interpretation over the graph of objects with edges present between two objects if they are compared; the scores turn out to be the stationary probability of this random walk. The algorithm is model independent. To establish the efficacy of our method, however, we consider the popular Bradley-Terry-Luce (BTL) model in which each object has an associated score which determines the probabilistic outcomes of pairwise comparisons between objects. We bound the finite sample error rates between the scores assumed by the BTL model and those estimated by our algorithm. This, in essence, leads to order-optimal dependence on the number of samples required to learn the scores well by our algorithm. Indeed, the experimental evaluation shows that our (model independent) algorithm performs as well as the Maximum Likelihood Estimator of the BTL model and outperforms a recently proposed algorithm by Ammar and Shah [1].
机译:聚集成对比较以获取对象集合的全局排名的问题很长时间以来一直是人们关注的问题:在线游戏玩家(例如MSR的TrueSkill系统)和国际象棋玩家的排名,聚集社会意见或决定哪种产品根据交易进行销售。在大多数情况下,除了获得排名之外,找到每个对象的“分数”(例如玩家的评分)对于理解偏好的强度也很重要。在本文中,我们提出了一种新颖的迭代秩聚合算法,用于从成对比较中发现对象的分数。如果对对象进行比较,该算法对对象的图形具有自然的随机游走解释;分数证明是该随机游动的平稳概率。该算法与模型无关。但是,为了确定我们方法的有效性,我们考虑了流行的Bradley-Terry-Luce(BTL)模型,其中每个对象都有一个相关的分数,该分数决定了对象之间成对比较的概率结果。我们将有限的样本错误率限制在BTL模型假设的分数与算法估计的分数之间。从本质上讲,这导致对顺序的优化依赖于我们的算法才能很好地学习分数所需的样本数量。确实,实验评估表明,我们的(模型无关)算法的性能与BTL模型的最大似然估计器相同,并且优于Ammar和Shah [1]最近提出的算法。

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