使用一致性惩罚聚合不同的判断

Guanchun Wang, S. Kulkarni, H. Poor
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引用次数: 1

摘要

本文给出了求解概率判断聚合问题的实用算法。首先,介绍了Predd等人提出的可扩展相干逼近原理(scalable Coherent Approximation Principle, CAP)算法及其通过连续正交投影节省的计算量。本文还讨论了德菲内蒂定理在这种情况下的含义。然后定义了相干惩罚,提出了相干惩罚加权原则(coherence penalty Weighted Principle, CPWP)来利用数据结构和相干逼近的优势。为指导原则提供了理由,即应该给予更连贯的法官更大的权重。在收集的数据库和模拟数据上给出了Brier分数的模拟结果进行比较。除了CPWP之外,还提出了一种具有权重更新的递归在线变体,以适应实时聚合问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aggregating disparate judgments using a coherence penalty
In this paper, practical algorithms for solving the probabilistic judgment aggregation problem are given. First, the scalable Coherent Approximation Principle (CAP) algorithm proposed by Predd, et al., and its computational savings gained through Successive Orthogonal Projection are explained. Implications of de Finetti's theorem in this situation are also discussed. Then a coherence penalty is defined and the Coherence Penalty Weighted Principle (CPWP) is proposed to take advantage of the data structure alongside the coherence approximation. Justification is given for the guideline that more coherent judges should be given larger weights. Simulation results with Brier Scores on both a collected database and simulated data are given for comparison. In addition to the CPWP, a recursive online variant with weight updates is presented to accommodate real-time aggregation problems.
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