将算术递归平均作为递归加权平均的一个实例

Christian Wagner, T. Havens, Derek T. Anderson
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引用次数: 7

摘要

多信息源的聚合有着悠久的历史,从传感器融合到单个算法输出和人类知识的聚合。实现这种聚合的一种流行方法是模糊积分(FI),它是根据模糊测度(FM)(即正常的单调容量)定义的。在实践中,离散FI通过加权聚合(后排序)聚合由离散数量的源提供的信息,其中权重由FM捕获,FM对总体源集的子集进行典型的主观“价值”建模。虽然FI和FM的结合非常成功,但在聚合操作符的行为方面仍然存在挑战——例如,聚合操作符不能为对称镜像的输入产生对称镜像的输出——以及对独立FM的直观解释与其作为FI信息融合的一部分使用时的实际作用和影响之间的明显差异。本文阐明了这些挑战,并介绍了一种新的递归平均(RAV)算子族,作为相对于FM的FI聚合的替代方案;特别关注算术递归平均。RAV旨在解决上述挑战,同时还促进对不同源组合的聚合结果进行细粒度分析。我们提供了RAV的数学基础,并包括数值和区间值数据的初始实验和与FI的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The arithmetic recursive average as an instance of the recursive weighted power mean
The aggregation of multiple information sources has a long history and ranges from sensor fusion to the aggregation of individual algorithm outputs and human knowledge. A popular approach to achieve such aggregation is the fuzzy integral (FI) which is defined with respect to a fuzzy measure (FM) (i.e. a normal, monotone capacity). In practice, the discrete FI aggregates information contributed by a discrete number of sources through a weighted aggregation (post-sorting), where the weights are captured by a FM that models the typically subjective ‘worth’ of subsets of the overall set of sources. While the combination of FI and FM has been very successful, challenges remain both in regards to the behavior of the resulting aggregation operators — which for example do not produce symmetrically mirrored outputs for symmetrically mirrored inputs — and also in a manifest difference between the intuitive interpretation of a stand-alone FM and its actual role and impact when used as part of information fusion with a FI. This paper elucidates these challenges and introduces a novel family of recursive average (RAV) operators as an alternative to the FI in aggregation with respect to a FM; focusing specifically on the arithmetic recursive average. The RAV is designed to address the above challenges, while also facilitating fine-grained analysis of the resulting aggregation of different combinations of sources. We provide the mathematical foundations of the RAV and include initial experiments and comparisons to the FI for both numeric and interval-valued data.
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