软数据融合中的主观置信度与源可靠性

Donald J. Bucci, Sayandeep Acharya, Timothy J. Pleskac, M. Kam
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引用次数: 4

摘要

目前人们对构建能够使用人类(即软)决策和信心评估作为输入的数据融合系统一直很感兴趣。大多数相关的研究涉及人体实验,这往往是昂贵的,受到严格的制度规定,难以验证和复制。在这里,我们利用Pleskac和Busemeyer(2010)开发的人类决策和人类信心评估的数学模型来比较四种类型的融合算子:(1)使用人类主体决策的算子(如k- of- n多数原则);(2)使用主体决策和错误率(Chair和Varshney融合规则)的算子;(3)使用主体决策和置信度评估(Yager规则和比例冲突再分配规则#5)的经营者;(4)使用受试者决策、置信度评估和每个受试者置信度评估的平均强度,即平均Brier分数(Dempster组合规则和Bayes概率组合规则)的算子。每个融合系统区分备选方案的能力是通过计算接收器工作特征曲线(AUC)下的归一化面积来确定的。当融合算法使用的源数超过5个时,仅使用决策和置信度评估(即类型(3))的融合算子产生最低(即最差)的归一化AUC值。利用主体可靠性(即类型(2)和(4))的算子产生了更大(即更好)的归一化AUC值,此外,这些值与仅依赖决策(即类型(1))的融合算法相似。对于Pleskac和Busmeyer研究的城市规模歧视任务,这些结果表明,随着来源数量的增加,决策自我评估的重要性降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Subjective confidence and source reliability in soft data fusion
There is ongoing interest in constructing data fusion systems which are capable of using human (i.e., soft) decisions and confidence assessments as inputs. Most relevant studies involved experimentation with humans which is often expensive, subject to strict institutional regulations, and hard to validate and replicate. Here we make use of a mathematical model of human decision-making and human confidence assessment developed by Pleskac and Busemeyer (2010) in order to compare four types of fusion operators: (1) operators that use human-subject decisions (such as the k-out-of-N majority rule); (2) operators that use subject decisions and error rates (the Chair and Varshney fusion rule); (3) operators that use subject decisions and confidence assessments (Yager's rule and the Proportional Conflict Redistribution rule #5); and (4) operators that use subject decisions, confidence assessments, and the average strength of each subject's confidence assessment, namely the average Brier scores (Dempster's rule of combination and Bayes' rule of probability combination). The ability of each fusion system to discriminate between alternatives was determined by computing the normalized area under the receiver operating characteristic curves (AUC). When the number of sources used by the fusion algorithm exceeded five, fusion operators which made use of decisions and confidence assessments alone (i.e., type (3)) produced the lowest (namely, worst) normalized AUC values. Operators which made use of subject reliabilities (i.e., types (2) and (4)) produced larger (namely, better) normalized AUC values which, in addition, were similar to those of fusion algorithms that relied on decisions alone (i.e., type (1)). For the city size discrimination task studied by Pleskac and Busmeyer, these results suggest that as the number of sources increases, the importance of decision self-assessment diminishes.
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