评估对形势感知的信心

J. Palmer
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引用次数: 2

摘要

态势感知支持发现聚合并识别底层数据中的有趣模式,这些模式可用于进一步了解战场空间。虽然信息融合社区一直在努力提高支持态势感知的自动推理水平,但仍然存在未解决的问题,例如开发信任的标准度量。适用于一种分析的聚合方法可能不会以与另一种分析相同的方式参数化。可能会引入新的方法。总之,这些都证明了对可能影响方法可靠性的因素有普遍先验理解的可能性。为了适应这种可变性,本文采用非参数方法来分配置信度。它引入了一个类似于Hubert的Γ的度量,但它包含了一个先前被证明有助于评估对象细化引擎有效性的度量。结果说明了该方法的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing confidence in Situation Awareness
Situation Awareness enables the discovery of aggregations and the identification of interesting patterns in underlying data that can be leveraged to further the understanding of the battlespace. While there have been steady efforts within the information fusion community to increase the level of automated reasoning supporting Situation Awareness, there remain unresolved issues such as the development of standard metrics of trust. Aggregation methods applicable to one sort of analysis may not be parameterized in the same fashion as another. New methods may be introduced. Together, these belie the possibility of a universal a-priori understanding of the factors that may temper a method's reliability. To accommodate such variability, this paper adopts a non-parametric approach to the assignment of a confidence metric. It introduces a measure similar to Hubert's Γ but which incorporates a measure previously shown helpful in assessing the effectiveness of object refinement engines. Results illustrate its application.
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