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Data-Informed Fuzzy Measures for Fuzzy Integration of Intervals and Fuzzy Numbers

机译:区间和模糊数的模糊积分的数据通知模糊测度

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摘要

The fuzzy integral (FI) with respect to a fuzzy measure (FM) is a powerful means of aggregating information. The most popular FIs are the Choquet and Sugeno, and most research focuses on these two variants. The arena of the FM is much more populated, including numerically derived FMs such as the Sugeno -measure and decomposable measure, expert-defined FMs, and data-informed FMs. The drawback of numerically derived and expert-defined FMs is that one must know something about the relative values of the input sources. However, there are many problems where this information is unavailable, such as crowdsourcing. This paper focuses on data-informed FMs, or those FMs that are computed by an algorithm that analyzes some property of the input data itself, gleaning the importance of each input source by the data they provide. The original instantiation of a data-informed FM is the agreement FM, which assigns high confidence to combinations of sources that numerically agree with one another. This paper extends upon our previous work in data-informed FMs by proposing the measure and for interval-valued evidence. We then extend data-informed FMs to (FN)-valued inputs. We demonstrate the proposed FMs by aggregating interval and FN evidence with the Choquet and Sugeno FIs for both synthetic and real-world data.
机译:相对于模糊量度(FM)的模糊积分(FI)是汇总信息的有效手段。最受欢迎的金融机构是Choquet和Sugeno,大多数研究都集中在这两个变量上。 FM领域的人口更多,包括从数字派生的FM,例如Sugeno量度和可分解量度,专家定义的FM和数据通知的FM。从数字上得出并由专家定义的FM的缺点是,您必须了解有关输入源的相对值的某些知识。但是,存在许多无法获得此信息的问题,例如众包。本文着重于数据通知型FM,或那些通过分析输入数据本身的某些属性的算法计算出的FM,并通过它们提供的数据来收集每个输入源的重要性。数据通知的FM的原始实例是协议FM,它为数值上彼此一致的源组合赋予高置信度。本文通过提出测量方法和区间值证据来扩展我们先前在数据通知型FM中的工作。然后,我们将数据通知的FM扩展到(FN)值的输入。我们通过对Choquet和Sugeno FI汇总间隔和FN证据来证明拟议的FM,以获取合成数据和实际数据。

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