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Generalization of the Fuzzy Integral for discontinuous interval- and non-convex interval fuzzy set-valued inputs

机译:不连续区间和非凸区间模糊集值输入的模糊积分泛化

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The Fuzzy Integral (FI) is a powerful approach for non-linear data aggregation. It has been used in many settings to combine evidence (typically objective) with the known “worth” (typically subjective) of each data source, where the latter is encoded in a Fuzzy Measure (FM). While initially developed for the case of numeric evidence (integrand) and numeric FM, Grabisch et al. extended the FI to the cases of continuous intervals and normal, convex fuzzy sets (i.e., fuzzy numbers). However, in many real-world applications, e.g., explosive hazard detection based on multi-sensor and/or multi-feature fusion, agreement based modeling of survey data, anthropology and forensic science, or computing with respect to linguistic descriptions of spatial relations from sensor data, discontinuous interval and/or non-convex fuzzy set data may arise. The problem is no theory and algorithm currently exists for calculating the FI for such a case. Herein, we propose an extension of the FI to discontinuous interval- and convex normal Interval Fuzzy Set (IFS)-valued integrands (with a numeric FM). Our approach arises naturally from analysis of the Extension Principle. Further, we provide a computationally efficient approach to computing the proposed extension based on the union of the FIs on the combinations of continuous sub-intervals and we demonstrate the approach using examples for both the Choquet FI (CFI) and Sugeno FI (SFI).
机译:模糊积分(FI)是用于非线性数据聚合的强大方法。它已在许多设置中用于将证据(通常是客观的)与每个数据源的已知“价值”(通常是主观的)结合在一起,其中后者被编码为模糊测度(FM)。虽然最初是针对数字证据(被整数)和数字FM进行开发的,但Grabisch等人。将FI扩展到连续间隔和正常的凸模糊集(即模糊数)的情况。但是,在许多实际应用中,例如,基于多传感器和/或多特征融合的爆炸危险检测,基于协议的调查数据建模,人类学和法医科学,或根据空间关系的语言描述进行计算传感器数据,不连续间隔和/或非凸模糊集数据可能会出现。问题不在于理论,目前不存在用于计算这种情况下的FI的算法。在这里,我们建议将FI扩展为不连续的间隔和凸正态间隔模糊集(IFS)值的被整数(具有数字FM)。我们的方法自然源于对扩展原理的分析。此外,我们提供了一种计算有效的方法,基于基于连续子间隔组合的FI的并集来计算建议的扩展,并且我们使用Choquet FI(CFI)和Sugeno FI(SFI)的示例演示了该方法。

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