Generation of fuzzy evidence numbers for the evaluation of uncertainty measures

Sami Barhoumi, I. Kallel, Sonda Ammar Bouhamed, É. Bossé, B. Solaiman
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引用次数: 3

Abstract

Uncertainty is an important dimension to consider to evaluate the quality of information. In real world, information tends, usually, to be uncertain, vague and imprecise leading to different types of uncertainty, such as randomness, ambiguity and imprecision. Methods to quantify uncertainty, will help to quantify information quality. This paper presents a general measure of uncertainty framed into the fuzzy evidence theory named GM, quantifying in an aggregate way the three basic types of uncertainty: non-specificity, fuzziness and discord considered within the framework of Generalized Information Theory (GIT). Monte-Carlo simulations are used to study the behavior of GM with respect to the up-cited uncertainty types. Results show that the total uncertainty GM behave properly as we increase and decrease the various types of uncertainty.
不确定性测度评价的模糊证据数的生成
不确定性是评价信息质量需要考虑的一个重要维度。在现实世界中,信息往往是不确定、模糊和不精确的,导致不同类型的不确定性,如随机性、模糊性和不精确性。量化不确定性的方法,将有助于量化信息质量。本文提出了一种模糊证据理论框架下的不确定性测度方法,并对广义信息论框架下的不确定性的三种基本类型:非特异性、模糊性和不一致性进行了综合量化。采用蒙特卡罗模拟方法研究了GM对上引不确定性类型的行为。结果表明,随着各种不确定度的增加和减少,总不确定度GM表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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