A new belief entropy and its application in software risk analysis

Xing-yuan Chen, Yong Deng
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引用次数: 5

Abstract

The measurement of uncertainty has been an important topic of research. In Dempster’s framework, Deng entropy serves as a reliable tool for such measurements. However, it fails to consider more comprehensive information, resulting in the loss of critical data. An improved belief entropy is proposed in this paper, which preserves all the merits of Deng entropy. When there is only a single element, it can be degraded to Shannon entropy. When dealing with multiple elements, the partitioning method employed for mass functions makes it more responsive and efficient than alternative measures of uncertainty. Some numerical examples are given to further illustrate the effectiveness and applicability of the proposed entropy measure. Additionally, a case study is conducted on software risk analysis, demonstrating the practical value and relevance of the proposed method in real-world scenarios.
一种新的信念熵及其在软件风险分析中的应用
不确定度的测量一直是一个重要的研究课题。在登普斯特的框架中,邓熵作为一种可靠的测量工具。然而,它没有考虑到更全面的信息,导致关键数据的丢失。本文提出了一种改进的信念熵,它保留了邓熵的优点。当只有一个元素时,它可以退化为香农熵。当处理多个元素时,质量函数所采用的分划方法比其他不确定度度量方法反应更快,效率更高。数值算例进一步说明了所提出的熵测度的有效性和适用性。此外,还对软件风险分析进行了案例研究,证明了该方法在实际场景中的实用价值和相关性。
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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