Aslam Muhammad
Department of Statistics, Faculty of Science, King Abdulaziz University, Jeddah, 21551, Saudi Arabia.
BMC Med Res Methodol. 2022 Apr 6;22(1):99. doi: 10.1186/s12874-022-01593-x.
The existing Z-test for uncertainty events does not give information about the measure of indeterminacy/uncertainty associated with the test.
This paper introduces the Z-test for uncertainty events under neutrosophic statistics. The test statistic of the existing test is modified under the philosophy of the Neutrosophy. The testing process is introduced and applied to the Covid-19 data.
Based on the information, the proposed test is interpreted as the probability that there is no reduction in uncertainty of Covid-19 is accepted with a probability of 0.95, committing a type-I error is 0.05 with the measure of an indeterminacy 0.10. Based on the analysis, it is concluded that the proposed test is informative than the existing test. The proposed test is also better than the Z-test for uncertainty under fuzzy-logic as the test using fuzz-logic gives the value of the statistic from 2.20 to 2.42 without any information about the measure of indeterminacy. The test under interval statistic only considers the values within the interval rather than the crisp value.
From the Covid-19 data analysis, it is found that the proposed Z-test for uncertainty events under the neutrosophic statistics is efficient than the existing tests under classical statistics, fuzzy approach, and interval statistics in terms of information, flexibility, power of the test, and adequacy.
现有的不确定性事件Z检验并未给出与该检验相关的不确定性/不确定度的度量信息。
本文介绍了中立统计下的不确定性事件Z检验。现有检验的检验统计量在中立哲学下进行了修正。介绍了检验过程并将其应用于新冠疫情数据。
基于这些信息,所提出的检验被解释为新冠疫情不确定性没有降低的概率,在0.10的不确定度度量下,接受该概率为0.95,犯第一类错误的概率为0.05。基于分析得出结论,所提出的检验比现有检验更具信息量。所提出的检验也优于模糊逻辑下的不确定性Z检验,因为使用模糊逻辑的检验给出的统计量值在2.20至2.42之间,且没有关于不确定度度量的任何信息。区间统计下的检验仅考虑区间内的值而非精确值。
通过对新冠疫情数据分析发现,中立统计下所提出的不确定性事件Z检验在信息、灵活性、检验功效和充分性方面比经典统计、模糊方法和区间统计下的现有检验更有效。