显着性
情况的差异显著性(p-value) ,并显示在下面. 双相波需
显示值
(4)去除白斑(1)和(2)以及(3)的调窗处理后,最终都需要将得到的pValue(显示值),也就是利用公式(1或(2)或(3)得到的y值,进行上溢(overflow)和下溢(underflow)判断处理,否则会形成白斑(见图7、图8)。
原始重量
In statistics, the p-value is the probability of obtaining the observed sample results (or a more extreme result) when the null hypothesis is actually true. If this p-value is very small, usually less than or equal to a threshold value previously chosen called the significance level (traditionally 5% or 1% ), it suggests that the observed data is inconsistent with the assumption that the null hypothesis is true, and thus that hypothesis must be rejected and the other hypothesis accepted as true.An informal interpretation of a p-value, based on a significance level of about 10%, might be:The p-value is a key concept in the approach of Ronald Fisher, where he uses it to measure the weight of the data against a specified hypothesis, and as a guideline to ignore data that does not reach a specified significance level. Fisher's approach does not involve any alternative hypothesis, which is instead a feature of the Neyman–Pearson approach. The p-value should not be confused with the significance level α in the Neyman–Pearson approach or the Type I error rate [false positive rate]. Fundamentally, the p-value does not in itself support reasoning about the probabilities of hypotheses, nor choosing between different hypotheses – it is simply a measure of how likely the data (or a more "extreme" version of it) were to have occurred, assuming the null hypothesis is true.Statistical hypothesis tests making use of p-values are commonly used in many fields of science and social sciences, such as economics, psychology, biology, criminal justice and criminology, and sociology.Depending on which style guide is applied, the "p" is styled either italic or not, capitalized or not, and hyphenated or not (p-value, p value, P-value, P value, p-value, p value, P-value, P value).