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pearson相关的统计效应与效力

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pearson相关的统计效应与效力 [2023/04/06 00:31] zhangruihaopearson相关的统计效应与效力 [2024/04/12 11:38] (当前版本) aiyuheng
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-**Pearson相关的统计效应与效力**+**Pearson相关的统计效应与效力(Statistical effects and potency of Pearson correlation)**
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   *Pearson相关统计效力的影响因素:①效应大小;②样本容量;③单尾/双尾。   *Pearson相关统计效力的影响因素:①效应大小;②样本容量;③单尾/双尾。
   *相关描述两个变量之间的关系,但并不能解释变量相关的原因,即相关计算不能得到因果性推论。原因:在相关研究中, 研究者没有操纵一个 (或几个) 变量而保持其他变量不变。   *相关描述两个变量之间的关系,但并不能解释变量相关的原因,即相关计算不能得到因果性推论。原因:在相关研究中, 研究者没有操纵一个 (或几个) 变量而保持其他变量不变。
 +* Strength of correlation explained in terms of r squared: The proportion of variance in a variable explained by the correlation between X and Y. For example, when r=0.7, a portion of the variation in Y can be derived from X, and r2=0.49, that is, 49% of the variation in Y can be derived from X.
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 +*Pearson related effect: r=.10, small effect; r=.30, medium effect; r=.50, large effect.
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 +* The influencing factors of Pearson correlation statistical efficacy: ① effect size; ② Sample size; ③ Single tail/double tail.
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 +* Correlation describes the relationship between two variables, but does not explain why the variables are correlated, that is, correlation calculations do not yield causal inferences. Reason: In related studies, researchers did not manipulate one (or several) variables while keeping the others constant.
pearson相关的统计效应与效力.1680741102.txt.gz · 最后更改: 2023/04/06 00:31 由 zhangruihao