r:multiple_regression
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r:multiple_regression [2019/11/08 10:59] – [Prediction] hkimscil | r:multiple_regression [2020/08/31 12:33] – [e.g. 5] hkimscil | ||
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Signif. codes: | Signif. codes: | ||
> </ | > </ | ||
+ | ====== e.g. 5 ====== | ||
+ | < | ||
+ | #packages we will need to conduct to create and graph our data | ||
+ | library(MASS) #create data | ||
+ | library(car) #graph data | ||
+ | py1 =.6 #Cor between X1 (Practice Time) and Memory Errors | ||
+ | py2 =.4 #Cor between X2 (Performance Anxiety) and Memory Errors | ||
+ | p12= .3 #Cor between X1 (Practice Time) and X2 (Performance Anxiety) | ||
+ | Means.X1X2Y< | ||
+ | CovMatrix.X1X2Y <- matrix(c(1, | ||
+ | p12,1,py2, | ||
+ | py1, | ||
+ | #build the correlated variables. Note: empirical=TRUE means make the correlation EXACTLY r. | ||
+ | # if we say empirical=FALSE, | ||
+ | set.seed(42) | ||
+ | CorrDataT< | ||
+ | #Convert them to a " | ||
+ | CorrDataT< | ||
+ | colnames(CorrDataT) <- c(" | ||
+ | #make the scatter plots | ||
+ | scatterplot(Memory~Practice, | ||
+ | scatterplot(Memory~Anxiety, | ||
+ | scatterplot(Anxiety~Practice, | ||
+ | # Pearson Correlations | ||
+ | ry1< | ||
+ | ry2< | ||
+ | r12< | ||
+ | </ | ||
+ | |||
r/multiple_regression.txt · Last modified: 2023/10/19 08:23 by hkimscil