library(readxl)
library(ggpubr)
## Loading required package: ggplot2
A4Q2 <- read_excel("Downloads/A4Q2.xlsx")
ggscatter(
A4Q2,
x = "sleep",
y = "phone",
add = "reg.line",
xlab = "sleep",
ylab = "phone"
)
The relationship is linear. The relationship is negative The
relationship is moderate or strong. There are no outliers
mean(A4Q2$sleep)
## [1] 7.559076
sd(A4Q2$sleep)
## [1] 1.208797
median(A4Q2$sleep)
## [1] 7.524099
mean(A4Q2$phone)
## [1] 3.804609
sd(A4Q2$phone)
## [1] 2.661866
median(A4Q2$phone)
## [1] 3.270839
hist(A4Q2$sleep,
main = "sleep",
breaks = 20,
col = "red",
border = "white",
cex.main = 1,
cex.axis = 1,
cex.lab = 1)
hist(A4Q2$phone,
main = "phone",
breaks = 20,
col = "black",
border = "white",
cex.main = 1,
cex.axis = 1,
cex.lab = 1)
Variable 1: sleep The first variable looks abnormally distributed. The
data is negatively skewed. The data does not have a proper bell
curve.
Variable 2: phone The second variable looks abnormally distributed. The data is positively skewed. The data does not have a proper bell curve.
shapiro.test(A4Q2$sleep)
##
## Shapiro-Wilk normality test
##
## data: A4Q2$sleep
## W = 0.91407, p-value = 8.964e-08
shapiro.test(A4Q2$phone)
##
## Shapiro-Wilk normality test
##
## data: A4Q2$phone
## W = 0.89755, p-value = 9.641e-09
Variable 1: sleep The first variable is abnormally distributed (p = .00000008964).
Variable 2: phone The second variable is abnormally distributed (p = .000000009641).
cor.test(A4Q2$sleep, A4Q2$phone, method = "spearman")
##
## Spearman's rank correlation rho
##
## data: A4Q2$sleep and A4Q2$phone
## S = 908390, p-value < 2.2e-16
## alternative hypothesis: true rho is not equal to 0
## sample estimates:
## rho
## -0.6149873
A Spearman correlation was conducted to test the relationship between hours of sleep (Mdn = 7.52) and hours of phone use (Mdn = 3.27) There was a statistically significant relationship between the two variables, ρ = -0.61 , p < .001. The relationship was negative and strong. As hours of sleep increased, hours of phone use decreased.