Difference between revisions of "Worksheets/Week2"
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<html><div data-datacamp-exercise data-lang="r" data-height="auto"> | |||
<code data-type="sample-code"> | |||
# T = time used for baking: (-1) corresponds to 80 minutes and (+1) corresponds to 100 minutes | |||
T = c(-1, +1, -1, +1) | |||
# F = quantity of fat used: (-1) corresponds to 20 g and (+1) corresponds to 30 grams | |||
F = c(-1, -1, +1, +1) | |||
# Response y is the crispiness | |||
y = c(37, 57, 49, 53) | |||
# Fit a linear model | |||
model_crispy = lm(y ~ T + F + T*F) | |||
summary(model_crispy) | |||
# Uncomment this line if you run the code in RStudio | |||
#library(pid) | |||
# Comment this line if you run this code in RStudio | |||
source('https://yint.org/contourPlot.R') | |||
# See how the two factors affect the response: | |||
contourPlot(model_crispy ) | |||
interaction.plot(T, F, y) | |||
interaction.plot(F, T, y) | |||
# Make a prediction with this model: | |||
xT = +2 # corresponds to 110 minutes | |||
xF = -1 # corresponds to 20 grams of fat | |||
y.hat = predict(model_crispy, data.frame(T = xT, F = xF)) | |||
paste0('Predicted value is: ', y.hat, ' crispiness.') | |||
</code> | |||
</div></html> |
Latest revision as of 13:33, 26 September 2019
# T = time used for baking: (-1) corresponds to 80 minutes and (+1) corresponds to 100 minutes
T = c(-1, +1, -1, +1)
# F = quantity of fat used: (-1) corresponds to 20 g and (+1) corresponds to 30 grams
F = c(-1, -1, +1, +1)
# Response y is the crispiness
y = c(37, 57, 49, 53)
# Fit a linear model
model_crispy = lm(y ~ T + F + T*F)
summary(model_crispy)
# Uncomment this line if you run the code in RStudio
#library(pid)
# Comment this line if you run this code in RStudio
source('https://yint.org/contourPlot.R')
# See how the two factors affect the response:
contourPlot(model_crispy )
interaction.plot(T, F, y)
interaction.plot(F, T, y)
# Make a prediction with this model:
xT = +2 # corresponds to 110 minutes
xF = -1 # corresponds to 20 grams of fat
y.hat = predict(model_crispy, data.frame(T = xT, F = xF))
paste0('Predicted value is: ', y.hat, ' crispiness.')