Extending the logistic response model
Remember, the brewery installed point-of-sales displays to increase Hoppiness purchases. To stand out as a brand, the brewery additionally featured Hoppiness by highlighting it's regional character. These featuring activities had also been combined with point-of-sales displays.
You start with summarizing the DISPL.HOP
, FEAT.HOP
and FEATDISPL.HOP
actions by using the function summary()
.
Next, you explain the purchase probabilities for HOPPINESS
by price.ratio
, DISPL.HOP
, FEAT.HOP
and FEATDISPL.HOP
. Again, you use the function glm()
and the family
argument binomial
.
Finally, you calculate the marginals effects of the predictors by using the function margins()
.
Este exercício faz parte do curso
Building Response Models in R
Exercício interativo prático
Experimente este exercício completando este código de exemplo.
# Summarizing the DISPL.HOP, FEAT.HOP, FEATDISPL.HOP actions
___(choice.data[c(___,___,___)])