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R - Poisson Regression
Poisson Regression involves regression models in which the response variable is in the form of counts and not fractional numbers. For example, the count of number of births or number of wins in a football match series. Also the values of the response variables follow a Poisson distribution.
The general mathematical equation for Poisson regression is −
log(y) = a + b1x1 + b2x2 + bnxn.....
Following is the description of the parameters used −
y is the response variable.
a and b are the numeric coefficients.
x is the predictor variable.
The function used to create the Poisson regression model is the glm() function.
Syntax
The basic syntax for glm() function in Poisson regression is −
glm(formula,data,family)
Following is the description of the parameters used in above functions −
formula is the symbol presenting the relationship between the variables.
data is the data set giving the values of these variables.
family is R object to specify the details of the model. It s value is Poisson for Logistic Regression.
Example
We have the in-built data set "warpbreaks" which describes the effect of wool type (A or B) and tension (low, medium or high) on the number of warp breaks per loom. Let s consider "breaks" as the response variable which is a count of number of breaks. The wool "type" and "tension" are taken as predictor variables.
Input Data
input <- warpbreaks print(head(input))
When we execute the above code, it produces the following result −
breaks wool tension 1 26 A L 2 30 A L 3 54 A L 4 25 A L 5 70 A L 6 52 A L
Create Regression Model
output <-glm(formula = breaks ~ wool+tension, data = warpbreaks, family = poisson) print(summary(output))
When we execute the above code, it produces the following result −
Call: glm(formula = breaks ~ wool + tension, family = poisson, data = warpbreaks) Deviance Residuals: Min 1Q Median 3Q Max -3.6871 -1.6503 -0.4269 1.1902 4.2616 Coefficients: Estimate Std. Error z value Pr(>|z|) (Intercept) 3.69196 0.04541 81.302 < 2e-16 *** woolB -0.20599 0.05157 -3.994 6.49e-05 *** tensionM -0.32132 0.06027 -5.332 9.73e-08 *** tensionH -0.51849 0.06396 -8.107 5.21e-16 *** --- Signif. codes: 0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1 (Dispersion parameter for poisson family taken to be 1) Null deviance: 297.37 on 53 degrees of freedom Residual deviance: 210.39 on 50 degrees of freedom AIC: 493.06 Number of Fisher Scoring iterations: 4
In the summary we look for the p-value in the last column to be less than 0.05 to consider an impact of the predictor variable on the response variable. As seen the wooltype B having tension type M and H have impact on the count of breaks.
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