further update on multiple regression
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@@ -1,34 +1,30 @@
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############################################################################
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#### Execute code chunks separately in VSCODE by pressing 'Alt + Enter' ####
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############################################################################
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using Statistics
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using Plots
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using RDatasets
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using GLM
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##
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#---
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trees = dataset("datasets", "trees")
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scatter(trees.Girth, trees.Volume,
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legend=false, xlabel="Girth", ylabel="Volume")
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##
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#---
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scatter(trees.Girth, trees.Volume,
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legend=false, xlabel="Girth", ylabel="Volume")
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plot!(x -> -37 + 5*x)
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##
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#---
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linmod1 = lm(@formula(Volume ~ Girth), trees)
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##
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#---
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linmod2 = lm(@formula(Volume ~ Girth + Height), trees)
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##
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#---
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r2(linmod1)
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r2(linmod2)
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@@ -37,7 +33,7 @@ linmod3 = lm(@formula(Volume ~ Girth + Height + Girth*Height), trees)
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r2(linmod3)
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##
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#---
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using CSV
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using HTTP
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@@ -47,6 +43,6 @@ SwissLabor = DataFrame(CSV.File(http_response.body))
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SwissLabor[!,"participation"] .= (SwissLabor.participation .== "yes")
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##
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#---
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model = glm(@formula(participation ~ age), SwissLabor, Binomial(), ProbitLink())
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@@ -10,7 +10,7 @@ editor:
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### Introductory Example: tree dataset from R
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```{julia}
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``` julia
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using Statistics
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using Plots
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using RDatasets
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@@ -25,7 +25,7 @@ scatter(trees.Volume, trees.Girth,
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the *explanatory variable/covariate* `girth`? Can we predict the volume
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of a tree given its girth?
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```{julia}
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``` julia
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scatter(trees.Girth, trees.Volume,
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legend=false, xlabel="Girth", ylabel="Volume")
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plot!(x -> -37 + 5*x)
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@@ -68,7 +68,7 @@ rather use Julia to solve the problem.
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\[use Julia code (existing package) to perform linear regression for
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`volume ~ girth`\]
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```{julia}
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``` julia
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lm(@formula(Volume ~ Girth), trees)
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```
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@@ -183,7 +183,7 @@ the corresponding standard errors and the $t$-statistics. Test your
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functions with the \`\`\`tree''' data set and try to reproduce the
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output above.
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```{julia}
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``` julia
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r2(linmod1)
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r2(linmod2)
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@@ -274,7 +274,7 @@ $$
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In the Gaussian case, the maximum likelihood estimator is identical to
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the least squares estimator considered above.
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```{julia}
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``` julia
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using CSV
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using HTTP
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