Created
August 8, 2015 02:11
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Predictive classification example with R. Machine Learning examples.
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library(AppliedPredictiveModeling) | |
library(caret) | |
data(AlzheimerDisease) | |
adData = data.frame(diagnosis,predictors) | |
trainIndex = createDataPartition(diagnosis, p = 0.60,list=FALSE) | |
training = adData[trainIndex,] | |
testing = adData[-trainIndex,] | |
# Logistic Regression: 81/84. | |
fit <- train(diagnosis ~ ., data = training, method = 'LogitBoost', tuneGrid = data.frame(nIter=50:100)) | |
plot(x=fit$results$nIter, y=fit$results$Accuracy, type='l') | |
lfit <- lm(fit$results$Accuracy ~ fit$results$nIter) | |
abline(lfit) | |
results <- predict(fit, newdata = testing) | |
confusionMatrix(results, testing$diagnosis) | |
# SVM: 82/81. | |
fit <- train(diagnosis ~ ., data = training, method = 'svmRadial') | |
results <- predict(fit, newdata = testing) | |
confusionMatrix(results, testing$diagnosis) | |
# DNN: 73/73. | |
fit <- train(diagnosis ~ ., data = training, method = 'dnn') | |
results <- predict(fit, newdata = testing) | |
confusionMatrix(results, testing$diagnosis) | |
# Random Forest: 79/87. | |
fit <- train(diagnosis ~ ., data = training, method = 'rf') | |
results <- predict(fit, newdata = testing) | |
confusionMatrix(results, testing$diagnosis) | |
# Regularized Random Forest: 79/84. | |
fit <- train(diagnosis ~ ., data = training, method = 'RRF') | |
# Logistic Regression with PCA: 79/63. | |
training$Genotype <- seq_along(levels(training$Genotype))[training$Genotype] # Convert Genotype factor to an integer. | |
fit <- train(diagnosis ~ ., data = training, method = 'LogitBoost', tuneGrid = data.frame(nIter=50), preProcess = "pca") |
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