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Using R to explore the UCI mushroom dataset reveals excellent KNN prediction results.
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# Load our data set. | |
mushroom = read.table("mushrooms.data", header = TRUE, sep = ","); | |
mushroom$class = as.character(mushroom$class); | |
mushroom$class[mushroom$class == "e"] = "edible"; | |
mushroom$class[mushroom$class == "p"] = "poisonous"; | |
mushroom$class = as.factor(mushroom$class); | |
# Remove incomplete data. | |
mushroom$veiltype = NULL; | |
mushroom$stalkroot = NULL; | |
# Load libraries. | |
library(ggplot2); | |
library(caret); | |
library(gridExtra); | |
set.seed(100); | |
# Inspect our data set. | |
names(mushroom); | |
head(mushroom); | |
# Explore the data. | |
qp1 = qplot(capcolor, habitat, color = class, data = mushroom, geom = "jitter", main = "Mushroom data set - Cap color vs Habitat"); | |
qp2 = qplot(capcolor, habitat, color = class, data = mushroom, geom = "jitter", facets = bruises ~ ., main = "Mushroom data set by Bruises - Cap color vs Habitat"); | |
qp3 = qplot(odor, sporeprintcolor, color = class, data = mushroom, geom = "jitter", main = "Mushroom data set - Odor vs Spore Print Color"); | |
qp4 = qplot(stalksurfacebelowring, stalkcolorabovering, color = class, data = mushroom, geom = "jitter", main = "Mushroom data set - Stalk Surface below Ring vs Stalk Color above Ring"); | |
grid.arrange(qp1, qp2, qp3, qp4, ncol = 2, nrow = 2); | |
# Explore the overlap where there is no odor and a spore print color of white. | |
mushroom$class = as.character(mushroom$class) | |
mushroom$class[mushroom$odor == "n" & mushroom$sporeprintcolor == "w" & mushroom$class == "poisonous"] = "poisonous2" | |
mushroom$class[mushroom$odor == "n" & mushroom$sporeprintcolor == "w" & mushroom$class == "edible"] = "edible2" | |
mushroom$class = as.factor(mushroom$class) | |
qp5 = qplot(capcolor, habitat, color = class, data = mushroom, geom = "jitter", main = "Mushroom data set - Cap color vs Habitat"); | |
qp6 = qplot(capcolor, habitat, color = class, data = mushroom, geom = "jitter", facets = bruises ~ ., main = "Mushroom data set by Bruises - Cap color vs Habitat"); | |
qp7 = qplot(odor, sporeprintcolor, color = class, data = mushroom, geom = "jitter", main = "Mushroom data set - Odor vs Spore Print Color"); | |
qp8 = qplot(stalksurfacebelowring, stalkcolorabovering, color = class, data = mushroom, geom = "jitter", main = "Mushroom data set - Stalk Surface below Ring vs Stalk Color above Ring"); | |
grid.arrange(qp5, qp6, qp7, qp8, ncol = 2, nrow = 2); | |
# Restore. | |
mushroom$class = as.character(mushroom$class); | |
mushroom$class[mushroom$class == "edible2"] = "edible"; | |
mushroom$class[mushroom$class == "poisonous2"] = "poisonous"; | |
mushroom$class = as.factor(mushroom$class); | |
# Split our data into a training (70%) and test (30%) set. | |
training_split = createDataPartition(y = mushroom$class, p = 0.70, list = FALSE); | |
training_set = mushroom[training_split,]; | |
testing_set = mushroom[-training_split,]; | |
model_fit = train(class ~ ., method = "knn", data = training_set, trControl = trainControl(method = 'cv', number = 10, classProbs = TRUE)); | |
print(model_fit); | |
plot(model_fit); | |
# Classify from our reserved test set. | |
testing_set_predict = predict(model_fit, newdata = testing_set[, -1]); # Remove the Class field to prove we are not cheating. | |
# Verifying our model from the classifications. | |
table(testing_set_predict, testing_set$class); | |
testing_set$Correct = testing_set_predict == testing_set$class; | |
accuracy = length(testing_set$Correct[testing_set$Correct == TRUE]) / length(testing_set$Correct); | |
paste("Training accuracy:", accuracy); | |
important_features = varImp(model_fit, scale = FALSE); | |
print(important_features); | |
plot(important_features); |
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The visualization is very interesting. Can we do the same with python?
Also what did you learn from the data exploration? How did it help in classification?