Analyze the data set Social_Network_Ads.csv and create the plot with correct titles on axes:
Q1b Use the following classifiers
Naïve Bayes
Logistic Regression
Decision Trees
KNN
Support Vector Machine
Random Forest
For each classifier show
The classifier boundary for training and test
Printout your 1st name on all graphs
Q1c Compare the confusion matrix in the following table for the above data set
TP
TN
FP
FN
Accuracy
Naïve Bayes
Logistic Regression
Decision Trees
KNN
Support Vector Machine
Random Forest
Q2 – Principal Component Analysis
Summarize how the PCA algorithm works using the following link and recreate the code for the IRIS data set.
Q3 Review the material on PCA in the following and visually describe how PCA works (use snapshots)
http://setosa.io/ev/principal-component-analysis/
Q4 LDA Explain how LDA differs from PCA
Q5 Compare accuracy of LDA vs PCA techniques using the dimensionality reduction on Wine data. The dataset is attached.
Q5 Dimensionality Reduction – on Wine data.zip
Q1 Classifier Comparison on Social Ads Network.zip
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