Answered step by step
Verified Expert Solution
Question
1 Approved Answer
Objective: Use the KNN classifier to make predictions on a test dataset. Evaluate the classifier's performance using metrics such as accuracy, precision, recall, true positives,
Objective:
Use the KNN classifier to make predictions on a test dataset.
Evaluate the classifier's performance using metrics such as accuracy, precision, recall, true positives, and true negatives.
Requirements:
Implement a function named evaluateknnclassifier
Parameters:
xtrain : Training data features as a numpy array.
ytrain : Training data labels as a numpy array.
xtest : Test data features as a numpy array.
ytest : Test data labels as a numpy array.
bestk: The optimal number of neighbors as an integer. This should be taken from the output of last function.
Return:
The function should return the evaluation metrics for the test set: accuracy, precision, recall, true positives, and true negatives.
def evaluateknnclassifierxtrain, ytrain, xtest, ytest, bestk:
Evaluates the KNN classifier on the test set with the given best value.
Parameters:
xtrain: Training data features.
ytrain: Training data labels.
Xtest: Test data features.
ytest: Test data labels.
bestk: The optimalbest number of neighbors.
Returns:
accuracy, precision, recall, truepositives, truenegatives: Evaluation metrics.
return accuracy, precision, recall, truepositives, truenegatives
# Usage example :
# accuracy, precision, recall, truepositives, truenegatives evaluateknnclassifierxtrain, rain,test,est,
# printfAccuracy: accuracy Precision: precision Recall: recall True Positives: truepositives True Negative
Step by Step Solution
There are 3 Steps involved in it
Step: 1
Get Instant Access to Expert-Tailored Solutions
See step-by-step solutions with expert insights and AI powered tools for academic success
Step: 2
Step: 3
Ace Your Homework with AI
Get the answers you need in no time with our AI-driven, step-by-step assistance
Get Started