Your video is helpful but I have a question, Suppose that we are using k-NN with just two training points, which have different (binary) labels. Assuming we are using k = 1 and Euclidean distance, what is the decision boundary? Include a drawing with a brief explanation, please how to draw this? The answer is the first video talking about A and B decision right
This is one of the clearest explanation i have ever heard, thank you so much for giving the opportunity to the people to go into de ml world.
Nice, I am happy to hear that this explanation turned out to be useful!
Great complement to your book thank you for posting your videos on yt
Nice, glad to hear that those complement each other (vs being redundant)
Your video is helpful but I have a question, Suppose that we are using k-NN with just two training points, which have different
(binary) labels. Assuming we are using k = 1 and Euclidean distance, what is
the decision boundary? Include a drawing with a brief explanation, please how to draw this? The answer is the first video talking about A and B decision right
Thank you so much, that was amazing.
Thanks for the kind words!
Thank you for this video.
It was very helpful.
Liked and Subscribed :)
Thanks, Ashwinkumar 🙌