The most clear explanation I have found over the internet! Covering a higher difficulty level example and still giving an easy explanation, Please keep making more videos of Machine Learning! Thanks
This is the best resource on the internet for k-modes. Thank you so much brother
Very intuitive. Thank You. Highly recommended!
After many videos...This is one of the best on K-Modes...Thanks a lot
You totally rock, I actully get this now. Thanks for the clear, jargon free explanation!
For C3 in the 1st iteration the distance from point 6 should be 3 not 4
Thanks a lot for this wonderful intuition!!! I was feeling confused with K-mode, but after watching this video I understand it better.
Finally i understand k-modes.Thank you
Finally found something easy to understand. Thank You!!!
Finally I understood what they meant for "dissimilarities"!!! Thank you, great explanation.
Best. Thanks for your time putting this together 👍🏻
best explanation about k-modes, big respect for you.
keep up the good work !
sorry if my english is bad
thank you very much, this helped a lot as most of the articles use fancy terms and equations but turns out to be a very simple algorithm.
Best explaination so far
best video for K-modes
Dear,
When you creating clusters at step 1 and then creating new centroid the value of cluster 1 to 3 are same at row 8. then what is the logic that you assign it to cluster 1 while the value are same on cluster 1,2 and 3.
Thanks for such a good tutorial.
very clear and succinct example, great job
Thank you very much!
Do you have any tips on what algorithms are best for clustering of high dimensional binary spars matrix?
Thank you so much for this video!
Superb explanation Aysan! Thank you!
thanks for turning what seems difficult into easy
The only relevant video on K-Mode on YouYube.
Great work❤❤
really, really good stuff. Thank you
Thanks! very concise and simple explanation.
This is the video I got my concepts cleared about k-modes. However, I would have appreciated If you had added mathematical notation too along the steps. But still, It is a good videos. Cheers!
excellent explanation. Thanks :)
if cluster 1,cluster 2, cluster 3 have same distance, which one we choose? and why?
If you are talking about an object having the same distance with all the clusters, then I think you can just assign the object to a cluster at random. At least that is what I have heard other people doing.
Thanks for this explanation :)
This is a great video. Thank you so much.
Could you please provide your input on how we can label those clusters?
for example, if user1, user2, user3 have watched all movies movie1, movie2, movie3. So this set {movie1,movie2,movie3} can be made like a template because lot of users are watching the same movies. Can we label these groups? If yes, how could we do it?
Also, is there a python implementation of your video?
Please ignore if already mentioned but the elbow method can be used to determine K clusters
Nice Work Sir
Very nice. thanks.
You sound like ALI G. BIG UP RESPECT
Where do I get more information about k-modes?
just perfect!
Hi, very clear explanation, thanks.
I have one question, in the case of equal "distance" how do you pick the cluster?
thank you so much !
Very clear thanks!!
Thanks mate!
Thank you.
Thanks!
Thank you
Congrats!
What if my data has a mix of categorical and numerical variables? How would the clustering work then?
thxs bro
I finally understand k-modes! Thank you!
Joseph Wehbe I'm glad it helped!