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K-Fold Cross Validation, Stratified K-Fold, Leave-one-out Leave-P-Out Cross Validation Mahesh Huddar 

Mahesh Huddar
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K-Fold Cross Validation, Stratified K-Fold Cross Validation, Leave-one-out Cross Validation, and Leave-P-Out Cross-Validation in Machine Learning by Mahesh Huddar
The following concepts are discussed:
______________________________
K-Fold Cross Validation in Machine Learning,
Stratified K-Fold Cross Validation in Machine Learning,
Leave-one-out Cross-Validation in Machine Learning,
Leave-P-Out Cross-Validation in Machine Learning
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23 дек 2022

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Комментарии : 49   
@lfjv
@lfjv 7 месяцев назад
Beautifully explained. Watched the video for visual explanation of Stratified K Fold. You nailed it in your explanation. Thank you.
@MaheshHuddar
@MaheshHuddar 7 месяцев назад
Welcome Do like share and subscribe
@BheezHandle
@BheezHandle 9 месяцев назад
very concise yet detailed, Thanks so much, you just explain what a 2 hours video cant explain in 9 mins. Thanks.
@MaheshHuddar
@MaheshHuddar 9 месяцев назад
Welcome Do like share and subscribe
@shiwanideshmukh148
@shiwanideshmukh148 5 месяцев назад
I watched the video for a visual demonstration of cross-validation and found it to be exceptionally well explained and easily comprehensible. You did an excellent job in your explanation. Thank you very much.
@MaheshHuddar
@MaheshHuddar 5 месяцев назад
Welcome Do like share and subscribe
@priyam86f
@priyam86f 9 месяцев назад
amazing, thanks a lot for clearing the concepts so well.
@MaheshHuddar
@MaheshHuddar 9 месяцев назад
Welcome Do like share and subscribe
@yashvardhangoyal9063
@yashvardhangoyal9063 4 месяца назад
Almost everyone studies from your videos in my college,thank you sir!
@MaheshHuddar
@MaheshHuddar 4 месяца назад
Welcome Do like share and subscribe
@MaheshHuddar
@MaheshHuddar 4 месяца назад
In which college you are studying..?
@yashvardhangoyal9063
@yashvardhangoyal9063 4 месяца назад
@@MaheshHuddar sir SRM
@miguel5zx
@miguel5zx 10 месяцев назад
awesome, you did a good job, explaining the topic
@MaheshHuddar
@MaheshHuddar 10 месяцев назад
Thank you Do like share and subscribe
@debajyotimukhopadhyay
@debajyotimukhopadhyay 4 месяца назад
Crisp. To the point. Awesome
@MaheshHuddar
@MaheshHuddar 4 месяца назад
Glad you liked it! Do like share and subscribe
@MrKhan-gb3rc
@MrKhan-gb3rc 5 месяцев назад
How to select the optimum value of K?
@FaruqAtilola
@FaruqAtilola Год назад
Thank you!
@MaheshHuddar
@MaheshHuddar Год назад
Welcome Do like share and subscribe
@mouradchaa5514
@mouradchaa5514 Год назад
Good tutorial
@MaheshHuddar
@MaheshHuddar Год назад
Thank You Do like share and subscribe
@sahilsharma2867
@sahilsharma2867 9 месяцев назад
Good explanation sir
@MaheshHuddar
@MaheshHuddar 9 месяцев назад
Thanks and welcome Do like share and subscribe
@misahhere9224
@misahhere9224 5 месяцев назад
Sir, I could not differentiate between k fold n leave one out, both seemed to be same only
@HarshPatel-iy5qe
@HarshPatel-iy5qe 4 месяца назад
lets assume you have 10 samples. In K fold let say we choose k=3 which means we will cerate 3 validation set. training and testing sample in each 3 set will be different. In leave one out is like sliding window technique. as we assume we have total 10 samples so in leave one out , we will create 10 validation set. like 1st have 9 train data 1 test data 2nd have 8 train data 2 test data ....so on
@HarshPatel-iy5qe
@HarshPatel-iy5qe 4 месяца назад
lets assume you have 10 samples. In K fold let say we choose k=3 which means we will cerate 3 validation set. training and testing sample in each 3 set will be different. In leave one out is like sliding window technique. as we assume we have total 10 samples so in leave one out , we will create 10 validation set. like 1st have 9 train data 1 test data 2nd have 8 train data 2 test data ....so on
@misahhere9224
@misahhere9224 4 месяца назад
thankyou @@HarshPatel-iy5qe
@Vinit_Gambhir
@Vinit_Gambhir 4 месяца назад
Thank you Sir ❤
@MaheshHuddar
@MaheshHuddar 4 месяца назад
Most welcome Do like share and subscribe
@maths_impact
@maths_impact Год назад
Wonderful sir
@MaheshHuddar
@MaheshHuddar Год назад
Thank You Do like share and Subscribe
@maths_impact
@maths_impact Год назад
@@MaheshHuddar already subscribed
@maths_impact
@maths_impact Год назад
@@MaheshHuddar sir is stratified k-fold applied in genetic algorithm
@SazzadHissain
@SazzadHissain 9 месяцев назад
What did you mean by the term “example”? Data point/row ?
@MaheshHuddar
@MaheshHuddar 9 месяцев назад
Data point
@shahulrahman2516
@shahulrahman2516 2 месяца назад
Great video
@MaheshHuddar
@MaheshHuddar 2 месяца назад
Thank You Do like share and subscribe
@057hemantkumar6
@057hemantkumar6 Год назад
Mrng me exam hai jaldi se padh leta hu ..... Best explanation
@MaheshHuddar
@MaheshHuddar Год назад
Thank You Do like share and subscribe
@MaheshHuddar
@MaheshHuddar Год назад
In which university you are studying..?
@057hemantkumar6
@057hemantkumar6 Год назад
@@MaheshHuddar RGPV
@BheezHandle
@BheezHandle 9 месяцев назад
hahaha, deadliner, hope you made the best out of the examination already.....
@shaikhuzma786
@shaikhuzma786 8 месяцев назад
Tqsm sir i want notes can u pls send me😊
@MaheshHuddar
@MaheshHuddar 8 месяцев назад
Thank You
@tecnom7133
@tecnom7133 2 месяца назад
Thanks
@MaheshHuddar
@MaheshHuddar 2 месяца назад
Welcome Do like share and subscribe
@messiisthebest
@messiisthebest 9 месяцев назад
do we train same model in all fold?
@MaheshHuddar
@MaheshHuddar 9 месяцев назад
Yes
@mr.gouravkale
@mr.gouravkale 22 дня назад
Where is python code sir?
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