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How to Avoid Overfitting in Decision Tree Learning | Machine Learning | Data Mining by Mahesh Huddar 

Mahesh Huddar
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27 окт 2024

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Комментарии : 15   
@__ishika__.
@__ishika__. Год назад
Best explanation ever , i will complete my machine learning subject from this channel...❤ Thanku sir
@MaheshHuddar
@MaheshHuddar Год назад
Most welcome Do like share and subscribe
@datascience1274
@datascience1274 2 года назад
Great lesson as always! I just would like to know about the theoretical part regarding the accuracy. I know that there are softwares that give us the result, but it'd be helpful to know what is the method behind that. Thanks and I hope you'll reply
@MaheshHuddar
@MaheshHuddar 2 года назад
Thank You And I will upload the video on accuracy soon
@datascience1274
@datascience1274 2 года назад
@@MaheshHuddar thank you so much. Looking forward to it
@praveenkumar-ur4ik
@praveenkumar-ur4ik 3 года назад
goood 1 sir....keep going, waiting for more such vedios
@maheshparuchuri1268
@maheshparuchuri1268 7 месяцев назад
Hi sir, I have a doubt What is most common classification?
@bsmanjunath6924
@bsmanjunath6924 3 года назад
Best explaination ❤️
@lakeshkumar1252
@lakeshkumar1252 Год назад
thank you sir
@MaheshHuddar
@MaheshHuddar Год назад
Welcome Do like share and subscribe
@juhibiswas7765
@juhibiswas7765 4 года назад
Nicely explained sir
@RameshKumar-sm8ky
@RameshKumar-sm8ky 3 года назад
discuss how to calculate accuracy?
@kartikhegde533
@kartikhegde533 2 года назад
Accuracy obtained by comparing with validation set
@tanishktripathi8773
@tanishktripathi8773 3 года назад
Sir do you provide notes?
@snehagowda1082
@snehagowda1082 3 года назад
Thank you sir
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