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Decision Tree Algorithm | Decision Tree in Python | Machine Learning Algorithms | Edureka

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  • Опубліковано 13 чер 2018
  • 🔥 Machine Learning with Python (Use Code "𝐘𝐎𝐔𝐓𝐔𝐁𝐄𝟐𝟎") : www.edureka.co/machine-learni...
    This Edureka video on Decision Tree Algorithm in Python will take you through the fundamentals of decision tree machine learning algorithm concepts and its demo in Python. Below are the topics covered in this tutorial:
    1. What is Classification?
    2. Types of Classification
    3. Classification Use Case
    4. What is Decision Tree?
    5. Decision Tree Terminology
    6. Visualizing a Decision Tree
    7 Writing a Decision Tree Classifier fro Scratch in Python using CART Algorithm
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    #decisiontree #decisiontreepython #machinelearningalgorithms
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КОМЕНТАРІ • 306

  • @edurekaIN
    @edurekaIN  6 років тому +8

    Got a question on the topic? Please share it in the comment section below and our experts will answer it for you. For Edureka Python Machine Learning Course curriculum, Visit our Website: bit.ly/2OpzQWw

  • @vigneshviki4955
    @vigneshviki4955 6 років тому +138

    code explanation should be slow as it is a key area just moving ver fast

  • @syammangineni5857
    @syammangineni5857 5 років тому +9

    Excellent teaching, great explanation.
    Thank you sir.

  • @imresuveges8798
    @imresuveges8798 5 років тому +2

    Great explanation! Thanks a lot!

  • @sumahullur5138
    @sumahullur5138 2 роки тому

    great video! You made it simple and clear, thank you so much

  • @monuvishwakarma8133
    @monuvishwakarma8133 5 років тому +16

    How did you decided the position of windy and humidity?

  • @talharasheed5322
    @talharasheed5322 4 роки тому

    Very helpful, really obliged of edureka 🙏

  • @mustafabohra2070
    @mustafabohra2070 5 років тому +6

    Best tutorial on UA-cam!

  • @asmaalaila9337
    @asmaalaila9337 5 років тому +3

    Thx .it's great

  • @zuoweizhu1797
    @zuoweizhu1797 5 років тому +1

    Nice tutorial, Decision Tree well explained

  • @skywalker66ful
    @skywalker66ful 5 років тому +1

    Very Nicely Explained .. Thanks ..

  • @rimpinag6346
    @rimpinag6346 4 роки тому

    Really great explanation ... awsome video ... i understand very clearly and like it🥰

  • @AshishPatel-kn3kc
    @AshishPatel-kn3kc 4 роки тому

    its really awesome explanation. As usual.

  • @jaber4474
    @jaber4474 5 років тому +2

    very informative video I really need to learn more about Machine Learning in Python I wish that you post more videos in that useful and interesting topic. Like d this video , Thank you

    • @edurekaIN
      @edurekaIN  5 років тому

      Hey Jaber! Thank you for appreciating our efforts. You can check out our Complete Machine learning tutorial here: ua-cam.com/video/b2q5OFtxm6A/v-deo.html Hope this is helpful. Cheers!

  • @PritishMishra
    @PritishMishra 4 роки тому +2

    Good teaching and animation......

  • @UttamKumar-sc1gw
    @UttamKumar-sc1gw 4 роки тому

    Great Video . Thanks much.

  • @YemiAdelaiye
    @YemiAdelaiye Рік тому +2

    I HAVE A QUESTION: Why was the temperature feature totally ignored in the dataset while building the decision tree? While Outlook, Humidity and Windy were all chosen.

  • @YemiAdelaiye
    @YemiAdelaiye Рік тому

    Thank you! I have been looking for a video all week that would break "decision tree" down for me. This is it!

    • @edurekaIN
      @edurekaIN  Рік тому

      We are very glad to hear that your a learning well with our contents :) continue to learn with us and don't forget to subscribe our channel so that you don't miss any updates !

  • @santoshbirje2705
    @santoshbirje2705 5 років тому +1

    very clear. Thank you so much :)

    • @edurekaIN
      @edurekaIN  5 років тому

      Hey Santosh, we are glad you loved the video. Do subscribe to the channel and hit the bell icon to never miss an update from us in the future. Cheers!

  • @suhasnayak4704
    @suhasnayak4704 6 років тому

    What are computational complexity for Decision Tree? Can you please give analysis for tree training phase and prediction phase please.

  • @shareInfo2023
    @shareInfo2023 5 років тому +1

    very nice explanation sir .........Great Thanks to You...

    • @edurekaIN
      @edurekaIN  5 років тому

      Hey Ram, glad you loved the video. Do subscribe and hit the bell icon to never miss an update from us in the future. Cheers!

  • @vishwanathravula9239
    @vishwanathravula9239 5 років тому +3

    Hi, Could you guys give me some guidance to implement the decision tree algorithm in torch7 using Lua.

    • @edurekaIN
      @edurekaIN  5 років тому +1

      Hey Vishwanath, "indico.cern.ch/event/472305/contributions/1982360/attachments/1224979/1792797/ESIPAP_MVA160208-BDT.pdf
      This might be useful to you. Cheers!"

  • @WasimAkram-vq5if
    @WasimAkram-vq5if 4 роки тому

    Great session

  • @sarangabbasi2560
    @sarangabbasi2560 2 роки тому +2

    WOW great work

  • @aritrasaha1091
    @aritrasaha1091 2 роки тому +1

    Excellent session . Is it possible to provide the python codes ?

  • @anthonyfernandez894
    @anthonyfernandez894 4 роки тому +6

    Absolutely stunning, very well explained, clear ideas, awesome stuff & remarkable cases...substantial learning at high level. Thanks & regards from Costa Rica.

  • @mahimsd7645
    @mahimsd7645 5 років тому

    Nice one ....good

  • @nahidchahin5716
    @nahidchahin5716 5 років тому

    Nice video. I was really helpful. Please can you send me the source code??

  • @Raj64395
    @Raj64395 5 років тому

    Excellent explanation

  • @atharvav
    @atharvav 5 років тому +6

    Right, Alright!

  • @omkarparab8780
    @omkarparab8780 2 роки тому

    Well explained !! got a high level overview , for intuitive understanding of few terms referred google . All in all thankyou for this vid just one correction at 30:15 one entropy should of rainy but both are written as sunny.

    • @edurekaIN
      @edurekaIN  2 роки тому

      Hey:) Thank you so much for your sweet words :) Really means a lot ! Glad to know that our content/courses is making you learn better :) Our team is striving hard to give the best content. Keep learning with us -Team Edureka :) Don't forget to like the video and share it with maximum people:) Do subscribe the channel:)

  • @vipulsharma8865
    @vipulsharma8865 5 років тому

    All Right!

  • @manivarmaindukuri7801
    @manivarmaindukuri7801 5 років тому +4

    Sir , I was assigned a project on fraud detection . Which algorithms should I learn to train many transactions and detect if a transaction is legitimate or fraud ?
    I wanted to implement in Python .
    Please guide me in this project .

    • @edurekaIN
      @edurekaIN  5 років тому +7

      Hey Manivarma, Classification and clustering algorithms are good for fraud detection and anomoly detection. So algorithms like, SVM, KNN, K-Means, Decison trees, Random forest are relevant.
      Hope this helps!

  • @rishird5635
    @rishird5635 6 років тому +2

    The code is not there in the description .. can you get me that?
    The video lecture was awesome..
    I tried doing alongside..but have some errors. If given the sample code may be I can check it out.
    Cheers

    • @edurekaIN
      @edurekaIN  6 років тому

      Hey Rishi, thank you for watching our video. We are glad that you liked our content. Sure, mention your email address and we will share it with you. Cheers :)

  • @vithikapungliya6043
    @vithikapungliya6043 2 роки тому +1

    Best video!

  • @saraaitakil4801
    @saraaitakil4801 5 років тому

    thank you

  • @silasvick
    @silasvick 4 роки тому +12

    Am building a model to predict a likelihood that someone may commit suicide..
    Can i use this algorithm?

    • @edurekaIN
      @edurekaIN  4 роки тому +9

      Hi there, this probably depends on the kind of data you have collected. If you have good labelled datasets which can help you understand the persons mental state then this algorithm would definitely work. But if it is something where your dataset is broken and not complete and you cannot predict any reason which causes the suicide, then unsupervised algorithms will work. Hope that is helpful.

  • @gamingengine5987
    @gamingengine5987 2 роки тому +1

    Great Explanation!! Thank You

    • @edurekaIN
      @edurekaIN  2 роки тому

      Good To know our vedios are helping you learn better :) Stay connected with us and keep learning ! Do subscribe the channel for more updates : )

  • @anonymous56597
    @anonymous56597 2 роки тому

    Satisfactory explanation among all resources.... 10 out of 10

    • @edurekaIN
      @edurekaIN  2 роки тому

      Great to see that our videos and contents are making you perform better and understand better :) We are glad that you've enjoyed your learning experience with us .Thank you for being a part of Edureka's team:) Do subscribe the channel for more updates : ) Hit the bell icon to never miss an update from our channel : )

  • @gidinated
    @gidinated Рік тому +1

    thank you for the clear explanation!

    • @edurekaIN
      @edurekaIN  Рік тому

      You are welcome :) Glad it was helpful!

  • @hafzatinnurlatifa2589
    @hafzatinnurlatifa2589 3 роки тому +1

    thank you, it's really helpful

    • @edurekaIN
      @edurekaIN  3 роки тому

      Hi : ) We really are glad to hear this ! Truly feels good that our team is delivering and making your learning easier :) Keep learning with us .Stay connected with our channel and team :) . Do subscribe the channel for more updates : ) Hit the bell icon to never miss an update from our channel : )

  • @sundayagu2078
    @sundayagu2078 4 роки тому

    Excellent analysis. Thank you and remain blessed.

  • @STTPwithRajani
    @STTPwithRajani Рік тому +1

    Crystal clear 🙂 thanks 🙏

    • @edurekaIN
      @edurekaIN  Рік тому +1

      You are welcome 😊 Glad it was helpful!!

  • @priyanshvatsal9791
    @priyanshvatsal9791 2 роки тому

    Awesome explanation

  • @pratheekhebbar2677
    @pratheekhebbar2677 2 роки тому

    what an explanation.simply superb sir .so simple and easily you explained

    • @edurekaIN
      @edurekaIN  2 роки тому

      Hi : ) We really are glad to hear this ! Truly feels good that our team is delivering and making your learning easier :) Keep learning with us .Stay connected with our channel and team :) . Do subscribe the channel for more updates : ) Hit the bell icon to never miss an update from our channel : )

  • @jainharshal3088
    @jainharshal3088 Рік тому

    very well explained the math behind the decision tree. thank you

    • @edurekaIN
      @edurekaIN  Рік тому

      We are very glad to hear that your a learning well with our contents 😊 continue to learn with us and don't forget to subscribe our channel so that you don't miss any updates !

  • @sarojbodepudi4941
    @sarojbodepudi4941 4 роки тому +2

    This lecture was exactly hitting on the nail, this helped in clarifying my doubts. Is it possible to share the link for this python code, that could be very helpful! Thanks

    • @edurekaIN
      @edurekaIN  4 роки тому

      Please share your email id with us (it will not be published). We will forward the code to your email address.

  • @terryliu3635
    @terryliu3635 5 років тому

    A great refresh of decision tree. Thanks!

    • @edurekaIN
      @edurekaIN  5 років тому

      Hey Terry, we are glad you loved the video. Do subscribe to the channel and hit the bell icon to never miss an update from us in the future. Cheers!

  • @abhishekjani8695
    @abhishekjani8695 2 роки тому +1

    CART Algorithm uses Gini Index but you have implemented the dataset using entropy and Information gain so it will not be ID3 Algorithm?

  • @raviartgallery6466
    @raviartgallery6466 4 роки тому

    Good explanation

  • @MrGeorgerocker
    @MrGeorgerocker 5 років тому

    Hey, great video but I have a question i am working with a data set that has 569 instances and 30 variables, problem is that the variables aren't like the example, they are not standard options, like shown in the video where outlook has 3 distinct options, these variables are all doubles, they range from 7.33 up to 22.45 or something like that, so i'm really not sure how to calculate entropy for that

    • @edurekaIN
      @edurekaIN  5 років тому

      Hey, Entropy is straightfoward and really simple to calculate. Can you elaborate?

  • @nchsrimannarayanaiyengar8003
    @nchsrimannarayanaiyengar8003 2 роки тому +1

    wonderful

  • @hammadkhan7927
    @hammadkhan7927 Рік тому

    I think it is best video for decision tree. Can you please give me the notes that you used to teach.

    • @edurekaIN
      @edurekaIN  Рік тому

      We are glad to have learners like you. Please do share your mail id so that we can send the notes or source codes. Do subscribe our channel and hit that bell icon to never miss an video from our channel

  • @quamar0313
    @quamar0313 2 роки тому +1

    Thanks for great explanation

    • @edurekaIN
      @edurekaIN  2 роки тому

      We are super happy that Edureka is helping you learn better. Your support means a lot to us and it motivated us to create even better learning content and courses experience for you . Do subscribe the channel for more updates : ) Hit the bell icon to never miss an update from our channel : )

  • @ML-uy8bs
    @ML-uy8bs 2 роки тому

    its really awsm........
    very helpful...

    • @edurekaIN
      @edurekaIN  2 роки тому

      We are super happy that Edureka is helping you learn better. Your support means a lot to us and it motivated us to create even better learning content and courses experience for you . Do subscribe the channel for more updates : ) Hit the bell icon to never miss an update from our channel : )

  • @mahfuzulhaquenayeem8561
    @mahfuzulhaquenayeem8561 Рік тому

    Thank you a lot for creating this for a beginner like me.

    • @edurekaIN
      @edurekaIN  Рік тому

      You're welcome 😊 Glad you liked it!! Keep learning with us

  • @hariharancse7273
    @hariharancse7273 5 років тому

    How to use decision tree cart algorithm in various problems sir! I am develop the project of"projector control" in supervised programming can I create??

    • @edurekaIN
      @edurekaIN  5 років тому

      Hey! Yes, You definitely can create.

  • @simhanarasimha386
    @simhanarasimha386 4 роки тому +1

    Nice explanation. Could you please share the code, it would be helpful, Many thanks in Advance!

    • @edurekaIN
      @edurekaIN  4 роки тому

      Thank you. Please share your email id with us (it will not be published). We will forward the code to your email address.

  • @jackyhuang6034
    @jackyhuang6034 4 роки тому +1

    Awesome video. May I have the code that was used at the end of the tutorial? Thanks in advanced.

    • @edurekaIN
      @edurekaIN  4 роки тому

      Thanks for the compliment! Please share your email id with us (it will not be published). We will forward the code to your email address.

  • @Zeus-dc5oh
    @Zeus-dc5oh 3 роки тому

    Thank you, you made it clear. Could you please share the code?

    • @edurekaIN
      @edurekaIN  3 роки тому

      Hi, kindly mention your email id in the comments to help us assist you with the required source codes, cheers :)

  • @kainatanjum7991
    @kainatanjum7991 Рік тому

    Thank you for making it clear and concise, additionally can you please provide the source code ?

    • @edurekaIN
      @edurekaIN  Рік тому

      We are glad to have learners like you. Please do share your mail id so that we can send the notes or source codes. Do subscribe our channel and hit that bell icon to never miss an video from our channel

  • @vaishnavipraveena7170
    @vaishnavipraveena7170 4 роки тому +1

    Hi Sir, Please share the link to the code that you have explained above. Thanks.

    • @edurekaIN
      @edurekaIN  4 роки тому

      Please share your email id with us (it will not be published). We will forward the source code to your email address.

  • @ProCoder101
    @ProCoder101 6 років тому +19

    Anyone with no prerequisites will able to understand Edureka all classes.

    • @edurekaIN
      @edurekaIN  6 років тому +5

      Hey Souman, that is our aim. Thank you for appreciating our efforts! Keep supporting us, cheers :)

  • @sankettakle9980
    @sankettakle9980 4 роки тому +1

    hey great explanation .. covered all the topics neccesaary could you please share the code

    • @edurekaIN
      @edurekaIN  4 роки тому

      Thank you. Please share your email id with us (it will not be published). We will forward the code to your email address.

  • @habibasani8106
    @habibasani8106 5 років тому

    Nice video. I was really helpful. Please can you send me the source code t practice

    • @edurekaIN
      @edurekaIN  5 років тому

      Hi Habiba! Can you please share your email id with us (it will not be published). We will forward you the source code to your email address.

  • @surender6320
    @surender6320 4 роки тому +1

    Hi, This is Surender, great explanation, can you please provide the python code.

    • @edurekaIN
      @edurekaIN  4 роки тому

      Thank you. Please share your email id with us (it will not be published). We will forward the code to your email address.

  • @maldito21st
    @maldito21st 4 роки тому

    Very informative video.
    Can you share the code as our reference?
    Thanks.

    • @edurekaIN
      @edurekaIN  4 роки тому +1

      Thank you. Please share your email id with us (it will not be published). We will forward the source code to your email address.

  • @karthikarg
    @karthikarg 5 років тому

    Why didn't 'temperature' come into picture while constructing the decision tree? Is it because the information gain is least compared to all other nodes? if yes, then every time when we construct the decision tree should we ignore the parameter with least info gain?

    • @edurekaIN
      @edurekaIN  5 років тому

      Hey, You are correct, it is because it is the least compared element. Not that you should always ignore it but it depends on the use case.

  • @indrajitmukherjee5964
    @indrajitmukherjee5964 5 років тому +2

    Awesome video guys. one small request can I get the demo code used here for my practice ?

    • @edurekaIN
      @edurekaIN  5 років тому

      Hey Indrajit! We are glad you loved the video. Please do mention your email ID over here and we will send the files to you. Cheers!

  • @adhithyarajan2311
    @adhithyarajan2311 Рік тому +1

    What is decision tree with relearning of nodes?

  • @mohammadhegazy1285
    @mohammadhegazy1285 2 роки тому

    Well explained thanks a ton

    • @edurekaIN
      @edurekaIN  2 роки тому

      Thank you for you time in giving a feedback :) We are glad that you are learning from our videos! Stay connected with our channel :)

  • @abhishekbhagat9467
    @abhishekbhagat9467 5 років тому +1

    hi could you please share the code..

  • @nuraisyah9509
    @nuraisyah9509 5 років тому

    what did you import for doing tree decision?

    • @edurekaIN
      @edurekaIN  5 років тому

      Hi Nur, You have to first import the required libraries and datasets. Hope this helps.

  • @salehaali1185
    @salehaali1185 5 років тому

    Thanks alot for the wonderful video. kindly share the code plz asap.

    • @edurekaIN
      @edurekaIN  4 роки тому

      Please share your email id with us (it will not be published). We will forward the code to your email address.

  • @RajChauhan-hd9hu
    @RajChauhan-hd9hu 5 років тому +1

    If the training_data is huge then how can we make the necessary changes and get the same correct output?

    • @edurekaIN
      @edurekaIN  5 років тому

      Hey Raj, You can set the variable to r rangle. For example, if you have around 5000 tuples, then you can use just 200 tuples and then assign it to train data. After that you can use the algorithm and test the data based on the chosen tuples

  • @Amitkumar-em4fm
    @Amitkumar-em4fm 4 роки тому

    Nice Video and great explanation .Can i get the source code pls

    • @edurekaIN
      @edurekaIN  4 роки тому

      Thank you. Please mention your email id (it will not be published). We will forward the code to your email address.

  • @tanmaydhaundiyal8532
    @tanmaydhaundiyal8532 5 років тому

    The video is awesome, can i get the link to source code?

    • @edurekaIN
      @edurekaIN  5 років тому

      Hey Tanmay, we are glad you loved the video. Please do mention your email ID over here and we will send the files to you. Cheers!

  • @user-ux1dg1qn6v
    @user-ux1dg1qn6v 4 роки тому +1

    great explanation..may i have the code

    • @edurekaIN
      @edurekaIN  4 роки тому +1

      Thanks Obaid. Please share your email address, we will send you the code.

  • @arnavaakash8697
    @arnavaakash8697 6 років тому

    can u please send the code to me...I found your very video helpful but I couldn't find code anywhere in the description as pointed in the video

    • @edurekaIN
      @edurekaIN  6 років тому

      Hey Arnav, glad you loved the video. If you could please mention your email id(we won't publish it) so that we can share the files with you.

  • @huhwhat8831
    @huhwhat8831 2 роки тому

    Great video. But could you please provide the source code. It will be helpful for us to study it.

    • @edurekaIN
      @edurekaIN  2 роки тому

      Hi great to hear from you :) please share your mail id ! so that we can share the data sheet with you :)Do subscribe the channel for more updates : )

  • @qizhang5885
    @qizhang5885 2 роки тому

    Very clear explain. May I have the source code?

    • @edurekaIN
      @edurekaIN  2 роки тому

      Good to know our contents and videos are helping you learn better . We are glad to have you with us ! Please share your mail id to send the data sheets to help you learn better :) Do subscribe the channel for more updates : ) Hit the bell icon to never miss an update from our channel : )

  • @bpratima87
    @bpratima87 6 років тому +2

    can u please share the code it would be helpful
    Prior thank you

    • @edurekaIN
      @edurekaIN  6 років тому

      Hey Pratima, hope you found the video informative. Please do share your email id(we won't publish it) so that we can mail the files to you. Cheers!

  • @pragatisrivastava4872
    @pragatisrivastava4872 4 роки тому

    Nice video, may i have the code that was used at the end of the video.

    • @edurekaIN
      @edurekaIN  4 роки тому

      Thank you. Please share your email id with us (it will not be published). We will forward the source code to your email address.

  • @paruljoshi7648
    @paruljoshi7648 3 роки тому

    Hello, Thanks a lot for this tutorial...can I get the code please?
    as I'm facing few errors while running it like I Got the error that Question takes no argument.
    Please share the code.

    • @edurekaIN
      @edurekaIN  3 роки тому

      Hi Parul, we do provide practice codes to enhance your learning experience, kindly drop in your email id to help us assist you with it. Cheers :)

  • @sumitbadola2976
    @sumitbadola2976 5 років тому +2

    amzng..sir

  • @shagunsrivastava5837
    @shagunsrivastava5837 4 роки тому

    hi!! could you please share the link to python code explained in the video??

    • @edurekaIN
      @edurekaIN  4 роки тому

      Please share your email id with us (it will not be published). We will forward the code to your email address.

  • @poojabhakuni464
    @poojabhakuni464 5 років тому +1

    Can you please provide the code, it will be a great help!

    • @edurekaIN
      @edurekaIN  4 роки тому

      Please share your email id with us (it will not be published). We will forward the code to your email address.

  • @vivanjain1746
    @vivanjain1746 4 роки тому

    Great explanation. Can you share the code

    • @edurekaIN
      @edurekaIN  4 роки тому +1

      Thank you. Please share your email id with us (it will not be published). We will forward the code to your email address.

  • @keerthikeethika9551
    @keerthikeethika9551 4 роки тому +1

    hii sir...nice video please share the source code and dataset

    • @edurekaIN
      @edurekaIN  4 роки тому

      Thanks for the appreciation, Keerthi! Please mention your email id (it will not be published). We will forward the code and dataset to your email address.

  • @digibro4496
    @digibro4496 6 років тому +3

    where is code in description

    • @edurekaIN
      @edurekaIN  6 років тому

      Hey Digi Bro, mention your email address and we will send it over. Cheers :)

  • @saisaranv
    @saisaranv 6 років тому +1

    Have few doubts...can Any kne clarify

    • @edurekaIN
      @edurekaIN  6 років тому +1

      Hey Sai,sure. We will try helping you out. You can mention it here itself. Cheers :)

    • @saisaranv
      @saisaranv 6 років тому

      edureka! In the above video explanation was superb and appreciated . But for the same above example how can I calculate the probability for each user or each id after building the model?

    • @saisaranv
      @saisaranv 6 років тому

      edureka! I mean to say can I calculate the probability for my train data set and test data set based on individual??

  • @rifiyanazninali9664
    @rifiyanazninali9664 4 роки тому

    awesome explanation...can you share the code?

    • @edurekaIN
      @edurekaIN  4 роки тому

      Please mention your email id (it will not be published). We will forward the code to your email address.

  • @chiruvlogss
    @chiruvlogss 5 років тому +1

    👏👏👏👏👏👏👍

  • @sanyakataria0908
    @sanyakataria0908 5 років тому

    Sir, your video was very well explained but can you please share the code with me, as i tried copying the code and i am facing some errors.
    So please can you share the code.

    • @edurekaIN
      @edurekaIN  5 років тому

      Hey Sanya, Thanks for the compliment! Can you please share your email id with us (it will not be published). We will forward you the source code to your email address.

  • @jayedakbar2425
    @jayedakbar2425 Рік тому

    Thanks for the great video. Can i have the code please?

    • @edurekaIN
      @edurekaIN  Рік тому

      Good to know your learning with Edureka 😊 please share your mail id to share the data sheet! We'll Update you soon ! Do subscribe our channel for more such videos..

  • @komalrathod7746
    @komalrathod7746 2 роки тому +1

    Thank you for the explanation. Can you please share the code?

    • @edurekaIN
      @edurekaIN  2 роки тому

      Thanks for showing interest in Edureka! Kindly share your mail id for us to share the datasheet/ source code :) Do subscribe for more videos & updates

  • @abhishekghaskata9130
    @abhishekghaskata9130 5 років тому

    How we know that which algorithm is best for our data????

    • @edurekaIN
      @edurekaIN  5 років тому

      Hi Abhishek, in practice, some form of cross-validation is typically applied. However, there are ways to make an informed pre-selection. You can go with a maximum margin classifier such as support vector machines. It can be considered the best off the shelf classifier to date.

  • @vishrutsinghal4572
    @vishrutsinghal4572 4 роки тому

    great tutorial, please can i have a code

    • @edurekaIN
      @edurekaIN  4 роки тому

      Thank you. Please share your email id with us (it will not be published). We will forward the code to your email address.

  • @ashwatsharma7511
    @ashwatsharma7511 3 роки тому

    Very Well explained ..👍
    Can I get code file??

    • @edurekaIN
      @edurekaIN  3 роки тому

      Hi Ashwat, kindly drop in your email id to help us assist you with the required source codes. Cheers :)

  • @ayatahmad4240
    @ayatahmad4240 5 років тому +1

    can anybody tell that it is the code for decision tree or id3??

    • @edurekaIN
      @edurekaIN  5 років тому

      Hey Ayat, it is for decision tree. Cheers!