Multiple Linear Regression in Python - sklearn

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  • Опубліковано 5 тра 2022
  • If you are a complete beginner in machine learning, please watch the video on simple linear regression from this link before and learn the basic concepts first:
    • Simple Linear Regressi...
    Here is the dataset used in this video:
    Please feel free to check out my Data Science blog where you will find a lot of data visualization, exploratory data analysis, statistical analysis, machine learning, natural language processing, and computer vision tutorials and projects:
    regenerativetoday.com/
    Twitter page:
    / rashida048
    Facebook Page:
    regenerativetoday.com/
    #linearRegression #machinelearning #datascience #dataAnalytics #python #sklearn #jupyternotebook

КОМЕНТАРІ • 88

  • @imveryhungry112
    @imveryhungry112 Рік тому +11

    im glad people like you exist. I am simply not smart enough to have figured this out on my own

  • @souravdey1227
    @souravdey1227 Рік тому +9

    Very good tutorial. No nonsense and clean. Thanks

  • @anis.ldx1
    @anis.ldx1 3 місяці тому +1

    Absolutely brilliant! Your way of explaining is beyond exceptional. Thank you so much for this simplistic explanation!

  • @maheswaraardhani323
    @maheswaraardhani323 2 місяці тому

    from the bottom of my heart, i want to thank you for your detailed and easy to follow explanation. i dont know who you are or where you are but you have my utter respect. big thanks

  • @muhammadaalimisaal8453
    @muhammadaalimisaal8453 9 місяців тому

    I am kinda selfish type of person. Usually I donot like videos nor subscribe channels but how precise and to be the point your video was and I'm utterly impressed as this video was helpfull in clearning my concepts about MLR.
    Goodluck, Best wishes. You have won a subscriber

  • @albertjohnson8605
    @albertjohnson8605 10 місяців тому +1

    I don't know who you are, but THANK you from deep heart for making this content

  • @richardquinn72
    @richardquinn72 Рік тому

    Very clear instruction, thanks!

  • @analyticalmindset
    @analyticalmindset Рік тому +2

    I would've loved for you to squeak in a Residual analysis or whatever is done after you get your R2 values from your test and train group.

  • @subhabhadra619
    @subhabhadra619 11 місяців тому +1

    Fantastic video.simple to understand

  • @Puputchi
    @Puputchi 4 місяці тому +1

    Thank you for the tutorial!

  • @christophermiller4637
    @christophermiller4637 18 днів тому

    Data isn't my background, but these videos help me understand how to structurally get there. Is there a way to export the predicted charges into a data population for further review. Also, is there a way to adjust the scatter plot dots by a filter on one of the independent variables (i.e. any record where age is 17, make the the plot red color). Thank you!

  • @RaihanRisad
    @RaihanRisad 2 місяці тому +2

    where can i get the dataset that you used

  • @tejallengare3673
    @tejallengare3673 9 місяців тому

    This video is very helpful thank you so much

  • @tianyouhu5973
    @tianyouhu5973 Рік тому

    super helpful, appreciate it

  • @freeprivatetutor
    @freeprivatetutor 7 місяців тому +1

    excellent. very helpful. subscribed!

  • @robinncode
    @robinncode Місяць тому

    Thanks for the amazing insights!

  • @Kennerdoll
    @Kennerdoll Рік тому

    how do i go about passing new values from a user?

  • @programsolve3053
    @programsolve3053 Місяць тому

    Very well explained 🎉🎉
    Thanks you so much 🎉🎉🎉

  • @svea3524
    @svea3524 10 місяців тому

    how do i plotthe fit line over the data?

  • @KilalibaTugwell
    @KilalibaTugwell 11 місяців тому

    This video was super helpful

  • @nevermind9708
    @nevermind9708 5 місяців тому +3

    i think u can make a function to convert object name into numeric if the the data has many columns instead of writing 1 each 1 like this :
    for column in df.columns:
    if not pd.api.types.is_numeric_dtype(df[column]):
    df[column] = df[column].astype('category')
    df[column] = df[column].cat.codes
    df

    • @regenerativetoday4244
      @regenerativetoday4244  5 місяців тому

      Thank you so much for adding this here. I used this function in some other videos as well.

  • @cientifiko
    @cientifiko Рік тому

    thanks... this is awesome

  • @BayuWicaksana95
    @BayuWicaksana95 Рік тому

    thank you for the tutorial

  • @mistymoose4424
    @mistymoose4424 Рік тому +1

    omg thank you queen❤

  • @elijahcota2408
    @elijahcota2408 3 місяці тому +1

    Thank you, god bless

  • @ThobelaGoge
    @ThobelaGoge Місяць тому

    How do we access the dataset used?

  • @nobio9591
    @nobio9591 Рік тому

    Thanks Dear Rashida

  • @fatemehrakhshanifar6402
    @fatemehrakhshanifar6402 Рік тому

    Hi, I could find the data but not the code, it's not on your github?

  • @alirezarahbari3556
    @alirezarahbari3556 Рік тому

    Helpful🔥

  • @richardreneBunalos
    @richardreneBunalos Рік тому

    Can you show us how to do OneHotEncoding?

  • @fariapromi4182
    @fariapromi4182 2 місяці тому

    Where is the dataset???

  • @Habbodonald
    @Habbodonald Місяць тому

    Very good video. About the model, dont you need to check if R-square need an adjust to trust his income?

    • @regenerativetoday4244
      @regenerativetoday4244  Місяць тому +1

      There are a few different ways to check the model prediction. R-squared error is one of them. It is common for machine learning models to use mean squared error or mean absolute error as well.

  • @subhasispaul7262
    @subhasispaul7262 3 місяці тому

    Can you share the following data please

  • @PersonalOne-wn2zd
    @PersonalOne-wn2zd 5 місяців тому +1

    I have a Different Insight from that i used the Wine data set for that

  • @alirezarahbari3556
    @alirezarahbari3556 Рік тому

    Nice 👍

  • @KilalibaTugwell
    @KilalibaTugwell 11 місяців тому

    If I developed a model with an r-squared of 0.2. What do I do to improve the performance of the model?

    • @regenerativetoday4244
      @regenerativetoday4244  11 місяців тому +1

      Try different hyperparameters to improve the model and also different models.

  • @Essentialenglishwords-ii7ek

    please may i ask you why you didn't put (axis = 1) when you drop a column

  • @user-xp2qv2jk7b
    @user-xp2qv2jk7b Місяць тому

    Please can you send me any link for case study using python polynomial regression (or multi polynomial) with data ?
    I want to practice.

  • @wardaoktoh5060
    @wardaoktoh5060 6 місяців тому

    thank youuuuuuuuuuuuuuuuu miss

  • @jayasarojam8568
    @jayasarojam8568 4 місяці тому

    Great

  • @mdrahatislamkhan9966
    @mdrahatislamkhan9966 2 місяці тому

    x_train,x_test,y_train,y_test=train_test_split(x,y,test_size=0.2,random_state=0) it works fine but when i swapped the x_train and x_test it gives me error.
    x_test,x_train,y_train,y_test=train_test_split(x,y,test_size=0.2,random_state=0) why this code gives me error. can you please explain me?

    • @regenerativetoday4244
      @regenerativetoday4244  2 місяці тому

      It should give you error because x_test and y_train have different sizes

    • @mdrahatislamkhan9966
      @mdrahatislamkhan9966 2 місяці тому

      ​@@regenerativetoday4244i dont got your point. sized are same. I wanted to know if i write x_test,x_train .... it gives me error but it i write x_train,x_test.... then it works fine.

  • @manyasachdeva1511
    @manyasachdeva1511 8 місяців тому +1

    Can you please provide the link for the csv file? I'd like to practice the codes on my own as well

    • @regenerativetoday4244
      @regenerativetoday4244  8 місяців тому +1

      Here is the link to the dataset: github.com/rashida048/Machine-Learning-Tutorials-Scikit-Learn/blob/main/insurance.csv
      Thanks!

    • @manyasachdeva1511
      @manyasachdeva1511 8 місяців тому

      @@regenerativetoday4244 thank you so much :)

    • @manyasachdeva1511
      @manyasachdeva1511 8 місяців тому

      Your content is amazing

  • @raymondkang1329
    @raymondkang1329 Рік тому +5

    Erm, I think the method you convert the data "region" is inappropriate. U cant convert the "region" as category since it become ordinal data. I think we should convert each of the region into dummy variables then we can see the coefficient of each region.

  • @shanenicholson94
    @shanenicholson94 Рік тому +2

    Fantastic video. Very simple and to the point. How can I add the regression line to the chart?

    • @svea3524
      @svea3524 10 місяців тому

      do you have the answer?

    • @shanenicholson94
      @shanenicholson94 10 місяців тому

      @@svea3524 let me find it later for you. I got it eventually

    • @sedativelimit
      @sedativelimit 8 місяців тому

      use plt.plot to draw regression line i.e in the format
      plt.plot(X_train, reg.predict(np.column_stack((X_train))), color='blue', label='Regression Line')

  • @maishakhatun5635
    @maishakhatun5635 5 місяців тому

    What if a dataset has columns with numerical values but with symbols, how to do the cleaning?

    • @maishakhatun5635
      @maishakhatun5635 5 місяців тому

      I mean comma or currency symbol, thank you

    • @maishakhatun5635
      @maishakhatun5635 5 місяців тому

      have you got any videos that calculate the mean absolute error for evaluation?

  • @jacintaqiu9919
    @jacintaqiu9919 2 місяці тому

    Why my coding shows "TypeError: float() argument must be a string or a real number, not 'Timestamp'"? which one could help me to solve this problem, plz!!

    • @regenerativetoday4244
      @regenerativetoday4244  2 місяці тому

      You need to check the data type of all the columns. If you see any variable is coming as timestamp, that needs to be excluded. Because this tutorial didn't account for datetime datatype. There are different ways of dealing with timestamps. You will find one way of using the timestamp data in this type of models in this tutorial: ua-cam.com/video/Kt9_AI12qtM/v-deo.html

    • @jacintaqiu9919
      @jacintaqiu9919 2 місяці тому

      Thank you sooooo much!!!! really helpful:)@@regenerativetoday4244

  • @sairahulreddykondlapudi8855
    @sairahulreddykondlapudi8855 Рік тому +1

    training and testing on the same dataset?

  • @JyotirmoyeeRoy
    @JyotirmoyeeRoy Місяць тому

    Its showing a error as "df isn't defined "

  • @santakmohanty612
    @santakmohanty612 6 місяців тому

    Could you also upload or provide a google drive link for the data set file. It would be really helpful.

    • @regenerativetoday4244
      @regenerativetoday4244  6 місяців тому +4

      Here is the link to the dataset: github.com/rashida048/Machine-Learning-Tutorials-Scikit-Learn/blob/main/insurance.csv. I am sorry, UA-cam changed their policy for links.

    • @santakmohanty612
      @santakmohanty612 6 місяців тому

      @@regenerativetoday4244 Thanks a lot !!

  • @abbddos
    @abbddos Рік тому +3

    Good.. but normally we test a model with data that it hasn't seen before, and that's the test split.

  • @abinanda5754
    @abinanda5754 Рік тому

  • @user-qc4yk9ko9t
    @user-qc4yk9ko9t 9 місяців тому

    what to do when data have null values?

    • @regenerativetoday4244
      @regenerativetoday4244  9 місяців тому +1

      I just added a detailed video on how to deal with null values. Here is the link: ua-cam.com/video/BnfLUJkrMjs/v-deo.html

  • @chiragahlawat465
    @chiragahlawat465 5 днів тому

    Thank you mam for such a wonderful learning!! I want to know further how can I improve my model accuracy with train score 0.75 and test score -1.12 ??

    • @regenerativetoday4244
      @regenerativetoday4244  5 днів тому +1

      First is trying to tune hyperparameters, and also it is normal practice to try different models to find out which model works best for the dataset. Feel free to have a look at this video where you will find a technique for hyperparameter tuning: ua-cam.com/video/km71sruT9jE/v-deo.html

    • @chiragahlawat465
      @chiragahlawat465 Годину тому

      @@regenerativetoday4244 Thank you so much you have explained it Amazingly and this video made me very happy! Thank you for this video all the rest!!

  • @girlthatcooks4079
    @girlthatcooks4079 5 місяців тому +1

    On what are you typing your codes this is not vsc?Sorry i am a begginer

  • @sheldonoumaotieno6846
    @sheldonoumaotieno6846 Рік тому

    hey I think the formula and the logic is wrong, though implementation is right. Linear regression even though they may seem it is quite different from the just a simple linear equation. The input features what you define as X are in fact vectors. If you compile n with m training example you have a matrix rather than simple linear equation and it turns out to be a matrix multiplication.
    The addition is something called bias. The W is the weight. Anyway keep up!

    • @regenerativetoday4244
      @regenerativetoday4244  Рік тому +1

      The bias term in machine leaning term can actually be compared with y_intercept in the linear formula and the weights as coefficients. in y = aX+c, a and X are variables that can be integers, vectors, arrays, or matrices. Same as c. The formula is the concept. I have a detailed tutorial with explanation that shows the linear regression implementation in python from scratch (no libraries), please check if you are interested: regenerativetoday.com/how-to-develop-a-linear-regression-algorithm-from-scratch-in-python/.

  • @Martin-xf8be
    @Martin-xf8be 8 місяців тому

    Why did you need to convert to category?

    • @regenerativetoday4244
      @regenerativetoday4244  8 місяців тому +2

      Because machine learning models cannot work with strings. It features and labels should be numeric

    • @Martin-xf8be
      @Martin-xf8be 8 місяців тому

      @@regenerativetoday4244
      Ahh, I see. Thanks for a great video!

  • @63living.
    @63living. 3 місяці тому

    Can't download dataset

    • @regenerativetoday4244
      @regenerativetoday4244  3 місяці тому

      Here is the link: github.com/rashida048/Machine-Learning-Tutorials-Scikit-Learn/blob/main/insurance.csv

  • @zishankhan2763
    @zishankhan2763 4 місяці тому +1

    Very clear instruction, thanks!