Python Feature Scaling in SciKit-Learn (Normalization vs Standardization)

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  • Опубликовано: 23 окт 2024

Комментарии • 22

  • @RyanAndMattDataScience
    @RyanAndMattDataScience  2 месяца назад

    Hey guys I hope you enjoyed the video! If you did please subscribe to the channel!
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  • @AktamNarzullayev-f7m
    @AktamNarzullayev-f7m 7 месяцев назад +6

    underrated channel great video

  • @danieljuniormilazi7701
    @danieljuniormilazi7701 2 месяца назад

    Dude you just made the whole concept so easy to understand, i've been trying to understand exactly what was required of me for hours. Keep up the great work ❣❣❣❣❣❣

  • @v.jananayagan3284
    @v.jananayagan3284 4 месяца назад +1

    you teach very well than other channels but i don't know why pepoles are not spend time on your channel really helpfull man

  • @lancerkind
    @lancerkind 7 месяцев назад

    Very good video! I learned a lot. If I was to ask for more, it would be to fill in WHY normalize or standardized. You mention some about “getting your numbers in order.” Add to that there are reasons for visualization tools, comparison analysis, and whatever else. I have some ideas why, but I’m guessing as a Pandas user you have encountered many more.
    Thank you for sharing.

    • @RyanAndMattDataScience
      @RyanAndMattDataScience  7 месяцев назад

      No problem and I may make a statistics course video in the future. Just waiting on my job to apply more skills

  • @lilikoimahalo
    @lilikoimahalo 10 месяцев назад

    Could you also explain how the choice of feature_range affects the output processing please? Trying to understand in which case it should be (0,5) and when it should be (0,10), and how you then interpret the output, for example? Also, I am wondering: you are applying scalers to the whole dataset, but what if you have a regression type task (predicting an actual number)? If you apply scalers to all columns then your targets also change

  • @photonganglol2413
    @photonganglol2413 23 дня назад

    as someone who is new to AI/ML, maybe some more clear terminology defined would be helpful. A lot of resources call what you describe as 'Normalizing' as 'Scaling'. And what you call 'standardization' is referred to as 'Normalizing'. Just a little confusing but great video actually showing the difference between the 2.

  • @sandeep-kc9hs
    @sandeep-kc9hs 3 месяца назад

    learned a lot from this. excellent teaching🙌

  • @gnuwaves743
    @gnuwaves743 3 дня назад

    Is there an easy way to get the column names? I have almost 100.

  • @Welcomereddy
    @Welcomereddy Год назад +1

    Excellent brother !

  • @onurdatascience
    @onurdatascience Год назад +1

    Great video!

  • @qaisshefa4846
    @qaisshefa4846 3 месяца назад

    Thanks so much

  • @rishikeshjadhav4774
    @rishikeshjadhav4774 3 месяца назад +1

    can you please post the jupyter notebook containing code , it will be very healpful

    • @RyanAndMattDataScience
      @RyanAndMattDataScience  3 месяца назад

      Will be on my website soon, I’m moving the code from the vids into articles

  • @sara-sx7gm
    @sara-sx7gm 5 месяцев назад

    Helpful . Thank you so much

  • @redeemmbonge
    @redeemmbonge 14 дней назад

    👏👏👏