Decision Tree Regression Clearly Explained

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  • Опубликовано: 27 окт 2024

Комментарии • 10

  • @sds-superdatascience
    @sds-superdatascience  Год назад +2

    Thank you for subscribing and following our videos. You can find the course HERE:sds.courses/machine-learning-az

  • @oualidlaib5965
    @oualidlaib5965 2 месяца назад

    That was an amazing and clear explanation, especially for non-technical learners. Thank you so much

  • @JAswoosh
    @JAswoosh 10 дней назад

    Information Entrophy is only for classification trees, not regression. "Instead of using entropy, regression trees rely on variance reduction or mean squared error (MSE) to measure the "purity" or homogeneity of the data points within each node. The goal is to split the data into groups where the target values are as close to the group's mean as possible, minimizing the spread (variance) within each group."

    • @sds-superdatascience
      @sds-superdatascience  7 дней назад

      Thanks for pointing that out! I appreciate you taking the time to share that.

  • @Xin_Yannnng
    @Xin_Yannnng 9 месяцев назад

    Thanks a lot ! Nice video!

  • @sbaisalaheddine5466
    @sbaisalaheddine5466 Год назад +1

    Thank you very much I m a prof I work In a scientific paper using machine learning I've already used MLR and GAM models and I will use a random forest model if you are interested you can work together I look for your response

  • @antique-bs8bb
    @antique-bs8bb Год назад

    Thanks - interesting. Thinking about taking up the course
    Are the splits always at right angles to the axes - get xn >c ?

  • @youshouldaknown
    @youshouldaknown 9 месяцев назад +1

    this is the worst explanation of DTR, YOU DONT KNOW HOW TO CLEARLY EXPLAIN IT

    • @therobinshaw
      @therobinshaw Месяц назад

      Your explanation was so much clearer. Thank you.

  • @JacobTimothy-fu9bt
    @JacobTimothy-fu9bt 23 дня назад

    Not helpful