Hierarchical multiple regression in SPSS

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  • Опубликовано: 21 авг 2024

Комментарии • 16

  • @jadeguarnera7486
    @jadeguarnera7486 3 года назад +3

    This is the best explanation of regression output. Thank you

  • @lorenlapinaofficial
    @lorenlapinaofficial 3 месяца назад

    Thank you for this very comprehensive explanation.

  • @anthonyshula364
    @anthonyshula364 2 месяца назад

    Thank you for this very clear presentation.

  • @amyholliday5719
    @amyholliday5719 3 года назад +1

    This was incredibly helpful. Many thanks!

  • @hadyjs1
    @hadyjs1 3 года назад +1

    very informative

  • @kennedymumba5187
    @kennedymumba5187 10 месяцев назад +1

    Thank you

  • @kated9412
    @kated9412 Год назад

    In a previous video, you stated to report adjusted R square because its smaller and it's wise to be conservative when reporting statistics. However, here you used the normal R square. Is there a reason for this? Did you use it to make data look better, or coz of analysis reasons or coz you had a change of opinion. Either way, great video, very helpful. Thanks for sharing.

    • @DrPC_statistics_guides
      @DrPC_statistics_guides  Год назад

      Adjusted R2 change is rarely done and hard to compute as the correction for variables present is difficult to do in the context of additional variance explained

  • @kossonouprunelle7576
    @kossonouprunelle7576 2 года назад

    Thanks a lot for the tutorial. I would like to ask a question, i have 4 control variables (ordinal and nominal categorical variables), and 4 independent variables ((ordinal and nominal categorical variables). Can i put all of them at the same time as you explained on the video? Like in the first block put all the control vaariables, and in the second put all the independent variables. Can you please make also a video to teach us how to interpret and report the results about the effect of the controls variables according to the statistical results. Thanks in advance

  • @garthgood4917
    @garthgood4917 4 года назад

    So just to check my knowledge, I am currently considering the impact of REBT on coaches levels of motivation and well-being, but in gender I have three categories (Male, Female & Transgender) am I right in saying that I couldn't include gender in my regression as there is more than 2 categories?
    Also I found this video excellent, made easy to understand and from a personal note I found the examples of the tables very useful.
    Garth

    • @DrPC_statistics_guides
      @DrPC_statistics_guides  4 года назад

      You'd have to create dummy variables, here's a useful guide statistics.laerd.com/spss-tutorials/creating-dummy-variables-in-spss-statistics.php.
      How many are in each of the three conditions, if there are very few in the transgender condition then you would not be able to produce reliable estimates from it.
      I'm glad that you found it helpful

  • @couragee1
    @couragee1 2 года назад

    thanks

  • @samuelcch5400
    @samuelcch5400 2 года назад

    so do i need to generate once again with male:0 female:1?

  • @ameliatlusty4601
    @ameliatlusty4601 5 лет назад

    Hi, for what reason would you use Adjusted R Square over R square during a write up of a reggression?

    • @DrPC_statistics_guides
      @DrPC_statistics_guides  5 лет назад +1

      It's more conservative, ie always lower than the R2 statistic so you don't overstate your model performance. Either are acceptable though!

    • @ameliatlusty4601
      @ameliatlusty4601 5 лет назад

      thanks!