Multiple regression in SPSS procedures and interpretation (July 2019)

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  • čas přidán 27. 08. 2024
  • This video provides a walkthrough of how to carry out multiple regression using SPSS and how to interpret results. Included is a review of assumptions and options that are available for evaluating assumptions and identifying potential outliers and influential cases. A copy of the Powerpoint referenced in the video can be downloaded here: drive.google.c.... A copy of the dataset can be obtained here: drive.google.c... . If you find the material and useful, please "like" the video and share! Thank you for watching!

Komentáře • 51

  • @kingsleychinazanwosu3481
    @kingsleychinazanwosu3481 Před 3 lety +2

    I love the way you teach. You make things very easy. thanks for your kindness

  • @racquelmoore1749
    @racquelmoore1749 Před 3 lety +2

    Best video I’ve seen explaining multiple regression analysis. I have watched so many but this is the best this far. Thank you

  • @annareeves9912
    @annareeves9912 Před 3 lety +2

    Oh my gosh I needed this so much. I had to redo all my results and I'm trying to relearn how to use spss so I can run a multiple regression analysis. This was so helpful.

  • @mikecrowson2462
    @mikecrowson2462  Před 3 lety

    Hi everyone, I have just uploaded a new video (Sept 2021) on multiple linear regression using SPSS. I hope you consider visiting it at czcams.com/video/0N4Q8zZijcI/video.html .

  • @lidconsultation
    @lidconsultation Před 2 lety

    Excellent video, presentation, PowerPoint presentation, and SPSS data file. I am highly benefited. Thanks a lot.

  • @brittjane4486
    @brittjane4486 Před 5 lety +3

    This is great. Your channel is my go-to for any statistics problems. Thanks for your work :)

    • @mikecrowson2462
      @mikecrowson2462  Před 5 lety

      Hi Britt, thanks for watching and for your kind feedback! Best wishes!

  • @jochan0
    @jochan0 Před rokem

    Thank you Dr Crowson!

  • @debesielena9497
    @debesielena9497 Před 2 lety

    Thank you, this is great. Clear, concise and yet detailed.

  • @divinelumiere8564
    @divinelumiere8564 Před 2 lety +1

    Thank you so much. God bless you! Thank you

  • @dagemayele1727
    @dagemayele1727 Před 2 lety

    Excellent work with detailed explanation. Keep it up! Thank you!

  • @pauljohncapote7541
    @pauljohncapote7541 Před 3 lety

    Your efforts are really commendable. Thank you

  • @Dr.KishoreK
    @Dr.KishoreK Před 2 lety

    VERY gOOD PRESENTATION

  • @fabrizioziantoni4337
    @fabrizioziantoni4337 Před 2 lety

    Great work! It's really informative and clear. Thanks for sharing.

  • @jz5183
    @jz5183 Před 3 lety

    Thank you sooo much for such a helpful video and your consideration to upload the slides. They are very helpful!

  • @dbasannar
    @dbasannar Před 4 lety

    Excellent presentation and explanation.

  • @aarushimahajan3050
    @aarushimahajan3050 Před 3 lety +1

    Hello Sir,
    What if the variables are measured on different point likert scale. For example 5 point and 6 point. How to run a multiple linear regression in such a case.?

  • @couragee1
    @couragee1 Před 3 lety

    thank you so much for this VERY helpful video.

  • @boatiizz
    @boatiizz Před 4 lety +3

    How about there are more than one dependent variables? Shall I run Analyze>Regression>Linear for each dependent variables as much as number of DVs?

  • @sabrayahya89
    @sabrayahya89 Před 4 lety

    Woow..Thanks for a clear presentation sir..!

  • @muhammadbello4119
    @muhammadbello4119 Před rokem

    How do you obtain the values of the independent variable..
    I mean those numbers under interest and the other independent variable

  • @nminhas786
    @nminhas786 Před 5 lety +1

    great work and awesome contribution.

    • @mikecrowson2462
      @mikecrowson2462  Před 5 lety

      Hi Nasir, thank you so much for your feedback! Thanks for visiting!

  • @user-fg1kj7fd8j
    @user-fg1kj7fd8j Před 2 lety

    Thank you so much

  • @trainingguru2645
    @trainingguru2645 Před 3 lety

    very useful indeed. thanks for sharing. GS Bawa

  • @samuelmwanza4731
    @samuelmwanza4731 Před 2 lety

    thank you this has been very helpfull

  • @dohoanganh5491
    @dohoanganh5491 Před 3 lety

    It's very helpful. Thank you

  • @WScarfaceWars
    @WScarfaceWars Před 3 lety

    In my case: the standardized coefficients beta and the square of the part correlations give me 2 quite different rankings of the dependent variables

  • @raimykhairi5334
    @raimykhairi5334 Před 3 lety

    Hello 👋🏻 I’ve 1question to ask. As a beginner I currently run the spss. My hypothesis is to find “effect. From my knowledge regression test can do it. But, my data not normally distributed. Can i use regression to find my hypothesis with data not normally distributed?

  • @smmalyshev
    @smmalyshev Před 2 lety

    So as far as I understood you can just mark a categorical variable as a continuous one in order to include in the model. What's the point of logistic regression then?

    • @mikecrowson2462
      @mikecrowson2462  Před 2 lety

      Hello, thanks for visiting and for your question.
      First off, logistic regression is used when the dependent variable is binary and your goal is to predict the probability of a case falling into a target group (as opposed to a reference group) as a function of the predictors in your model. [there are actually other forms such as multinomial and ordinal, but I'm sticking to the most commonly used logistic regression model in this discussion]. OLS regression is used to predict a continuous dependent variable.
      With respect to your statement about 'marking a categorical variable as continuous for inclusion in the model', I would point out that the decision to do this does not convert your previously 'categorical' variable into a continuous one. SPSS allows you to change how you indicate the scaling of your variable under the Variable View tab, but whether you decide to have the indicator set to nominal, ordinal, or scale will not impact the mathematics behind the computation when running your regression. The program will give you the same OLS regression output when you perform your analysis with the variables listed in either way. I think of that option in SPSS as largely something that encourages folks to think about the scaling of their variables.
      Now, if you are asking about the decision by a researcher to treat an ordered categorical variable "as if" it was continuous (such as those cases where a researcher might treat a Likert type item, ranging from 1=strongly disagree to 7=strongly agree) in a model, then that is something different. Generally, the decision to do something like that is based on a variety of theoretical and pragmatic considerations, as well as the possible effects of doing this when it comes to meeting model assumptions. I'm not going to go into all the finer points here; but I will say that OLS regression technically makes no assumptions regarding the distributional characteristics of the predictors in the model. The only distributional assumptions pertain to the residuals (prediction errors).
      I hope this is helpful to you. Cheers!
      p.s., I do have a newer video on OLS regression here: czcams.com/video/0N4Q8zZijcI/video.html

  • @mehmetalibiberci8796
    @mehmetalibiberci8796 Před 3 lety

    Thank you so much. it is very benefical.

  • @kamaranm.h8261
    @kamaranm.h8261 Před 3 lety

    Good job and best wishes...
    How possible to get the power point that u mentioned in the video?

    • @mikecrowson2462
      @mikecrowson2462  Před 3 lety

      Hi there. Thanks for visiting! There is a link to the PowerPoint underneath the video description. Cheers!

  • @akhgh07
    @akhgh07 Před 3 lety

    thanks a lot

  • @swatioza26
    @swatioza26 Před 3 lety

    Hey Mike
    nicely explained
    Can we use regression for scale data for dependent and independent Variables are in scale... if Yes what will be the way to do so

    • @mikecrowson2462
      @mikecrowson2462  Před 3 lety +1

      Hi there. When you say 'scale ' data are you referring to the measurement setting in SPSS? That setting is sort of a catch-all for interval and ratio-level variables. You would use this setting if you are assuming your variable is continuous.
      Least squares regression assumes that your dependent variable is continuous. And generally your IV's are continuous. [It is possible to model categorical independent variables via the use of some type of dummy or effect coding system.] So running the analysis in SPSS with your variable set to 'scale' is the same as what I demonstrated in the video. Cheers!

    • @swatioza26
      @swatioza26 Před 3 lety

      @@mikecrowson2462 Thank you so much Mike

  • @zhehabeshascience3066
    @zhehabeshascience3066 Před 3 lety

    very good

  • @yulinliu850
    @yulinliu850 Před 5 lety

    Great lecture!

    • @mikecrowson2462
      @mikecrowson2462  Před 5 lety

      Hey, thanks Yulin! I appreciate the feedback!

    • @yulinliu850
      @yulinliu850 Před 5 lety

      @@mikecrowson2462 You're very welcome! Thank you for the generous sharing of knowledge!

  • @DrHanjabamBarunSharma
    @DrHanjabamBarunSharma Před 3 lety

    thumbs up

  • @Deborah28277
    @Deborah28277 Před 3 lety

    I sure wish you were my neighbor

  • @mustaphabusiness2266
    @mustaphabusiness2266 Před 2 lety

    thanks a lot, can I have your email plz