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  • Опубликовано: 14 янв 2025

Комментарии • 96

  • @wayarberry
    @wayarberry 3 года назад +6

    Outstanding. Tremendous functionality accessible with relatively few, simple commands. Top notch graphics as well. Keep up the good work!

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  3 года назад +1

      Many thanks for a positive feedback, William! That's why I love R, it makes life easier 😊 really happy that it is useful to more people than just me.

  • @muhammedhadedy4570
    @muhammedhadedy4570 Год назад +1

    Wow, what an amazing tutorial. I've been using R for 5 years, and I've never used the dlookr package before. Your explanation was simple, focused and directed to the point, just as usual.
    Thank you so much for your great videos. I really appreciate your work.
    😊😊😊😊😊😊.

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  Год назад

      Thank you very much for nice feedback! I am glad you liked it. I have since then produced reviews on even more useful packages, "gtsummary" is one of the best. You might like it too.

    • @martinvidalon
      @martinvidalon 8 месяцев назад

      Eso es lo maravilloso del universo de R, uno nunca sabes si te encontrarás con un dinosaurio.

  • @sandiprijal9521
    @sandiprijal9521 3 года назад +1

    Why didn't I came across you channel till now? This is phenomenal

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  3 года назад

      Thanks a ton, Sandip! That means a lot! My channel is still very young and I hope I'll produce more useful content. Cheers!

  • @buraktiras93
    @buraktiras93 2 года назад

    An overall thanks for all the videos uploaded into this channel!

  • @imanol2506
    @imanol2506 10 месяцев назад

    This (specially this!) is marvelous, but also the rest of the series of explanatory videos. Congrats!

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  10 месяцев назад

      Glad you like them! Since they are already a bit old, you might find the more recent videos also useful. Thanks for watching!

  • @syhusada1130
    @syhusada1130 2 года назад

    I've been using data explorer and dlookr more in my learning journey thanks to you sir.

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  2 года назад

      Glad to hear that! More exiting package will follow! I just do it slowly due to my day job. Thanks for your support and Cheers 😊

  • @bj3768
    @bj3768 2 года назад

    I really hope your channel will grow in the future. Your videos are very helpful to me.

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  2 года назад +1

      I am very glad to hear that! Thanks! And thanks for watching, it's the best support!

  • @francismason3796
    @francismason3796 2 года назад

    Fanatastic video and code examples.

  • @kydaviddoyle1969
    @kydaviddoyle1969 2 месяца назад

    Great video. I will add a wise take on outliers..... “Treat outliers like children …… correct them when necessary, but never throw them out.” Ed Gilroy, formerly Statistician at United States Geological Survey

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  2 месяца назад

      That’s a brilliant insight! 😀 thanks mate 🙏 I’ll use it to tell my colleagues who take outliers either too seriously or too not-seriously 👍

  • @dasrotrad
    @dasrotrad 2 года назад

    What a great presentation. I love this package. Thank you for introducing it and descdribing it in such an easy to follow presentation.

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  2 года назад

      Thanks, Robert! I also love dlookr. I actually have only done reviews on packages I do enjoy and use everyday. So, you might find my other package reviews also useful. I thing the gtsummary is one of the most capable.

  • @angezoclanclounon1751
    @angezoclanclounon1751 3 года назад +1

    Thanks a lot Dr. Yury. Nice and helpful video.

  • @wasafisafi612
    @wasafisafi612 5 месяцев назад

    Thank you so much for the video

  • @fatthi2025
    @fatthi2025 Год назад

    Many thanks for your help

  • @haraldurkarlsson1147
    @haraldurkarlsson1147 3 года назад +1

    This is great stuff!

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  3 года назад

      Thanks for the feedback, Haraldur! You might also like the Deeper Exploratory Analysis Video. It's long, but very dense with lots of nice functions, including and similar to dlookr

  • @martinvidalon
    @martinvidalon 8 месяцев назад

    Excelente

  • @mkklindhardt
    @mkklindhardt 5 месяцев назад

    I love your videos and screencasts! They are very educational and still very high-level.
    Could you please make a video on performing meta-analysis in R using for example the metafor or other packages? Especially covering the choices one has to make concerning types of meta-analysis: e.g. fixed-effects, random-effects or bayesian meta-analysis of different types of response variables, modulators and outcomes. It could also be cool if you covered the considerations of multivariate and multilevel meta-analysis as well as composite outcome meta-analysis, such as the concept of "borrowing of strength" (BoS) in meta-analysis when dealing with multiple outcomes or studies with small sample sizes.

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  5 месяцев назад

      Thanks for such a lovely feedback! The meta-analysis videos are definetely on my list! And they will be done. But the list still has a few topics before it, like all kind of models. Thus, please, don't expect them too soon, but stay tuned as they are important for my work and will be produced in the future!

  • @statlab_stat.solution
    @statlab_stat.solution Год назад

    Just awesome 👍

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  Год назад +1

      Thanks a lot 😊 I love dlookr too! You might also like the gtsummary review, if you did not see my video on it already. Thanks for watching!

  • @kyalosevens1268
    @kyalosevens1268 2 года назад

    Thanks for this one

  • @SadatQuayiumApu
    @SadatQuayiumApu 3 года назад

    Thank you very much for the videos!
    These are life changing indeed.

  • @hendrikpehlke4973
    @hendrikpehlke4973 7 месяцев назад

    Wow! Thank you! So many important informations. I have to watch this video several times. But one question: In which order would you use the packages "janitor" and "dlookr". Would be interesting to teach people how to load and handle "dirty" excel table, fix some excel problems (e.g. date as numbers or entries like "no data" in numerical columns etc) and if those problems are fixed to use "dlookr" to diagnose, explore and repair the data.

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  7 месяцев назад

      Thanks a lot for your nice reply, Hendrik! I would use janitor first and dlookr on top. I guess you already have seen the janitor video on my channel. If not, feel free ;) I also have one video on tidy data, where I show the dirty table, but there is not much of R programming. Thanks for watching!

  • @landoska
    @landoska 3 года назад +1

    Great! I love your videos. Please cover mixed models 🙏🤓

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  3 года назад +2

      Thanks a lot, landoska! Noted! Funny enough, I do lots of mixed models in my job - medicine statistician.

  • @yaoliao3517
    @yaoliao3517 3 года назад

    Really Really love your tutorial!!

  • @angvl8793
    @angvl8793 2 года назад

    Great video and great analysis ! Thank you very much!
    I also like package("recipes") and package("vtreat").

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  2 года назад +1

      You are welcome. Thanks for the tipps, I'll check them out

  • @davidjackson7675
    @davidjackson7675 3 года назад +1

    This a awe·some package.

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  3 года назад

      Thanks David! I hoped this would be helpful not only to me!

  • @SergioUribe
    @SergioUribe 3 года назад

    great package, kudos and keep the work!

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  3 года назад

      Thanks a lot Sergio for such a nice feedback! I will continue! Cheers!

  • @chacmool2581
    @chacmool2581 2 года назад

    8:19 plot_normality()
    Is there a way of displaying qq plots too for the log and sqrt transformations? Can we request other fancier transforms such as Box-Cox or Yeo-Johnson?
    Separate but related question. What package looks at a predictor and returns the transformation that best normalizes its distribution?

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  2 года назад

      hey, sure, I'd use:
      > ggpubr::ggqqplot(log(mtcars$mpg))
      > ggpubr::ggqqplot(sqrt(mtcars$mpg))

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  2 года назад

      and yes, sure, there is any transformation possible. Just type "?plot_normality()" and look inside. Hier is an example: mtcars %>% plot_normality(mpg, right = "Box-Cox")

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  2 года назад

      these are transformations: "log", "sqrt", "log+1", "log+a", "1/x", "x^2", "x^3", "Box-Cox", "Yeo-Johnson" possible with plot_normality().

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  2 года назад

      To your last question: I am not aware of any package for that, but there might be one. However, I am not a big fan of transforming the data because you kill interpretability. Log-transform is the most harmless in my opinion. I think it's a better way to use the correct model to fit your distribution.

    • @chacmool2581
      @chacmool2581 2 года назад

      @@yuzaR-Data-Science Thanks a lot. Look forward to a vid on Decision Trees and Random Forests with R packages... 🧁

  • @RUJedi
    @RUJedi 10 месяцев назад

    Amazing video. This will be a great package for my EDA work. Many thanks.
    Is everything ok with your website in the video description? I keep getting a 404 Site Not Found error page. Same result when I try similar links in a few of your other videos.... ?

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  10 месяцев назад +1

      Thanks, I did a follow up with many more packages „deep exploratory analysis“ .
      My blog was shut down because they want me to pay for increasing traffic. I refuse to pay for doing something good for the world in an open source software. So, it might take me some time to find the alternative. But that’s not a problem because the blog is actually the script for videos word by word. And RUclips is still free.

    • @RUJedi
      @RUJedi 10 месяцев назад

      @@yuzaR-Data-Science makes total sense. Have you considered moving your blog over to Github Pages, which is free and should play nicely with your script as blog or code or code on blog pages?

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  10 месяцев назад +1

      I actually even tried to move it to github pages myself, but something was off, and I could not go online. I am not an IT guy, so I am waiting for a friend to have a look at it and may be help me to solve it. but as you can imagine we both me and my mate have an normal everyday job and life, so the priorities are often not on the blog. anyway, thanks for your support!

  • @GreenManXY
    @GreenManXY 2 года назад

    How do you get the results in the same window as your code? And the ability to preview graphs?

  • @M.Nagah89
    @M.Nagah89 7 месяцев назад

    I have a question plz, Why did we put “temp” as a predictor to imputate missing values in Ozone variable ?

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  7 месяцев назад

      simply as an example of a predictor

    • @M.Nagah89
      @M.Nagah89 7 месяцев назад

      @@yuzaR-Data-Science Am sorry, I cant get it !

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  7 месяцев назад

      sorry, what exactly can't you get?

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  7 месяцев назад +1

      sorry, what exactly can't you get?

    • @M.Nagah89
      @M.Nagah89 7 месяцев назад

      @@yuzaR-Data-Science Do we have to put a predictor to impute missing values in a variable?

  • @haraldurkarlsson1147
    @haraldurkarlsson1147 3 года назад

    Yury,
    I noticed that your code for imputing outliers in the diamonds data repeats and is thus prime for a for loop, apply or map function (this is roughly 14 minutes into the video). I did not try to get too fancy so I wrote a short for loop to iterate over the methods. The function generates the plots one after the other. I thought I might share this with you and your viewers. Here is my rather crude code:
    imp_na_method

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  3 года назад

      Thanks for the for loop, mate! I have to say, nowadays I mostly use missRanger, because it's a very fancy and multiple imputation. I also always check the imputed values and they never disappointed so far.

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  3 года назад

      And thanks a lot for a nice feedback! I am glad videos are useful :)

  • @chacmool2581
    @chacmool2581 2 года назад

    Is dlookr the best package for outlier diagnostics and correction?

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  2 года назад +1

      What we call "the best", depends on a lot ... but, I think, it's certainly useful enough to stop looking for other packages :)

    • @chacmool2581
      @chacmool2581 2 года назад

      @@yuzaR-Data-Science What's the bestest, most prettiest decision-tree visualization package? Rpart and the like all look pretty industrial.

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  2 года назад

      @@chacmool2581 Don't know, because I don't use decision-trees

  • @cesarpina4115
    @cesarpina4115 9 месяцев назад

    Amazing video!! thanks a lot!!!! but the code link is broke D:

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  9 месяцев назад

      Thanks for the feedback! Sorry for that, man! Netlify shut down my blog since they want me to pay for increased traffic. I refuse to pay for doing something useful for the world (without earning absolutely nothing) and since R is open source. But I want to reopen it ASAP, as soon as I find an alternative for Netlify. It'll take some time though, because I am not an IT guy. FYI: my blog is actually the script for the video, word by word, code by code. Thanks for understanding! But if you want the access quicker, consider to join the channel and becoming a member. For members I provide the code immediately. Cheers!

  • @CanDoSo_org
    @CanDoSo_org Год назад

    I got an error: "Error in html_paged_target_numerical(reportData, targetVariable, base_family = base_family) :
    object 'index' not found" when I ran
    airquality %>%

    eda_paged_report(
    target="Temp",
    output_format = "html"
    )

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  Год назад

      I don't know what's wrong with this dataset ... may be it's a numeric variable Temp. It does not work at my computer either. However, I tried iris dataset, and it worked flawlessly:
      iris %>%
      eda_paged_report(
      target="Species",
      output_format = "html"
      )
      If you don't figure it out by yourself, report a bug to the package github page

    • @CanDoSo_org
      @CanDoSo_org Год назад

      @@yuzaR-Data-Science Thanks, Yuza.

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  Год назад

      Happy to help

  • @haraldurkarlsson1147
    @haraldurkarlsson1147 3 года назад

    Yury,
    I have duplicated your code and it basically reproduces with a few exceptions. For instance the correlation plot is not a matrix with ellipses but rather a colored chart with the r values. I guess as the package gets updated we will see some variations. Still good stuff - thanks.
    P. S. I ran my code in normal r-session with script rather than in RMarkdown.

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  3 года назад

      Sure, usually, they get better. It's just amazing, that this is open source :)

  • @kennethgottfredsen767
    @kennethgottfredsen767 Год назад

    Doesnt work with Quarto, sadly.

    • @yuzaR-Data-Science
      @yuzaR-Data-Science  Год назад +1

      Oh, good to know! I didn’t try it with quarto

    • @RUJedi
      @RUJedi 10 месяцев назад

      What parts (still) do not work with Quarto?