glmnet webinar May 3, 2013

  Рет қаралды 26,373

ProfTrevorHastie

ProfTrevorHastie

Күн бұрын

Webinar on Sparse Linear Models with demonstrations in GLMNET,
presented by Trevor Hastie.
Stanford, May 3, 2013

Пікірлер: 10
@apanapane
@apanapane 8 жыл бұрын
This was very helpful. Thank you for the great presentation. Also thanks to the R User Group for organising the event.
@ostapbem4218
@ostapbem4218 6 жыл бұрын
Thank you so much ! It's realy competent info, and great that we have the opportunity to get it !
@simonhenningnehls7536
@simonhenningnehls7536 10 жыл бұрын
Dataset and further info to be found at the "shatterline-blog", topic: "regularization-predictive-modeling-beyond-ordinary-least-squares-fit"
@remitian8980
@remitian8980 10 жыл бұрын
Great! Very helpful introduction to glmnet!
@autripat
@autripat 11 жыл бұрын
Dr Hastie, could you please post a link to the hiv.rda data set.
@GabrielTeku
@GabrielTeku 6 жыл бұрын
Thanks for this really cool and helpful presentation.
@autripat
@autripat 10 жыл бұрын
Simon, thanks. That's my own blog :-)
@samirhuseyn
@samirhuseyn 7 жыл бұрын
was very helpful, thanks!
@kernel_cataclysm7306
@kernel_cataclysm7306 8 жыл бұрын
Is it possible to do censored regression models in glmnet?
@kuteesabisaso6848
@kuteesabisaso6848 7 жыл бұрын
AOB: Anyone noticed that Trevor and Rob resemble?
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