[Statlist] Next talk: Friday, 24.05.2019, with Bin Yu, UC Berkeley

Maurer Letizia |et|z|@m@urer @end|ng |rom ethz@ch
Mon May 20 10:12:00 CEST 2019


E-mail from the  Statlist using stat.ch<mailto:Statlist using stat.ch>  mailing list
_______________________________________________
ETH and University of Zurich

Organisers:

Proff. P. Bühlmann - L. Held - T. Hothorn - M. Maathuis -
N. Meinshausen - S. van de Geer - M. Wolf

****************************************************************************

We are glad to announce the following talk:

Friday, 24.05.2019, at 15.15 h  ETH Zurich, HG G19.1
with Bin Yu, UC Berkeley
*****************************************************************************


Title:

Three principles of data science: predictability, computability, and stability (PCS)

Abstract:

In this talk, I'd like to discuss the intertwining importance and connections of three principles of data science in the title and the PCS workflow that is built on the three principles. The principles will be demonstrated in the context of collaborative projects in genomics for interpretable data results and testable hypothesis generation. If time allows, I will present proposed PCS inference that includes perturbation intervals and PCS hypothesis testing. The PCS inference uses prediction screening and takes into account both data and model perturbations. Finally, a PCS documentation is proposed based on Rmarkdown, iPython, or Jupyter Notebook, with publicly available, reproducible codes and narratives to back up human choices made throughout an analysis. The PCS workflow and documentation are demonstrated in a genomics case study available on Zenodo.


This abstract is also to be found under the following link: http://stat.ethz.ch/events/research_seminar

*******************************************************************************************************************

Statlist mailing list

	[[alternative HTML version deleted]]



More information about the Statlist mailing list