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Slide 1Stochastic DEA: Myths and misconceptions Timo Kuosmanen (HSE & MTT) Andrew Johnson (Texas A&M University) Mika Kortelainen (University of Manchester) XI EWEPA…
Slide 1Analysis of Gene Expression Data Rainer Breitling [email protected] Bioinformatics Research Centre and Institute of Biomedical and Life Sciences University…
Slide 1CRISP-DM (required for cw, useful for any project…) Based on Intro to Data Mining: CRISP-DM Prof Chris Clifton, Purdue Univ Thanks also to Laura Squier, SPSS for…
Slide 1Numerical Solution of an Inverse Problem in Size-Structured Population Dynamics Marie Doumic (projet BANG – INRIA & ENS) Torino – May 19th, 2008 with B. PERTHAME…
Slide 11 2014-5-31 Network The Future Jintong Lin 24 Oct 2009, BUPT Slide 2 2014-5-31 Outline Current Status of Networks Emerging Supportive Technologies End-to-End Broadband…