Internetové kníhkupectvo Legenda

Telefón: 032 776 2190
 
 
Top trinásť
Najpredávanejšie tituly na Legenda Online:
  1. Peter a Lucia, Empedokles z Akraganta
    Romain Rolland,
  2. Žiješ iba dvakrát
    Dominik Dán,
  3. Nie na ústa
    Maxim E. Matkin,
  4. Keby som bola bosorka
    Gabriela Futová, Milan Šútovec
  5. Také bolo PKO
    Juraj Šebo,
  6. Jak drahé je zdarma
    Dan Ariely,
  7. Odvaha skočiť
    Pema Chödrönová
  8. Nauč ma umierať
    Pavel "Hirax" Baričák,
  9. Zmluva podľa Paganiniho
    Lars Kepler,
  10. Príhody pohotovostného lekára
    K. Mika,
  11. Nataša Gollová
    Aleš Cibulka
  12. Okamžiky rozhodnutí
    George Walker Bush,
  13. Indická princezná
    Javier Moro,
Legenda > Knihy > Knihy v angličtine | Akademické > Matematika > B Everitt - A Handbook of Statistical Analyses Using R

A Handbook of Statistical Analyses Using R

B Everitt

 

Cena: 47,50 € (1 430,99 Sk)

Ľutujeme, ale produkt je vypredaný a nie je ho možné momentálne objednať.
Taylor & Francis, 2009
Mäkká väzba | 376 strán | anglický jazyk
ISBN: 9781420079333 | EAN: 9781420079333 | Kat. č. 82369
 

O titule

A Proven Guide for Easily Using R to Effectively Analyze Data Like its bestselling predecessor, A Handbook of Statistical Analyses Using R, Second Edition provides a guide to data analysis using the R system for statistical computing. Each chapter includes a brief account of the relevant statistical background, along with appropriate references. New to the Second Edition New chapters on graphical displays, generalized additive models, and simultaneous inference A new section on generalized linear mixed models that completes the discussion on the analysis of longitudinal data where the response variable does not have a normal distribution New examples and additional exercises in several chapters A new version of the HSAUR package (HSAUR2), which is available from CRAN This edition continues to offer straightforward descriptions of how to conduct a range of statistical analyses using R, from simple inference to recursive partitioning to cluster analysis. Focusing on how to use R and interpret the results, it provides students and researchers in many disciplines with a self-contained means of using R to analyze their data.


 

 
TOPlist