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easyanova (version 1.1)

Analysis of variance and other important complementary analyzes

Description

Perform analysis of variance and other important complementary analyzes. The functions are easy to use. Performs analysis in various designs, with balanced and unbalanced data.

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Version

Install

install.packages('easyanova')

Monthly Downloads

802

Version

1.1

License

GPL-2

Maintainer

Emmanuel Arnhold

Last Published

August 9th, 2012

Functions in easyanova (1.1)

data12

data12: Pimentel Gomes and Garcia (2002): page 202
data13

data13: Cruz and Carneiro (2006): page 575
data10

data10: Kaps and Lamberson (2009): page 395
data8

data8: Kaps and Lamberson (2009): page 386
ea6

Analysis of variance with a covariate
data7

data7: Kaps and Lamberson (2009): page 409
data6

data6: Pimentel Gomes and Garcia (2002): page 127
data2

data2: Kaps and Lamberson (2009): page 313: randomizad block design
ea5

Analysis of variance in factorial in split.plot designs (mixed model)
ea1

Analysis of variance in simple designs
data5

data5: Kaps and Lamberson (2009): page 361
ea4

Analysis of variance in triple factorial designs
ea7

Analysis of variance in incomplete blocks designs
data11

data11: Pimentel Gomes and Garcia (2002): page 199
easyanova-package

Analysis of variance and other important complementary analyzes
data1

data1: Kaps and Lamberson(2009): page 252
data14

data14: Sampaio (2009): page173
data16

data16: Sampaio (2009): page164
data17

data17: Sanders and Gaynor (1987)
ea8

Analysis of variance in switchback design
data3

data3: Kaps and Lamberson (2009): page 347
ea2

Analysis of variance in double factorial designs
data9

data9: Sampaio (2010): page 67
data15

data15: Pimentel Gomes and Garcia (2002): page 211
data4

data4: Kaps and Lamberson (2009): page 349
ea3

Analysis of variance in split.plot designs (mixed model)