The inverse Gaussian distribution is a positively skewed probability model that has received great attention in the last 20 years. Recently, a family that generalizes this model called inverse Gaussian type distributions has been developed. The new R package named ig has been designed to analyze data from inverse Gaussian type distributions. This package contains basic probabilistic functions, lifetime indicators and a random number generator from this model. Also, parameter estimates and diagnostics analysis can be obtained using likelihood methods by means of this package. In addition, goodness-of-fit methods are implemented in order to detect the suitability of the model to the data. The capabilities and features of the ig package are illustrated using simulated and real data sets. Furthermore, some new results related to the inverse Gaussian type distribution are also obtained. Moreover, a simulation study is conducted for evaluating the estimation method implemented in the ig package.
[1]
G. Molenberghs,et al.
Linear Mixed Models for Longitudinal Data
,
2001
.
[2]
N. Balakrishnan,et al.
A new class of inverse Gaussian type distributions
,
2008
.
[3]
S. Kotz,et al.
Symmetric Multivariate and Related Distributions
,
1989
.
[4]
F. Famoye.
Continuous Univariate Distributions, Volume 1
,
1994
.
[5]
G. S. Mudholkar,et al.
The Inverse Gaussian Models: Analogues of Symmetry, Skewness and Kurtosis
,
2002
.
[6]
J. Leroy Folks,et al.
The Inverse Gaussian Distribution
,
1989
.