| Type: | Package | 
| Title: | Interactive Model Exploration using 'GGobi' | 
| Version: | 0.3.1 | 
| Author: | Hadley Wickham <h.wickham@gmail.com> | 
| Maintainer: | Hadley Wickham <h.wickham@gmail.com> | 
| Description: | Exploratory model analysis with http://ggobi.org. Fit and graphical explore ensembles of linear models. | 
| License: | MIT + file LICENSE | 
| URL: | https://github.com/hadley/meifly | 
| BugReports: | https://github.com/hadley/meifly/issues | 
| Imports: | leaps, MASS, plyr | 
| Encoding: | UTF-8 | 
| RoxygenNote: | 7.2.0 | 
| NeedsCompilation: | no | 
| Packaged: | 2022-05-20 16:23:54 UTC; hadleywickham | 
| Repository: | CRAN | 
| Date/Publication: | 2022-05-20 16:40:02 UTC | 
Calculcate coefficients for all models in ensemble. Returns raw, t-value, absolute t-value, and standardised coefficent values.
Description
Calculcate coefficients for all models in ensemble. Returns raw, t-value, absolute t-value, and standardised coefficent values.
Usage
## S3 method for class 'ensemble'
coef(object, ...)
Arguments
| object | ensemble of models | 
| ... | other arguments ignored | 
General ensemble of models from models in global workspace'
Description
General ensemble of models from models in global workspace'
Usage
findmodels(modeltype = "lm", dataset, pattern)
Arguments
| modeltype | model class | 
| dataset | if specified, all models must use this dataset | 
| pattern | pattern of model object names to match | 
Fit all combinations of x variables ($2^p$).
Description
This technique generalises fitbest.  While it is much
slower it will work for any type of model.
Usage
fitall(y, x, method = "lm", ...)
Arguments
| y | vector y values | 
| x | matrix of x values | 
| method | |
| ... | other arguments passed on to  | 
Examples
y <- swiss$Fertility
x <- swiss[, -1]
mods <- fitall(y, x, "lm")
Use the leaps package to generate the best subsets.
Description
Use the leaps package to generate the best subsets.
Usage
fitbest(formula, data, nbest = 10, ...)
Arguments
| formula | model formula | 
| data | data frame | 
| nbest | number of subsets of each size to record | 
| ... | other arguments passed to  | 
Examples
y <- swiss$Fertility
mods <- fitbest(Fertility ~ ., swiss)
Generate linear models by bootstrapping observations
Description
Generate linear models by bootstrapping observations
Usage
lmboot(formula, data, n = 100)
Arguments
| formula | model formula | 
| data | data set | 
| n | number of bootstrapped data sets to generate | 
Interactive model ensemble exploration.
Description
Interactive model ensemble exploration.
Create a new ensemble of models.
Description
Create a new ensemble of models.
Usage
new_ensemble(models, data)
Arguments
| models | list of models | 
| data | associated data frame | 
Calculate residuals for all models in ensemble.
Description
Calculate residuals for all models in ensemble.
Usage
## S3 method for class 'ensemble'
residuals(object, ...)
Arguments
| object | ensemble of models | 
| ... | other arguments ignored | 
Value
data.frame of class resid_ensemble
See Also
Returns degrees of freedom, log likelihood, R-squared, AIC, BIC and adjusted R-squared.
Description
Returns degrees of freedom, log likelihood, R-squared, AIC, BIC and adjusted R-squared.
Usage
## S3 method for class 'ensemble'
summary(object, ...)
Arguments
| object | ensemble of models | 
| ... | other arguments ignored | 
Summarise residuals from ensemble.
Description
Summarise residuals from ensemble.
Usage
## S3 method for class 'resid_ensemble'
summary(object, data = attr(object, "data"), ...)
Arguments
| object | model residuals from  | 
| data | associated data set | 
| ... | other arguments ignored | 
Summarise variable ensemble.
Description
Provides variable level statistics.
Usage
## S3 method for class 'variable_ensemble'
summary(object, ...)
Arguments
| object | ensemble of models | 
| ... | other arguments ignored |