| Type: | Package | 
| Title: | Estimating and Testing Intergenerational Social Mobility Effect | 
| Version: | 0.1.7 | 
| Maintainer: | Jiahui Xu <jpx5053@psu.edu> | 
| Description: | Estimate and test inter-generational social mobility effect on an outcome with cross-sectional or longitudinal data. | 
| Imports: | survey, gee, dplyr, lme4, stringr, parameters | 
| License: | GPL-2 | 
| Encoding: | UTF-8 | 
| LazyData: | true | 
| RoxygenNote: | 7.2.1 | 
| NeedsCompilation: | no | 
| Packaged: | 2022-09-26 09:33:03 UTC; xujiahui | 
| Author: | Jiahui Xu [aut, cre], Liying Luo [aut] | 
| Depends: | R (≥ 3.5.0) | 
| Repository: | CRAN | 
| Date/Publication: | 2022-09-26 15:10:08 UTC | 
Estimate and Test Inter-generational Social Mobility Effect on an Outcome
Description
This function implements the mobility contrast model designed for estimating and testing inter-generational mobility effect on an outcome.
Usage
mcm(
  formula,
  data,
  weights = 1,
  na.action = na.omit,
  origin,
  destination,
  family = gaussian(),
  contrasts = NULL,
  gee = FALSE,
  id = NULL,
  corstr = "exchangeable",
  displayresult = TRUE,
  ...
)
Arguments
| formula | an object of class "formula" (or one that can
be coerced to that class): a symbolic description of the model
to be fitted. A typical model used in studying social mobility
takes the form  | 
| data | an optional data frame, list or environment (or object coercible by as.data.frame to a data frame) containing the variables in the model. If not found in data, the variables are taken from environment(formula), typically the environment from which the function is called. | 
| weights | an optional vector of unit-level sampling weights to be used in analysis. Should be NULL or a numeric vector. | 
| na.action | a function which indicates what should
happen when the data contain NAs.The default is set by the
 | 
| origin | a character indicating the column name of origin. | 
| destination | a character indicating the column name of destination. | 
| family | a character string, a function or the result of a call to a family function describing the error distribution and link function to be used in the model. | 
| contrasts | an optional list. The default is set as sum-to-zero contrast. | 
| gee | logical. Should gee be used in estimating the model? | 
| id | a vector which identifies the clusters, which is required while
 | 
| corstr | a character string specifying
the correlation structure.
The following are permitted:  | 
| displayresult | logical. Should model results be displayed
after estimation. The default is  | 
| ... | additional arguments to be passed to the function. | 
Value
A list containing:
| model | Fitted generalized models of outcome on predictors.
See more on function  | 
| origin_main | Estimated main effects of origin. | 
| destination_main | Estimated main effects of destination. | 
| mobility_estimates | Estimated mobility effects. | 
| mobility_se | Standard errors of the estimated mobility effects. | 
| mobility_sig | Statistical significance of the the estimated mobility effects. | 
Examples
library(MCM)
data('sim_moderate_het')
mcm(response ~ origin * destination, data = sim_moderate_het,
    origin = "origin",destination="destination")
Estimate and Test Inter-generational Mobility Effect with Longitudinal Data
Description
This function fits a multilevel mobility contrast model to estimate and test inter-generational mobility effect on an outcome in longitudinal data.
Usage
mcm_lmer(
  formula,
  data = NULL,
  REML = TRUE,
  control = lme4::lmerControl(),
  start = NULL,
  verbose = 0L,
  subset,
  weights,
  na.action,
  offset,
  contrasts = NULL,
  devFunOnly = FALSE,
  origin = NULL,
  destination = NULL,
  time = NULL,
  displayresult = TRUE,
  ...
)
Arguments
| formula | Inherit the function form from  | 
| data | an optional data frame, list or environment (or object coercible by as.data.frame to a data frame) containing the variables in the model. If not found in data, the variables are taken from environment(formula), typically the environment from which the function is called. | 
| REML | logical. Should the estimates be chosen be optimize the restricted log-likelihood (REML) criterial (as opposed to the log-likelihood)? | 
| control | Inherit from  | 
| start | Inherit from  | 
| verbose | Inherit from  | 
| subset | optional expression selecting the subset of the rows of data to fit the model. | 
| weights | an optional vector of ‘prior weights’ to be used in the fitting process. Should be NULL or a numeric vector. | 
| na.action | a function which indicates what should
happen when the data contain NAs.The default is set by the
 | 
| offset | Inherit from  | 
| contrasts | an optional list. The default is set as sum-to-zero contrast. | 
| devFunOnly | logical - return only the deviance evaluation function. | 
| origin | a character indicating the column name of origin. | 
| destination | a character indicating the column name of destination. | 
| time | a character indicating the time when individual was observed | 
| displayresult | logical. Should model results be displayed
after estimation. The default is  | 
| ... | additional arguments to be passed to the function. | 
Value
A list containing:
| model | Fitted generalized models of outcome on predictors.
See more on function  | 
| estimates | Estimated mobility effects. | 
| se | Standard errors of the estimated mobility effects. | 
| significance | Statistical significance of the the estimated mobility effects. | 
| esti_3way | Estimated mobility effects conditional on specific age. | 
| se_3way | Standard errors of the estimated mobility effects conditional specific age. | 
| sig_3way | Statistical significance of the the estimated mobility effects conditional on age. | 
Examples
library(MCM)
library(lme4)
data("sim_datlmer")
fit_mcm_lmer <- mcm_lmer(yij ~ origin*destination*age +
                           (1|id), data = sim_datlmer,
                         origin = "origin",
                         destination = "destination",
                         time = "age")
Simulated Data Studying Social Mobility (Longitudinal)
Description
This is a simulated data used to study social mobility under longitudinal setting.
Usage
data("sim_datlmer")Format
A data frame with 50000 observations on the following 14 variables.
- id
- an ordered factor with levels 
- obs
- a numeric vector 
- eij
- a numeric vector 
- origin
- a factor with levels - 1- 2- 3
- destination
- a factor with levels - 1- 2- 3
- origin_1
- a numeric vector 
- origin_2
- a numeric vector 
- origin_3
- a numeric vector 
- destination_1
- a numeric vector 
- destination_2
- a numeric vector 
- destination_3
- a numeric vector 
- yij
- a numeric vector 
- age
- a numeric vector 
- dir
- a factor with levels - 0- 1- 2
Examples
data(sim_datlmer)
## maybe str(sim_datlmer) ; plot(sim_datlmer) ...
Simulated Data Studying Social Mobility (Cross-Sectional)
Description
This is a simulated data used to study social mobility. In this dataset, it is assumed that there exists a moderate social mobility.
Usage
data("sim_moderate_het")Format
A data frame with 30,000 observations on the following 6 variables.
- response
- a numeric vector indicating the outcome variable 
- origin
- a numeric vector indicating parents' socioeconomic status 
- destination
- a numeric vector indicating child' socioeconomic status 
- mobility
- a numeric vector indicating if child's socioeconomic status is diffferent from that of parents'. 
- upmob
- a numeric vector indicating child' socioeconomic status is higher than that of parents'. 
- dowmob
- a numeric vector indicating child' socioeconomic status is lower than that of parents'. 
Examples
data(sim_moderate_het)
head(sim_moderate_het)