marginal_effects | R Documentation |
Returns the estimated effect of a variable. The effect accounts for both sides
of the market. If the given variable belongs only to the demand side, the name of
result is prefixed by "D_"
. If the given variable belongs only to the supply
side, the name of result is prefixed by "S_"
. If the variable can be found
both sides, the result name is prefixed by "B_"
.
shortage_marginal(fit, variable, model, parameters)
shortage_probability_marginal(
fit,
variable,
aggregate = "mean",
model,
parameters
)
## S4 method for signature 'missing,ANY,market_model,ANY'
shortage_marginal(variable, model, parameters)
## S4 method for signature 'missing,ANY,ANY,market_model,ANY'
shortage_probability_marginal(variable, aggregate, model, parameters)
## S4 method for signature 'missing,ANY,market_model,ANY'
shortage_marginal(variable, model, parameters)
## S4 method for signature 'market_fit,ANY,missing,missing'
shortage_marginal(fit, variable)
## S4 method for signature 'market_fit,ANY,ANY,missing,missing'
shortage_probability_marginal(fit, variable, aggregate)
fit |
A fitted market model. |
variable |
Variable name for which the effect is calculated. |
model |
A market model object. |
parameters |
A vector of parameters. |
aggregate |
Mode of aggregation. Valid options are "mean" (the default) and "at_the_mean". |
The estimated effect of the passed variable.
shortage_marginal()
: Marginal effect on market system
Returns the estimated marginal effect of a variable on the market system. For a
system variable x
with demand coefficient \beta_{d, x}
and supply
coefficient \beta_{s, x}
, the marginal effect on the market system is
given by
M_{x} = \frac{\beta_{d, x} - \beta_{s, x}}{\sqrt{\sigma_{d}^{2} +
\sigma_{s}^{2} - 2 \rho_{ds} \sigma_{d} \sigma_{s}}}.
shortage_probability_marginal()
: Marginal effect on shortage probabilities
Returns the estimated marginal effect of a variable on the probability of
observing a shortage state. The mean marginal effect (aggregate = "mean"
) on
the shortage probability is given by
M_{x} \mathrm{E} \phi\left(\frac{D - S}{\sqrt{\sigma_{d}^2 + \sigma_{s}^2 - 2 rho \sigma_{d} \sigma_{s}}}\right)
.
and the marginal effect at the mean (aggregate = "at_the_mean"
) by
M_{x} \phi\left(\mathrm{E}\frac{D - S}{\sqrt{\sigma_{d}^2 + \sigma_{s}^2 - 2 rho \sigma_{d} \sigma_{s}}}\right)
where M_{x}
is the marginal effect on the system, D
is the demanded
quantity, S
the supplied quantity, and \phi
is the standard normal
density.
# estimate a model using the houses dataset
fit <- diseq_deterministic_adjustment(
HS | RM | ID | TREND ~
RM + TREND + W + CSHS + L1RM + L2RM + MONTH |
RM + TREND + W + L1RM + MA6DSF + MA3DHF + MONTH,
fair_houses(),
correlated_shocks = FALSE,
estimation_options = list(control = list(maxit = 1e+5))
)
# mean marginal effect of variable "RM" on the shortage probabilities
#' shortage_probability_marginal(fit, "RM")
# marginal effect at the mean of variable "RM" on the shortage probabilities
shortage_probability_marginal(fit, "CSHS", aggregate = "at_the_mean")
# marginal effect of variable "RM" on the system
shortage_marginal(fit, "RM")
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