Miscellaneous plotting functions for lca and lca.rh type regression objects. Plot of forecasted Lee-Carter models based on a series of fitted model objects
Comparison plots of the forecasted period effect and life expectancy of a series of fitted Lee-Carter models
matflc.plot(lca.obj, lca.base, at = 65, label = NULL, ...)
lca.obj |
a list of fitted model objects of class |
lca.base |
base fitted model object of class |
at |
target age at which to calculate life expectancy |
label |
a data label |
... |
additional arguments to |
The function makes use of a univariate ARIMA process (i.e. random walk with drift) in order to extrapolate the period effects k_t of the model objects in lca.obj
, which is illustrated by the calendar years together with the corresponding forecasted life expectancy for a given age.
Plot
Z. Butt and S. Haberman and H. L. Shang
rfp.cmi <- dd.rfp(dd.cmi.pens, c(0.5, 1.2, -0.7, 2.5)) mod6e <- elca.rh(rfp.cmi, age=50:70, interpolate=TRUE, dec=3) # plot with original (fitted) base values matflc.plot(mod6e$lca, label='RFP CMI') # use a standard LC model fitting as base values mod6 <- lca.rh(dd.cmi.pens, mod='lc', error='gauss', max.age = 70, interpolate=TRUE) matflc.plot(mod6e$lca, mod6, label='RFP CMI')
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