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algo.bayesLatestTimepoint(disProgObj, timePoint = NULL,
control = list(b = 0, w = 6, actY = TRUE,alpha=0.05))
algo.bayes(disProgObj, control = list(range = range,
b = 0, w = 6, actY = TRUE,alpha=0.05))
algo.bayes1(disProgObj, control = list(range = range))
algo.bayes2(disProgObj, control = list(range = range))
algo.bayes3(disProgObj, control = list(range = range))
algo.bayes LatestTimepoint
. The
default is to use the latest timepointrange
determines the desired
timepoints which should be evaluated, b
describes the number of years to go
back for the reference values, w
is the half window width for talgo.bayesLatestTimepoint
returns a list of class survRes
(surveillance result), which
includes the alarm value for recognizing an
outbreak (1 for alarm, 0 for no alarm), the threshold value for recognizing the alarm and
the input object of class disProg.
algo.bayes
gives a list of class survRes
which includes the vector
of alarm values for every timepoint in range
and the vector of threshold values
for every timepoint in range
for the system specified by b
, w
and
actY
, the range and the input object of class disProg.
algo.bayes1
returns the same for the Bayes 1 system, algo.bayes2
for the Bayes 2 system and algo.bayes3
for the Bayes 3 system.algo.rki
or algo.farrington
use two-sided prediction intervals -- if one wants to compare with
these procedures it is necessary to use an alpha, which is half the
one used for these procedures. Note also that algo.bayes
calls
algo.bayesLatestTimepoint
for the values specified in
range
and for the system specified in control
.
algo.bayes1
, algo.bayes2
, algo.bayes3
call
algo.bayesLatestTimepoint
for the values specified in
range
for the Bayes 1 system, Bayes 2 system or Bayes 3 system.
"Bayes 1"
reference values from 6 weeks. Alpha is fixed a
t 0.05."Bayes 2"
reference values from 6 weeks ago and
13 weeks of the previous year (symmetrical around the
same week as the current one in the previous year). Alpha is fixed at 0.05."Bayes 3"
18 reference values. 9 from the year ago
and 9 from two years ago (also symmetrical around the
comparable week). Alpha is fixed at 0.05. The procedure is now able to handle NA
's in the reference
values. In the summation and when counting the number of observed
reference values these are simply not counted.
algo.call
, algo.rkiLatestTimepoint
and algo.rki
for
the RKI system.disProg <- sim.pointSource(p = 0.99, r = 0.5, length = 208, A = 1,
alpha = 1, beta = 0, phi = 0,
frequency = 1, state = NULL, K = 1.7)
# Test for bayes 1 the latest timepoint
algo.bayesLatestTimepoint(disProg)
# Test week 200 to 208 for outbreaks with a selfdefined bayes
algo.bayes(disProg, control = list(range = 200:208, b = 1,
w = 5, actY = TRUE,alpha=0.05))
# The same for bayes 1 to bayes 3
algo.bayes1(disProg, control = list(range = 200:208,alpha=0.05))
algo.bayes2(disProg, control = list(range = 200:208,alpha=0.05))
algo.bayes3(disProg, control = list(range = 200:208,alpha=0.05))
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