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nexedi
dream
Commits
15c8c6ed
Commit
15c8c6ed
authored
Oct 21, 2014
by
Georgios Dagkakis
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Plain Diff
some distributions added
parent
e6365c6e
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1
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10 additions
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4 deletions
+10
-4
dream/simulation/RandomNumberGenerator.py
dream/simulation/RandomNumberGenerator.py
+10
-4
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dream/simulation/RandomNumberGenerator.py
View file @
15c8c6ed
...
...
@@ -65,16 +65,22 @@ class RandomNumberGenerator(object):
elif
self
.
distributionType
==
"Erlang"
:
#if the distribution is erlang
return
G
.
Rnd
.
gammavariate
(
self
.
alpha
,
self
.
beta
)
elif
(
self
.
distributionType
==
"Logistic"
):
#if the distribution is Logistic
return
1
# XXX from http://stackoverflow.com/questions/3955877/generating-samples-from-the-logistic-distribution
# to check
from
random
import
random
import
math
x
=
random
()
return
self
.
location
+
self
.
scale
*
math
.
log
(
x
/
(
1
-
x
))
elif
(
self
.
distributionType
==
"Geometric"
):
#if the distribution is Geometric
return
1
elif
(
self
.
distributionType
==
"Lognormal"
):
#if the distribution is Lognormal
return
1
# XXX from the files lognormvariate(mu, sigma)
# it would be better to use same mean,stdev
return
G
.
Rnd
.
lognormvariate
(
self
.
logmean
,
self
.
logsd
)
elif
(
self
.
distributionType
==
"Weibull"
):
#if the distribution is Weibull
return
1
return
G
.
Rnd
.
weibullvariate
(
self
.
scale
,
self
.
shape
)
elif
(
self
.
distributionType
==
"Cauchy"
):
#if the distribution is Cauchy
return
1
else
:
raise
ValueError
(
"Unknown distribution %r used in %s %s"
%
(
self
.
distributionType
,
self
.
obj
.
__class__
,
self
.
obj
.
id
))
...
...
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