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jeffalstott
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powerlaw
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Curve fitted using power law is far from the data points
#107
Prateek1410
closed
5 months ago
0
Issue with the x_min
#106
karandeep8
closed
1 year ago
0
p_value not computed from normalizes R
#105
anabugaenko
closed
1 year ago
6
`estimate_discrete` should be False by default or raise a warning for x_min < 6
#104
henrymartin1
opened
1 year ago
1
Fix for pickling problem
#102
hjs2s
closed
1 year ago
1
FIX: issue 98
#101
henrymartin1
closed
2 years ago
0
FIX: issue 99
#100
henrymartin1
closed
1 year ago
1
Can not pass 'bins' keyword to `plot_pdf`
#99
henrymartin1
closed
1 year ago
2
parameter1 attribute not set for fit.powerlaw
#98
henrymartin1
closed
2 years ago
1
Fix hasattr call
#97
kataev
closed
2 years ago
0
Please remove print statement on line 341 of powerlaw.py
#96
charlesmartin14
opened
2 years ago
0
Feature Request: Return the normalization constant
#95
mapfiable
opened
2 years ago
9
how to calculate the R value properly for discrete data
#94
dddyx
opened
2 years ago
0
Some issues in lognormal fit
#93
RuoxireeseWang
opened
2 years ago
0
Get the estimates when i only have an probability distribution from empirical data
#92
aaab8b
opened
2 years ago
0
How to improve the efficiency of the fit.
#91
KaidoZhang
opened
2 years ago
0
Updated the normalizer and added a parameter pdf_ends_at_xmax
#90
nsfzyzz
closed
1 year ago
1
Fitting a powerlaw with the xmax parameter
#89
nsfzyzz
closed
1 year ago
17
Remove or make optional xmin fitting print
#88
nialov
opened
3 years ago
0
threshold in powerlaw fit
#87
silverbullet1472
closed
3 years ago
1
Defunct scipy import
#86
lo-hfk
opened
3 years ago
1
New user: Why the curvature in power_law.plot_ccdf fit?
#85
amybug
opened
3 years ago
14
power law plot showing fit and all data, not just data from xmin
#84
pyguy3
opened
3 years ago
1
Added xmin computation does not work for distributions != power_law/truncated_power_law
#83
PabloLeon
closed
4 years ago
1
Version label
#82
mdf-github
opened
4 years ago
0
Added xmin computation using any of the supported distributions
#81
mdf-github
closed
4 years ago
1
python 3.7
#80
llvll0hsen
opened
4 years ago
1
Alpha exponent less than 1?
#79
tawantayron
closed
4 years ago
4
Finding xmin for a truncated power law
#78
mdf-github
closed
4 years ago
3
Errors relating to divide by zero for plot_pdf for given data sets
#77
ahalwright
opened
5 years ago
0
divide by 0 warnings
#76
charlesmartin14
opened
5 years ago
1
evaluation factor p_value
#75
davendw49
opened
5 years ago
0
Small sample size fits documentation
#74
brunobowden
closed
5 years ago
2
Different xmin using Fit and find_xmin
#73
hazmup
closed
5 years ago
1
how to limit range of xmin to increase the fitting speed
#72
boxcwang
closed
5 years ago
1
Different fit for specified xmin vs. removing x<xmin from data
#71
LeoQK
closed
3 years ago
1
Is it possible to fit a power law function to the data that has x and ?
#70
17laker
closed
5 years ago
2
Exceptions when sampling discrete distribution
#69
ghost
closed
5 years ago
6
merge discussed fixes to #65 and #66
#68
mountaindust
closed
5 years ago
0
setting xmin in Fit doesn't work
#67
eltrompetero
closed
5 years ago
2
stretched_exponential_likelihoods continuous definition
#66
mountaindust
closed
5 years ago
1
Off-by-one error when binning in powerlaw.pdf
#65
mountaindust
closed
5 years ago
3
Switch to setuptools to allow pip installing dependency automatically.
#64
wuhaochen
closed
6 years ago
0
pip doesn't correctly install dependencies
#63
wuhaochen
closed
6 years ago
1
Fitting user-specified PDF, e.g. power spectral density
#62
smartass101
opened
6 years ago
7
Fitting issues with standard configuration
#61
polakowo
opened
6 years ago
25
Fix numpy array inversion
#60
PFischbeck
closed
6 years ago
1
Not working with current numpy version
#59
PFischbeck
closed
6 years ago
0
returns datatype error
#58
ghost
closed
6 years ago
3
Question about p-value
#57
lymanblue
closed
6 years ago
1
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