0
votes
2answers
43 views

Find degrees of freedom for Chi square test in scipy?

I have a maxwellian distribution observation that I fit to expected maxwellian distribution. Then I run a chi square test to find out the goodness of the fit. I get excellent results however, I also ...
2
votes
1answer
31 views

ppf(0) of scipy's randint(0, 2) is -1.0

Perhaps I don't understand the functionality of .ppf() well, but according to wikipedia, ppf(q) should return the infimum over all reals x for which q <= cdf(x). Since for every x the cdf of any ...
1
vote
1answer
15 views

Capturing high multi-collinearity in statsmodels

Say I fit a model in statsmodels mod = smf.ols('dependent ~ first_category + second_category + other', data=df).fit() When I do mod.summary() I may see the following: Warnings: [1] The condition ...
0
votes
1answer
30 views

Chi square value from scipy.stats has degree of freedom = 0 as default. What does this mean?

Hi I have data sets (maxwellian and gaussian) that I make a histogram plot with. I fit the data using scipy.stats.chisquare but it has by default, degrees of freedom as 0. If I understand correctly, ...
-1
votes
0answers
31 views

Multivariate analysis toolbox in Python

I'm a Matlab user but I have to do a data analysis (exploratory statistics, data mining, multivariate analysis...) workshop for some students using Python (free, and we already have scripts in python ...
0
votes
1answer
49 views

How to get log likelihood for exponential and gamma distributions

I have some data and I can fit a gamma distribution using for example this code taken from Fitting a gamma distribution with (python) Scipy . import scipy.stats as ss import scipy as sp Generate ...
1
vote
0answers
62 views

Fitting a Python Scipy truncnorm model to observed values and then sampling

I am struggling with the Scipy truncnorm fit method and I would appreciate help so that the fitted parameter coefficients are consistent with the observed data. As an example, I have created a small ...
0
votes
1answer
11 views

Python: Drag a scipy.stats object through a python function

I'm trying to assign a scipy.stats rv object in a function and return it: def Prior(): priorObj = norm(loc=1, scale=1) return priorObj How can I keep the rv object including its methods and ...
1
vote
1answer
20 views

Call scipy.stats probability distributions like normal python functions

from scipy.stats import uniform How can I call uniform.pdf like a normal python function? I want to work with the probablility distribution functions like one can work with regular python functions ...
2
votes
1answer
43 views

How to test for uniformity

I simulate times in the range 0 to T according to a Poisson process. The inter-event times are exponential and we know that the distribution of the times should be uniform in the range 0 to T. def ...
0
votes
2answers
38 views

Confusion on adding noise using normal distribution in Python

I am very confused about how to sample measurement error using normal distribution (Gaussian pdf) in Python. What I want to do is just to create noise (error) under Gaussian pdf and add it to ...
0
votes
1answer
71 views

How to truncate a numpy/scipy exponential distribution in an efficient way?

I'm currently building a neuroscience experiment. Basically, a stimulus is presented for 3 seconds every x seconds (x = inter-trial interval). I would like x to be rather short (mean = 2.5) and ...
0
votes
0answers
48 views

What scipy statistical test do I use to compare sample means?

Assuming sample sizes are not equal, what test do I use to compare sample means under the following circumstances (please correct if any of the following are incorrect): Normal Distribution = True ...
2
votes
1answer
46 views

Issues creating a skew normal distribution by subclassing scipy.stats.rv_continuous

EDIT: Figured out the distribution. And got it working mostly, except for when the shape parameter is negative. The PDF should work for negative shape values but doesn't on the subclassed ...
1
vote
2answers
58 views

scipy.stats.ttest_ind without array (python)

I have done a number of calculations to estimate μ, σ and N for my two samples. Due to a number of approximations I don't have the arrays that are expected as input to scipy.stats.ttest_ind. Unless I ...
1
vote
0answers
31 views

Is it possible to specify the alternative hypothesis in Mann-Whitney U tests in Scipy?

I'd like to calculate the one-sided p-value of x > y using the scipy.stats.mannwhitneyu function: u_value, p_value = scipy.stats.mannwhitneyu(x, y) however there is nowhere to specify the ...
-1
votes
1answer
45 views

Get original data array from probability density values and bins of numpy histogram

My purpose is to calculate the original data array from the infromation of probability density and bins of np.histogram function. For example: import random a = random.sample(xrange(100), 50) n, bin ...
1
vote
1answer
45 views

Why does the Bartlett test from scipy.stats.bartlett gives nan as output?

My data is: data=[[2,2,2,2,2],[1,1,1,1,1],[3,3,3,3]] When I pass like this: bartlett(*data) It gives output as (nan,nan) Why? Thanks
0
votes
1answer
60 views

Calculate the Cumulative Distribution Function (CDF) in Python

How can I calculate in python the Cumulative Distribution Function (CDF)? I want to calculate it from an array of points I have (discrete distribution), not with the continuous distributions that, ...
0
votes
1answer
223 views

How to compute residuals of a point process in python

I am trying to reproduce the work from http://jheusser.github.io/2013/09/08/hawkes.html in python except with different data. I have written code to simulate a Poisson process as well as the Hawkes ...
0
votes
1answer
19 views

How do we pass two datasets in scipy.stats.anderson_ksamp?Can anyone explain with an example?

The anderson function asks only for one parameter and that should be 1-d array. So I am wondering how to pass two different arrays to be compared in it? Thanks
1
vote
0answers
33 views

Dissimilarity matrix of a scipy.sparse.csc.csc_matrix in Python

I am searching for a Python implementation of computing dissimilarity measures of a sparse matrix. I used using scipy.spatial.distance.pdist. But I get an error: ValueError: setting an array ...
0
votes
0answers
48 views

Can we generate contingency table for chisquare test using python?

I am using scipy.stats.chi2_contingency method to get chi square statistics. We need to pass frequency table i.e. contingency table as parameter. But I have a feature vector and want to automatically ...
9
votes
2answers
200 views

How to compute which way data points continue beyond an intersection?

Let's say you have two arrays of data values from a calculation, that you can model with a continuos, differentiable function each. Both "lines" of data points intersect at (at least) one point and ...
3
votes
2answers
71 views

Correlation coefficients and p values for all pairs of rows of a matrix

I have a matrix data with m rows and n columns. I used to compute the correlation coefficients between all pairs of rows using np.corrcoef: import numpy as np data = np.array([[0, 1, -1], [0, -1, ...
0
votes
1answer
48 views

computing cumulative distribution of a conditional probability distribution

I have a conditional probability of z for the given m, p(z|m), where the coefficients are chosen in order that integral over z in the limit of [0,1.5] and m in the range of [18:28] would be equal to ...
0
votes
1answer
26 views

How to convolve two distirbutions from scipy library

I have seen (by researching) convolution being done via numpy, but if I wish to convolve two standard distributions (specifically a normal with a uniform) which are readily available in the scipy ...
1
vote
1answer
68 views

Sample data from combination of two probability distributions

I want to make a mock catalogue. I have access to two sets of real data and I want to use their properties to generate the mock catalogue: The first one contains the information from magnitude and ...
3
votes
3answers
131 views

Generating random number for a distribution of a real data?

I have a set of real data and I want use this data to find a probability distribution and then use their property to generate some random points according to their pdf. A sample of my data set is as ...
0
votes
1answer
105 views

Standard Deviation of a percentage change in Python

I have 2 data sets. The first data set is called X has a mean value of m(X) and standard deviation of STD(X), the second set of data also has the mean value of m(Y) and standard deviation of STD(Y). I ...
3
votes
2answers
90 views

Different results when computing linear regressions with scipy.stats and statsmodels

I'm getting different values of r^2 (coefficient of determination) when I try OLS fits with these two libraries and I can't quite figure out why. (Some spacing removed for your convenience) In [1]: ...
1
vote
1answer
114 views

Finding Two-Tailed P Value from t-distribution and Degrees of Freedom in Python

How do I determine the P Value of a t-distrobution with n degrees of freedom. Research on this subject points me to this stack exchange answer: http://stackoverflow.com/a/17604216 I assume ...
0
votes
1answer
159 views

Fitting negative binomial in python

In scipy there is no support for fitting a negative binomial distribution using data (maybe due to the fact that the negative binomial in scipy is only discrete). For a normal distribution I would ...
0
votes
1answer
95 views

statsmodels - plotting the fitted distribution

The following code fits a oversimplified generalized linear model using statsmodels model = smf.glm('Y ~ 1', family=sm.families.NegativeBinomial(), data=df) results = model.fit() This gives the ...
1
vote
2answers
75 views

Define a 2D Gaussian probability with five peaks

I have a 2D data and it contains five peaks. Could I fit five 2D Gaussians function to obtain the peaks? In my problem, the peaks do not refer to the clustering problem. Which I think EM would be an ...
3
votes
2answers
73 views

Why don't scipy.stats.mstats.pearsonr results agree with scipy.stats.pearsonr?

I expected that the results for scipy.stats.mstats.pearsonr for masked array inputs would give the same results for scipy.stats.pearsonr for the unmasked values of the input data, but it doesn't: ...
4
votes
3answers
84 views

Down-sampling with numpy

I have an 1D array A that represents categorical data (where each entry is the number of element of a certain category): A = array([ 1, 8, 2, 5, 10, 32, 0, 0, 1, 0]) and I am trying to write a ...
0
votes
2answers
82 views

How to include error in input array when duing curve fit

Comment: I'm typing most of the function here. Suppose I have this data set X Y Err 1.75000000e+00 1.35782019e+03 5.30513124e-01 1.50000000e+00 1.35253305e+03 ...
8
votes
1answer
361 views

How to determine what is the probability distribution function from a numpy array?

I have searched around and to my surprise it seems that this question has not been answered. I have a Numpy array containing 10000 values from measurements. I have plotted a histogram with ...
1
vote
0answers
73 views

Test differently binned data sets

I am trying to test how a periodic data set behaves with respect to the same data set folded with the period (that is, the average profile). More specifically, I want to test if the single profiles ...
0
votes
1answer
59 views

Scipy leastsq constraint by ks_2samp

I want to fit a histogram by the sum of two gaussians, both with different amplitude, mean and deviation. To do that, I have used scipy's curve_fit, but the KS-test afterwards was awful. That was ...
0
votes
1answer
60 views

How the ttest is calculated in numpy

I am conducting a t-test using stats.ttest_1samp and then I am calculating the t-test manually but come up with different results. I am having some trouble figuring out how numpy is doing this ...
0
votes
1answer
132 views

Expectation Maximization(GMM-EM) never finds the correct parameters. (Mixture of Gaussians)

I am trying to learn Expectation Maximization for parameter estimation in Mixture of Gaussians (1D). However, it seems the algorithm rarely finds the right parameters. I am wondering if I am doing ...
0
votes
1answer
61 views

SciPy took very long time for generating gamma distribution in Python 3.2

I need to generate a truncated gamma distribution pdf curve and histogram in Python 3.2 on win7. import numpy as np import matplotlib.pyplot as plt import scipy.special as sps shape, scale = 2., 2. ...
2
votes
1answer
292 views

percentile rank in pandas in groups

I can't quite figure out how to write function to accomplish a grouped percentile. I have all teams from years 1985-2012 in a data frame; the first 10 are shown below: it's currently sorted by year. ...
0
votes
1answer
123 views

Running AB tests on Revenue in Python

I'm trying to run an AB test - comparing revenue amongst variants on websites. Our standard approach (using t-tests) didn't seem like it would work because revenue can't be modelled binomially. ...
6
votes
4answers
556 views

Highest Posterior Density Region and Central Credible Region

Given a posterior p(Θ|D) over some parameters Θ, one can define the following: Highest Posterior Density Region: The Highest Posterior Density Region is the set of most probable values of Θ that, in ...
2
votes
2answers
205 views

Inverse probability density function

What do I have to use to figure out the inverse probability density function for normal distribution? I'm using scipy to find out normal distribution probability density function: from scipy.stats ...
1
vote
1answer
87 views

t-values and Pr(>|t|) for coefficients of numpy.polyfit

I want to determine the significance of the coefficients in a polynomial model fitted to some data using numpy.polyfit. This is an example of what I want to achieve using R. Basically, I need to get ...
4
votes
1answer
107 views

Method of moments in scipy?

Following from this question, is there a way to use any method other than MLE (maximum-likelihood estimation) for fitting a continuous distribution in scipy? I think that my data may be resulting in ...