6
votes
2answers
105 views
+100

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
38 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
0answers
54 views

Calculating statistically rare events from a set of observations [migrated]

I have a Pandas data frame as follows: Event Location| Number of events | %age success A | 10 | 0.5 B | 2 | 1 C | 1 | 0 D | 100 | 0.3 E | 1 | 0 F | 1 | 1 ... ... The data represent the ...
0
votes
1answer
42 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
21 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
60 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
104 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
56 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
49 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
46 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
89 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
61 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
60 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 ...
2
votes
2answers
56 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
72 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
54 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
212 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
54 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
44 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 ...
1
vote
1answer
39 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
103 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
52 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
153 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
84 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
3answers
382 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
152 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
66 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
87 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 ...
3
votes
1answer
328 views

normality test of a distribution in python

I have some data I have sampled from a radar satellite image and wanted to perform some statistical tests on. Before this I wanted to conduct a normality test so I could be sure my data was normally ...
1
vote
1answer
235 views

Python - Minimizing Chi-squared

I have been trying to fit a linear model to a set of stress/strain data by minimizing chi-squared. Unfortunately using the code below is not correctly minimizing the chisqfunc function. It is finding ...
2
votes
1answer
144 views

Weird pdfs from Generalised Extreme Value (GEV) Maximum Likelihood fitted data

I am doing some data analysis involving fitting datasets to a Generalised Extreme Value (GEV) distribution, but I'm getting some weird results. Here's what I'm doing: from scipy.stats import ...
2
votes
0answers
55 views

Products of general distributions

Say I have two unnormalized, non-parametric distributions for a random variable between [0,1], e.g.: unnormalized_pdf_A = abs(sin(linspace(1,10,100))) and unnormalized_pdf_B = ...
0
votes
2answers
43 views

pdf estimation with scipy.stats

Say I compute the density of Beta(4,8): from scipy.stats import beta rv = beta(4, 8) x = np.linspace(start=0, stop=1, num=200) my_pdf = rv.pdf(x) Why does the integral of the pdf not equal one? ...
0
votes
0answers
72 views

How is it possible to fit more than one function to a set of data simultaneously using pymc?

I want to fit a function three times in a set of data and the function has four free parameters(x,y,z,Mass). But for one of them, z, I have a probability distribution (p(z)) and I want to integrate ...
12
votes
3answers
467 views

Plotting confidence intervals for Maximum Likelihood Estimate

I am trying to write code to produce confidence intervals for the number of different books in a library (as well as produce an informative plot). My cousin is at elementary school and every week is ...
0
votes
1answer
56 views

How do you set the 'tail probabilities' in a scipy genextreme distribution?

Does anyone know how to set the 'q' parameter(which controls the lower or upper tail probability) in scipy's 'genextreme' distribution? #/usr/bin/env python import numpy as np import ...
3
votes
0answers
163 views

Auto-correlation measurement for spatial separation?

I have a three columns data, two columns spatial coordinates and in the third column, one property of my data which I am interested to compute the auto-correlation between this parameter according ...
0
votes
2answers
236 views

How to get a percentile for an empirical data distribution and get it's x-coordinate?

I have some discrete data values, that taken together form some sort of distribution. This is one of them, but they are different with the peak being in all possible locations, from 0 to end. So, I ...
3
votes
1answer
42 views

Why Scipy stdDev returns wrong results?

import scipy timeseries = [53.0, 28.0, 20.0, 113.0, 68.0, 18.0, 9.0, 72.0, 37.0, 29.0, 16.0, 70.0, 45.0, 3.0, 79.0, 7.0, 17.0, 0.0, 84.0, 19.0, 0.0, 1.0, 5.0, 16.0, 1485.3333, 650.0, 39.0, ...
1
vote
2answers
560 views

NumPy or SciPy to calculate weighted median

I'm trying to automate a process that JMP does (Analyze->Distribution, entering column A as the "Y value", using subsequent columns as the "weight" value). In JMP you have to do this one column at a ...
1
vote
1answer
101 views

scipy p-value returns 0.0

Using a 2 sample Kolmogorov Smirnov test, I am getting a p-value of 0.0. >>>scipy.stats.ks_2samp(dataset1, dataset2) (0.65296076312083573, 0.0) Looking at the histograms of the 2 ...
2
votes
1answer
578 views

Creating Non Linear Regression with Python

I have a simple data; x = numpy.array([1,2,3, 4,5,6, 7,8,9, 10,11,12, 13,14,15, 16,17,18, ...
0
votes
1answer
139 views

Gamma CDF and inverse CDF not producing compliment values

Why isn't the inverse gamma function producing the original x value? Code x = 0.2 alpha = 2 u = sp.stats.gamma.cdf(x, alpha) x1 = sp.stats.invgamma.cdf(x, alpha) print "x: ", x print "G: ", u print ...
0
votes
1answer
64 views

Using scipy stats, how can I implement a statistical test in my if else statement?

How can a statistical test be implemented within an if else statement in python? I'm using scipy stats. A small portion of my code where I want this implemented is: def choose(): global ...
0
votes
0answers
90 views

running statistical tests using scipy stats

My program tells the user which statistical test is appropriate and allows them to browse and choose a data file. The next step for my program would be to run the test that the program specified. I ...
0
votes
1answer
61 views

Calling arma2ma when computing a 95% confidence interval for AR(q)

After performing the AR(q) fitting I am returned an ARResultsWrapper containing all the parameters and fit statistics. Computing the 95% confidence interval should then be a matter of converting from ...
5
votes
1answer
108 views

Is there a Python equivalent to MATLAB's pearsrnd function?

I would like to generate random numbers with a given mean, variance, skewness, and kurtosis from the Pearson system. I can do this in MATLAB using "pearsrnd" -- does scipy, statsmodels, or any other ...
1
vote
1answer
312 views

Scipy Curve_Fit return value explained

Below is an example of using Curve_Fit from Scipy based on a linear equation. My understanding of Curve Fit in general is that it takes a plot of random points and creates a curve to show the "best ...
0
votes
1answer
593 views

Chi Square Test of Independence in Python [duplicate]

Under Ubuntu 10.04.4, using Python 2.6.5, NumPy and SciPy, is it possible to do a chi square test of independence? In R, this is achieved with the following: > row1 = c(91,90,51) > row2 = ...
0
votes
1answer
54 views

Distribution parameters in scipy vs usual distribution parameters

The SciPy.stats package parameterizes probability distributions with location and scale parameters, which is not typical for many distributions. The basic question I have is: does there exist a ...