0
votes
0answers
20 views

Regression of a timeseries delta in pandas

Lets say I have a timeseries like this A B 0 a b 1 c d 2 e f 3 g h 0,1,2,3 are times, a, c, e, g is one time series and b, d, f, h is another time series. What i need is a ...
-1
votes
0answers
21 views

Gradient Descent to Logistic Regression

so I have been recently working on a gradient descent algorithm and would like to convert my code to do logistic regression instead of linear regression. Here is my code: def gradientDescent(x, y, ...
0
votes
1answer
42 views

PyMC multiple linear regressions

I'm trying to fit several lines sharing the same intercept. import numpy as np import pymc # Observations a_actual = np.array([[2., 5., 7.]]).T b_actual = 3. t = np.arange(100) obs = ...
0
votes
2answers
46 views

Perform n linear regressions, simultaneously

I have y - a 100 row by 5 column Pandas DataFrame I have x - a 100 row by 5 column Pandas DataFrame For i=0,...,4 I want to regress y[:,i] against x[:,i]. I know how to do it using a loop. But is ...
0
votes
1answer
26 views

Should elastic net regression be able to regress y=x perfectly?

I have a toy dataset of one independent variable x and one dependent variable y=x. Linear regression can find the right intercept, 0, and coefficient, 1. But the elastic net always gives a non-zero ...
0
votes
1answer
59 views

Plotting Pandas OLS linear regression results

How would I plot my linear regression results for this linear regression I did from pandas? import pandas as pd from pandas.stats.api import ols df = pd.read_csv('Samples.csv', index_col=0) control ...
1
vote
2answers
42 views

sklearn linear regression for large data

Does sklearn.LinearRegression support online/incremental learning? I have 100 groups of data, and I am trying to implement them altogether. For each group, there are over 10000 instances and ~ 10 ...
0
votes
1answer
28 views

Is there a 'patsy' formula syntax for specifying “baseline” models for 'statsmodels'

I would like to use formulas to specify a "baseline" model for some models fitting using statsmodels For example, I'd like to be able to specify a formula to pass to a olm or Logit model that simply ...
1
vote
1answer
19 views

Specifying which category to treat as the base with 'statsmodels'

In understand that when I have a category variable in a model passed to a statsmodels fit that dummy variables will automatically be generated for the categories. For example if I have a variable ...
0
votes
0answers
36 views

Python scikit learn Linear Model Parameter Standard Error

I am working with sklearn and specifically the linear_model module. After fitting a simple linear as in import pandas as pd import numpy as np from sklearn import linear_model randn = ...
1
vote
1answer
172 views

OLS Regression: Scikit vs. Statsmodels?

Short version: I was using the scikit LinearRegression on some data, but I'm used to p-values so put the data into the statsmodels OLS, and although the R^2 is about the same the variable coefficients ...
1
vote
1answer
69 views

Multivariable regression attribute selection in python

I'm a beginner to using statsmodels & I'm also open to using other Python based methods of solving my problem: I have a data set with ~ 85 features some of which are highly correlated. When I run ...
0
votes
1answer
85 views

LinearRegression Predict- ValueError: matrices are not aligned

I've been searching google and can't figure out what I'm doing wrong. I'm pretty new to python and trying to use scikit on stocks but I'm getting the error "ValueError: matrices are not aligned" when ...
0
votes
1answer
61 views

Linear regression with Lasso penalty needs to increase iterations, Scikit-learn

I am using Linear regression with Lasso implemented in Scikit-learn package. linear_regress = linear_model.Lasso(alpha = 2) linear_regress.fit(X, Y) For X, there is 7827 examples and 758 features. ...
0
votes
0answers
50 views

Pandas Rolling OLS Bug with Version 0.12.0

I have the following example data for performing a rolling OLS calculation (here I am doing it from the debugger): (Pdb) rhs ['Yield'] (Pdb) lhs 'Returns' (Pdb) min_periods 12 (Pdb) window 60 ...
0
votes
1answer
92 views

Using robust linear methods from python module “statsmodels” with weights?

I have some data,y with errors, y_err, measured at x. I need to fit a straight line to this mimicking some code from matlab specifically the fit method with robust "on" and giving the weights as ...
0
votes
1answer
81 views

Reproducing Excel's LINEST function with NumPy

I have to use Excel's LINEST function to compute error in my linear regression. I was hoping to reproduce the results using Numpy's polyfit function. I was hoping to reproduce the following LINEST ...
2
votes
1answer
92 views

Linear regression implementation always performs worse than sklearn

I implemented linear regression with gradient descent in python. To see how well it is doing I compared it with scikit-learn's LinearRegression() class. For some reason, sklearn always outperforms my ...
0
votes
0answers
65 views

pandas rolling linear regression of more signals

I have a dataframe df with 2 or more columns ['A','B','C'...] each one respresenting a signal. I need to compute a rolling linear regression on each signal against a series ...
0
votes
1answer
154 views

How to do linear regression, taking errorbars into account?

I am doing a computer simulation for some physical system of finite size, and after this I am doing extrapolation to the infinity (Thermodynamic limit). Some theory says that data should scale ...
0
votes
2answers
117 views

Standard errors for multivariate regression coefficients

I've done a multivariate regression using sklearn.linear_model.LinearRegression and obtained the regression coefficients doing this: import numpy as np from sklearn import linear_model ...
1
vote
1answer
73 views

How can I regularize a linear regression with scipy's curve_fit?

I have recently become proficient at using Python/scipy curve_fit to perform linear regression. However, with higher order polynomials, my data is sometimes overfit. How can I add regularization to ...
1
vote
1answer
148 views

Different Python minimization functions give different values, Why?

I’m trying to learn python by rewriting Andrew Ng’s Machine learning course assignments from Octave (I took the classed and got the certificate). I’m having issues with the optimization functions. In ...
6
votes
2answers
174 views

Why do I get only one parameter from a statsmodels OLS fit

Here is what I am doing: $ python Python 2.7.6 (v2.7.6:3a1db0d2747e, Nov 10 2013, 00:42:54) [GCC 4.2.1 (Apple Inc. build 5666) (dot 3)] on darwin >>> import statsmodels.api as sm ...
8
votes
1answer
382 views

Vector autoregressive model fitting with scikit-learn

I am trying to fit vector autoregressive (VAR) models using the generalized linear model fitting methods included in scikit-learn. The linear model has the form y = X w, but the system matrix X has a ...
2
votes
1answer
293 views

Efficient 1D linear regression for each element of 3D numpy array

I have 3D stacks of masked arrays. I'd like to perform a linear regression for values at each row,col (spatial index) along axis 0 (time). The dimensions of these stacks varies, but a typical shape ...
2
votes
1answer
202 views

Fitting downward trends (negative slope) with statsmodels linear regression

I can't get linear regression in python StatsModels to fit a data series with a negative slope - neither RLM nor OLS are working for me. Take a very simple case where I'd expect a slope of -1: In ...
0
votes
1answer
956 views

How do I apply scikit-learn's LogisticRegression for some decimal data?

I've the training data set like this: 0.00479616 | 0.0119904 | 0.00483092 | 0.0120773 | 1 0.51213136 | 0.0113404 | 0.02383092 | -0.012073 | 0 0.10479096 | -0.011704 | -0.0453692 | 0.0350773 ...
6
votes
1answer
3k views

gradient descent using python and numpy

def gradient(X_norm,y,theta,alpha,m,n,num_it): temp=np.array(np.zeros_like(theta,float)) for i in range(0,num_it): h=np.dot(X_norm,theta) #temp[j]=theta[j]-(alpha/m)*( np.sum( ...
2
votes
1answer
3k views

Multiple linear regression python

I use multiple linear regression, I have one dependant variable (var) and several independant variables (varM1, varM2,...) I use this code in python: z=array([varM1, varM2, varM3],int32) ...
2
votes
0answers
230 views

What is wrong in this Python code for Regularized Linear Regression?

I wrote code with numpy(theta, X is numpy array): def CostRegFunction(X, y, theta, lambda_): m = len(X) # add bias unit X = np.concatenate((np.ones((m,1)),X),1) H = np.dot(X,theta) ...
4
votes
2answers
2k views

Multiple linear regression with python

I would like to calculate multiple linear regression with python. I found this code for simple linear regression import numpy as np from matplotlib.pyplot import * x = np.array([1, 2, 3, 4, 5]) y ...
1
vote
1answer
283 views

What does target mean in Scikit's Linear Regression object?

I am using Scikit to perform ordinary linear regression on some random datapoints. However, I am confused as to what they mean by target values in their documentation of the fit method. I am setting ...
3
votes
1answer
670 views

numpy multivarient regression with linalg.lstsq

I am trying to solve for m1,m2,m3,m4 in the set of equations such that: y=(m1*x1)+(m2*x2)+(m3*x3)+(m4*x4) Where: x1=[x11,x12,x13...] x2=[x21,x22,x23...] x3=[x31,x32,x33...] x4=[x41,x42,x43...] ...
1
vote
1answer
304 views

Scipy Minimize uses a NoneType

I'm trying to code a multiple linear regression. Here's the line of code where my program raises an error: least = optimize.minimize(residsq(xmat, ylist, coeff), coeff, constraints = ({'type': 'eq', ...
1
vote
1answer
783 views

(Python) Estimating regression parameter confidence intervals with scikits bootstrap

I've just started to try out a nice bootstrapping package available through scikits: https://github.com/cgevans/scikits-bootstrap but I've encountered a problem when trying to estimate confidence ...
3
votes
1answer
577 views

Normalization in multiple-linear regression

I have a data set for which I would like build a multiple linear regression model. In order to compare different independent variable I normalize them by their standard deviation. I used ...
0
votes
2answers
356 views

Efficient way to do a rolling linear regression

I have two vectors x and y, and I want to compute a rolling regression for those, e.g a on (x(1:4),y(1:4)), (x(2:5),y(2:5)), ... Is there already a function for that? The best algorithm I have in mind ...
2
votes
1answer
268 views

regression coefficient calculation in python

I have a Dataframe and an input text file of activity.Dataframe is produced via pandas.I want to find out the regression coefficient of each term using following formula ...
2
votes
2answers
346 views

Linear Regression\Gradient Descent python implementation

So I'm trying to implement linear regression using the gradient descent method from scratch for learning purposes. One part of my code is really bugging me. For some reason the variable x is being ...
1
vote
0answers
237 views

Python Machine Learning Toolkit [closed]

Was hoping someone could point me in the right direction in terms of which python ML libraries would be best to classify comparisons between two songs. Working on creating a basic recommendations ...
1
vote
1answer
908 views

OLS with pandas: datetime index as predictor

I would like to use pandas OLS function to fit a trendline to my data Series. Does anyone knows how to use the datetime index from the pandas Series as predictor in the OLS? For example, let say that ...
1
vote
1answer
64 views

Maximum number of dependencies in pandas ols?

I run pandas OLS on a data set. If I run it with less than 20 time series in the x-value, everything works fine Is there a maximum of dependants pandas.ols can handle? This is what I'm doing, except ...
1
vote
0answers
187 views

What non-negative linear models are supported/planned in scikit-learn?

Scikit-learn offers a large variety of useful linear models. However, I am working on a problem which is linear with non-negativity constraints (i.e. solution variables should be non-negative). I ...
3
votes
1answer
2k views

Predicting values using an OLS model with statsmodels

I calculated a model using OLS (multiple linear regression). I divided my data to train and test (half each), and then I would like to predict values for the 2nd half of the labels. model = ...
7
votes
4answers
953 views

Why are LASSO in sklearn (python) and matlab statistical package different?

I am using LaasoCV from sklearn to select the best model is selected by cross-validation. I found that the cross validation gives different result if I use sklearn or matlab statistical toolbox. I ...
1
vote
1answer
501 views

Linregress giving incorrect result

I am a big fan of Stack Overflow and am sure my question will be answered here. I am using Scipy to do linear regression. But at a particular set of inputs I am not getting the correct output. (Python ...
1
vote
3answers
593 views

how to do linear regression in python, with missing elements

I found an example of linear regression: http://docs.scipy.org/doc/numpy/reference/generated/numpy.linalg.lstsq.html#numpy.linalg.lstsq x = np.array([0, 1, 2, 3]) y = np.array([-1, 0.2, 0.9, 2.1]) ...
1
vote
2answers
745 views

How can I obtain segmented linear regressions with a priori breakpoints?

I need to explain this in excruciating detail because I don't have the basics of statistics to explain in a more succinct way. Asking here in SO because I am looking for a python solution, but might ...
4
votes
2answers
2k views

Python linear fitting with multiple error bars

I am fitting some data with a linear fit. I want to weight the error bars. Up to this point, I have been using bulldogs fitting.py. Their linear_fit makes weighted linear regressions very easy. ...