for issues related to linear regression modelling approach

learn more… | top users | synonyms

-5
votes
0answers
25 views

Solving confidence interval of a subpopulation from linear regression models [on hold]

I am stucking on several statistic questions. I have no idea which direction should i go. Please help! The variables are x=height of father and y = height of corresponding son. The unit is centimetre ...
0
votes
0answers
9 views

Linear regression with faster decrease in coefficient error/variance

Suppose we have set of variables Y and X, which know are related by a linear relation y_i=a*x_i +b, and important for us is to find b and b and the error in estimating them. I know that the simple ...
0
votes
1answer
19 views

mvregress() error in MATLAB : Undefined function 'isnan' for input arguments of type 'cell'

I want to run OLS with model Xt = a + b*Xt-1, where Xt is a vector with 3 columns. Below is my code. But I am getting this error: Undefined function 'isnan' for input arguments of type 'cell'. Error ...
0
votes
0answers
24 views

Is overwriting happening in the following code, and how to avoid it?

I wrote this following (written at the end of my question) piece of code which is error-free, but I think, while running it, it has an overwriting problem. During the program, there are two cases ...
0
votes
1answer
23 views

Statsmodel multivariate OLS error “matrices are not aligned”

I am trying to solve multivariate regression. Here is the code attached for the regression. The model builds fine, but when I try to retrieve the summary, it gives following error ValueError: ...
0
votes
1answer
32 views

MATLAB: linear regression of a generic multivariate polynomial to data

I would like to fit a multivariate polynomial of arbitrary degree to my data using MATLAB. Suppose I have two variables, and I use a polynomial of degree two: my polynomial is thus ...
-4
votes
0answers
28 views

friedman super smoother and confidence interval

I would like to use local regression to smooth my data (I need running line smoother). I found the R function supsmu, which smoothes the data using Friedman's ‘super smoother’. However, I need to plot ...
-1
votes
0answers
28 views

Prediction on multiple regression - Python [migrated]

I have 3 list of value and 1 ground truth data. They all belongs to the same time series. My purpose is with 3 list try to forecast the ground truth data. For example : list1 = ...
-1
votes
0answers
24 views

Linear Regression on multiple categorical variable [closed]

Can anyone explain How I can interpret my result from the below model : I am trying to build the linear regression model for finding the transaction behavior of the customer in bank accounts. I have ...
0
votes
0answers
28 views

Estimating R^2 when some coefficients are forced (i.e., restricted coefficients) [migrated]

I am running a regression in R, and wanted to find the right way to calculate the R^2. I have an identity that I am empirically testing with data that is y = x1 - x2 + x3 (unfortunately dont have an ...
1
vote
0answers
34 views

Is Apache Spark less accurate than Scikit Learn?

I've recently been trying to get to know Apache Spark as a replacement for Scikit Learn, however it seems to me that even in simple cases, Scikit converges to an accurate model far faster than Spark ...
4
votes
5answers
94 views

Linear Regression and storing results in data frame

I am running a linear regression on some variables in a data frame. I'd like to be able to subset the linear regressions by a categorical variable, run the linear regression for each categorical ...
0
votes
0answers
14 views

R pwl optimization

How do I optimize two Piecewise-linear variables(a,b) in a linear model? My Piecewise code: pwl<-function(x,x0){ ## x is data ## x0 is cut off ## The associated estimated parameter is for x ...
1
vote
0answers
21 views

Error in model.frame.default … invalid type (list) for variable

I'm fairly new to R and I'm trying to create a model to work on Kaggle's Facial Keypoint Detection sample project. The ultimate issue is that creating any model (I'm trying a neural net using the ...
0
votes
1answer
24 views

Extracting final p-value from output of regression (lm) in R [duplicate]

I have following data and code: > res = lm(vnum1~vnum2+vch1, data=rndf) > sumres=summary(res) > > sumres Call: lm(formula = vnum1 ~ vnum2 + vch1, data = rndf) Residuals: Min ...
0
votes
1answer
50 views

Linear fit with errors on x and y

Using python, I am trying to find the equation of a line that best fits my data. However, I have errors on the x and y data points. Note that my errors are not symmetric. Here is what my data points ...
0
votes
0answers
25 views

pandas and statsmodels.ols formula api

If I have a formula as follows: formula='Price ~ Age + Size + C(Color) + C(Type)' Where Price,Age, and Size are continuous variables and Color and Type are categorical. If I am loading a dataframe ...
1
vote
1answer
71 views

Fit a linear transformation in python

I have two sets of vectors x_i \in R^n and z_i \in R^m I want to find a transformation matrix W such that W x_i approximates z_i, i.e. I want to find W that minimizes: sum_i || W x_i − z_i ||^2 ...
-2
votes
0answers
16 views

WEKA - Linear Regression - Prediction is exactly the same for every row?

I've use the resample filter to create 3 distinct arff files, one training set, a cross validation set and a test set, each has unique data and each have identical attributes. However when i load the ...
1
vote
1answer
41 views

R: Selecting every two consecutive rows for ddplyr

This is my data Assay Sample Dilution meanresp number 1 S 0.25 68.55 1 1 S 0.50 54.35 2 1 S 1.00 44.75 3 My end goal is to apply ...
0
votes
1answer
24 views

How to regress Y on X using matlab?

Given : Y=[81 55 80 24 78 52 88 45 50 69 66 45 24 43 38 72 41 48 52 52 66 89]; X=[124 49 181 4 22 152 75 54 43 41 17 22 16 10 63 170 125 15 222 171 97 254]; I want to regress Y on X ...
-1
votes
1answer
45 views

How to Loop/Repeat a Linear Regression in R

I have figured out how to make a table in R with 4 variables, which I am using for multiple linear regressions. The dependent variable (Lung) for each regression is taken from one column of a csv ...
1
vote
1answer
52 views

How to plot a glm model (binomial in this case) using plot in the same way as plot(lm.fit)

I have a binary response variable called MORTALITY, and I want to regress it on the response variables EuroScoreII, SYNTAXSCORE, AGE and SEX (SEX is binary). I entered the following: model.m <- ...
1
vote
1answer
32 views

Linear fit with Math.NET: error in data and error in fit parameters?

I am trying to use Math.NET to perform a simple linear fit through a small set of datapoints. Using Fit.Line I am very easily able to perform the linear fit and obtain the slope and intercept: ...
-1
votes
0answers
25 views

Determine if a Model is reasonable through correlation analysis? [migrated]

I am looking to build a regression model with x as the dependent variable and several independent variables. Can correlation analysis be used as the first step to determine if a reasonable model can ...
0
votes
0answers
23 views

R: Technique for lasso with left-censored data? [migrated]

I am searching for an R function that uses lasso for variable selection that includes a method to account for left-censored data. Is there an R function available for this? Thanks for any input.
2
votes
0answers
14 views

Fit a line pattern on curve with unknown number of points

I've got a sample curve which ends theoretically with decreasing exponential. The curve end falls into noise. The sample points are given in log scale. What I want to do, is to find and fit the linear ...
0
votes
1answer
29 views

ridge regression: test error goes up then down as the training sample increases (from underdetermined to overdetermined)

I am looking into the effect of the training sample size when doing a ridge (regularised) regression. I get this very strange graph when I plot the test error versus the train set size: ...
0
votes
1answer
39 views

retrieve the standard deviation of the y-intercept

I am using polyfit to fit my data to a line. The equation of the line is of the form y = mx + b. I am trying to retrieve the error on the slope and the error on the y-intercept. Here is my code: fit, ...
1
vote
1answer
53 views

Plot coefficients depending on their significance

I try to visualize the significance of each variable/combination of a DiD model. attach(mtcars) M=lm(mpg ~ hp + wt * gear , data =mtcars) summary(M) coef(M) confint(M, level = 0.9) Therefore I ...
1
vote
1answer
35 views

sklearn LinearRegression reports error

Why doesn't this work in python? x = [] y = [] for ii in range(0,100): x.append(ii) y.append(ii) clf = LinearRegression() clf.fit(x, y) clf.predict(101) I ...
0
votes
1answer
64 views

Using lsqcurvefit, How can I improve the fitting

I need to fit the data given in Runreg.m into the equation given in CalculateTime.m but the value of resnorm is pretty high and I am not able to get good fit. With the obtained values of A and sigma, ...
0
votes
0answers
35 views

curve fitting - linear regression

I have the following values for Xs and the corresponding value of Y X1 X2 X3 X4 X5 X6 Y 13 14 15 16 16 N/A 25587 13 14 20 22 22 25 19672 16 17 18 23 27 30 ...
1
vote
1answer
51 views

Linear Regression analysis for Date column in SQL Server

I have the following block of code that calculates the formula for a trend line using linear regression (method of least squares). It just find the R-Squared and coefficient of corelation value for X ...
0
votes
1answer
53 views

Having problems with dimensions in machine learning ( Python Scikit )

I am a bit new to applying machine learning, so I was trying to teach myself how to do linear regression with any kind of data on mldata.org and in the Python scikit package. I tested out the linear ...
1
vote
2answers
42 views

Java Linear Regression not working

Let me start off by saying I am terrible with math. I do not claim to be an expert (or even an advanced) mathematician by far. What I'm trying to do is take this output: 55,55 55,55 340,340 333,333 ...
0
votes
0answers
30 views

Extracting result of regression function in R script [duplicate]

In R Script, for instance in usage of; regression=lm(a~b) As known, result of linear model regression can be summarized by summarize(regression) In this sample regression variable is a ...
0
votes
0answers
26 views

Visualizing & analyzing recommendation algorithm results

I'm working with a self-built recommendation algorithm (a slightly modified low rank matrix factorization collaborative filter algorithm, based in large part on Coursera's ML class by Andrew Ng). ...
-3
votes
2answers
55 views

Finding missing value in R

I am very(!) new to R and try to find out how to code something which I can solve in Excel in 30 sec. - so forgive me if the question might be a bit trivial... I have two variables with two values ...
0
votes
1answer
60 views

Numpy linear regression with regularization

I'm not seeing what is wrong with my code for regularized linear regression. Unregularized I have simply this, which I'm reasonably certain is correct: import numpy as np def get_model(features, ...
3
votes
1answer
58 views

Linear regression in R using lm: Different summary output in a function

Brief question regarding linear regression in R using the lm function. I noticed that the output is different when using the summary command as part of a function. When I enter: model1 <- lm ...
0
votes
1answer
28 views

MATLAB regress function and Normalizing Data

I am trying to perform a multiple linear regression in MATLAB using the regress function, and I am using a number of different variables that involve different scales and units. I am assume the answer ...
0
votes
0answers
28 views

Sklearn Chi2 return NaN results

I attempting evaluate my feature results by performing a chi-squared test using sklearns chi2 library http://scikit-learn.org/stable/modules/generated/sklearn.feature_selection.chi2.html. I used the ...
2
votes
1answer
37 views

Is it possible to hide the coefficients that are from factors in R lm()?

I have a model with two types of many different fixed effects, and I am only interested in a few regressors and not the fixed effects themselves. I find it easier to include the as.factor variables ...
0
votes
1answer
29 views

Regression, classification on Machine Learning

I have a classification and regression question on machine learning. First question, the following dataset http://it.tinypic.com/view.php?pic=oh3gj7&s=8#.VIjhRDGG_lF Can we say, the data set is ...
0
votes
0answers
23 views

Running an OLS regression with AR(1) and MA(12) variables in python

All, I'm trying to convert my forecasting process away from E-Views to Python. I do want to make sure I still have the same regression. For example, I have the dependent variable, load and my ...
0
votes
0answers
31 views

Selectively regressing out variables in r

My sample data is at https://www.dropbox.com/s/ij39w2wm1bed8cr/sample_data.csv?dl=0 TIV_SPM, TIV_FSL and TIV_FS are the dependent variables At first I fit a linear model each for TIV_SPM, TIV_FSL ...
0
votes
1answer
48 views

Linear regression slope error in numpy

I use numpy.polyfit to get a linear regression: coeffs = np.polyfit(x, y, 1). What is the best way to calculate the error of the fit's slope using numpy?
0
votes
1answer
32 views

Parameter estimation of arbitrary function in R

I have a linear but complex function in R, let's say estimate.value <- function(x, y, z) Now I have an output value and I want to estimate the input parameters one or two at a time. How do I do ...
1
vote
1answer
17 views

How to use the LinReg command on the TI-89?

When I try to use the LinReg command, it works, but just says Done LinReg c1,c2 Done I know how to do it with the CALC button in the Data/Matrix editor, but don't understand how it works as ...