Regression analysis is a collection of statistical techniques for modeling and predicting one or multiple variables based on other data.

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(Statistics) Mean and variance for b1(tilde) given two points in a linear regression model

I am not quite sure about how to solve this problem and I have been searching for useful information online but found no results. So I would like to ask about it here and any help will be appreciated. ...
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1answer
22 views

method for implementing regression tree on raster data - python

I'm trying to build and implement a regression tree algorithm on some raster data in python, and can't seem to find the best way to do so. I will attempt to explain what I'm trying to do: My desired ...
0
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2answers
12 views

How to conveniently add a large set of regressors in R?

I have to add approximately 30 dummy variables to a regression. If my variables would be named dummy1 - dummy30, I would denote this with an asterisk wildcard in STATA. It would be simply regress y ...
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0answers
19 views

knn regression on test data

I am working in R with knn regression (package FNN). My training and test datasets have different lengths. My problem is that I got the error that the number of columns must be same. The training data ...
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1answer
27 views

SAS Run multiple regressions and collect results

I have a dataset with n levels of id and (n+4) variables. I wish to perform a regression for each of the n levels of the categorical variable, using the values of the n-1 variables as explanatory ...
0
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1answer
38 views

Getting uncertainty values in linear regression with python

I have some data like arr = [ [30.0, 0.0257], [30.0, 0.0261], [30.0, 0.0261], [30.0, 0.026], [30.0, 0.026], [35.0, 0.0387], [35.0, 0.0388], [35.0, 0.0387], [35.0, ...
0
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1answer
33 views

ValueError loading data for scipy.odr regression

I recently tried to use scipy.odr package to conduct a regression analysis. Whenever I try to load a list of data where the elements depend on a function, a value error is raised: ValueError: x ...
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0answers
19 views

Difference between survival analysis and regression [closed]

I am a newcomer to survival analysis, I have some knowledge in classification and regreesion. I want to know more about the realtionship between these two: 1.Is survival analysis a special kind of ...
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0answers
27 views

Regression on cumulative abnormal return

First of all I am sorry if I should have posted this on cross validated instead or if this question is to pedantic. I thought that stackoverflow was more appropriate due to the question ultimately ...
-3
votes
1answer
42 views

Selecting the highest F value from a looped anova in R [closed]

As a part of a project I need to perform anova analysis between the various columns of a csv file. Is there any way I can write a loop to do the anova between the all the columns instead of doing it ...
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0answers
21 views

Multiple regression in R with different data types of predictors [migrated]

My goal is to investigate a dependent variable which is metric (time in hours). The independent variables include 3 metric, 2 binary (factors), and one factor variable, which consists of 11 districts ...
0
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0answers
15 views

How to Code Selection for Bootstrap Probit Models in R

This question regards how to code variable selection in a probit model with marginal effects (either directly or by calling some pre-existing package). I'm conducting a little probit regression of ...
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1answer
32 views

Plotting fraction of NAs of a data frame

Does anyone know how to plot the graphs of figure 23.1 of the example chapter of Steyerberg's book? The R-function is called "na.plot2" and Displays for example the fraction of missing values in data ...
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2answers
39 views

R: Prediction using glm() gamma family

I am using glm() function in R with link= log to fit my model. I read on various websites that fitted() returns the value which we can compare with the original data as compared to the predict(). I ...
0
votes
1answer
41 views

stepwise regression: Undefined function ' stepwiselm' for input arguments of type 'cell'

I have one .txt file and I have converted it to first a table Ta(Ta=readtable('xxx.txt')) then an array Aa(Aa=table2array(Ta)), the .txt file contains 220 rows and 12 cols, but the table and the array ...
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0answers
28 views

R- Improving linear regression fit [closed]

I am trying to construct a predictive model in R. I am using the glm() in R to fit the model. I am getting a very high residual error after fitting the model. My target values are in the range of ...
-2
votes
1answer
48 views

Regression summary in R returns a bunch of NAs

Trying to run an uncomplicated regression in R and receiving long list of coefficient values with NAs for standard error and t-value. I've never experienced this before. Result: summary(model) ...
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2answers
37 views

Unbalanced or misused parentheses or brackets [closed]

I got en error message: Error: unbalanced or misused parentheses or brackets. for d=sqrt(('T'(i,1)-'T'(j,1))^2+('T'(i,2)-'T'(j,2))^2)); I tried to add . or ./ but it didn't work.Any help please? ...
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1answer
28 views

R Regression from two tables

I have these two tables of GDP and Employment for example: Country GDP 2000 2001 2002 2003 Afghanistan 3 4 5 6 Belarus 5 6 7 8 Belgium 7 8 ...
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1answer
23 views

Perform Iterative Operations on OUTEST or OUTSTAT variables in SAS?

In SAS, how can I assign a variable coming from either the OUTEST or OUTSTAT functions to be used in a loop? For example, say I want to run some sort of iterative analysis until my mean (average) ...
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0answers
26 views

How to run regression with presence of constant and linear time trend in R?

I have 2 time series X and Y. I have already known how to run the regression with presence of constant, represented by the following equation: The regression (equation with constant) shown right ...
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0answers
17 views

Predictive Modelling in R [migrated]

I am new to R and I am trying to do some predictive modelling on data set which has 16 feature variables and the target value is numeric in R. I am not sure if the steps I am following will help me to ...
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2answers
33 views

Regression function with variable number of arguments in r

I have composed a function to calculate VIF for nls regression models. It looks like this: function (a,b,c,d,e,f,g) { VIFa <- 1/(1- (R2 <- summary(lm(a ~ b + c + d + e + f + g))$r.square)) ...
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0answers
21 views

R - Repeated model fitting with variable deletion

I have random sample containing 1 response variable and 10 explanatory variables (X) and I'm trying to find the best subset applying linear regression No problems with fitting the model, but I need ...
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1answer
14 views

why is there a huge difference existed in model performance score obtained from 10-fold cross validation?

I'm using gradient boosting regression model (GBRT). To evaluate this model, I use 10-fold cross validation, in each of which I set same parameters , thus The only difference btw folds is just the ...
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0answers
26 views

Multiple regression with complicated constants using statsmodels.api

I am trying to create a formula for statsmodels.api and patsy formulas: http://www.datarobot.com/blog/multiple-regression-using-statsmodels/ Y = a * X ^ b whereby a = c + d * Z b = e + f * ...
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0answers
22 views

Best approach in R for interpolating and curve fitting a tiny dataset? [migrated]

I have a set of 'activity' values for some enzyme assays I have been doing, that come out of some analysis I've been doing. The problem is, the data is fairly crap, and there aren't many points, but ...
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3answers
34 views

Fitting (multlple) linear models by group in R

I'm trying to (somewhat) elegantly fit 3 models (linear, exponential and quadratic) to a dataset with classes/factors and save p-values and R2 for each model and class/factor. Simple dataset with 3 ...
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1answer
42 views

Linear Regression in R: “Error in eval(expr, envir, enclos) : object not found”

I'm trying to do a simple least-squares regression in R and have been getting errors constantly. This is really frustrating, can anyone point out what I am doing wrong? First I attach the dataset (17 ...
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1answer
45 views

multiple ggplot linear regression lines

I am plotting the occurrence of a species according to numerous variables on the same plot. There are many other variables but I've only kept the important ones for the sake of this post: > ...
0
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1answer
20 views

Ordering of points in R lines plot

I want to add a fitted line of a quadratic fit to a scatteprlot, but the ordering of the points is somehow messed up. attach(mtcars) plot(hp, mpg) fit <- lm(mpg ~ hp + I(hp^2)) summary(fit) res ...
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0answers
32 views

standard errors of the fitted values of a time series regression [migrated]

I really want to understand how the math is working here. I am trying to get the standard error of the fitted values for a time series regression model.In the non-time series regression,I know I can ...
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0answers
60 views

How to plot the output of a multivariate regression using GGPLOT

I have a regression with fixed effects/other covariates and I want to plot the outcome and the predictor variable of interest after controlling for the fixed effects. So, I want to plot a curve that ...
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1answer
27 views

How to write the SLOBODA trend function in R

What is the R code for the following formula?
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31 views

R Referring to only a subset of the regressor output in R linear model, conditional on a factor being present

I have an output that interacts X and Y (both factors). Call the output, reg. I want reg$coefficients, but I only want the ones with factor X1 in them. Is there a way to select this easily in R?
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1answer
40 views

Simultaneously fitting multiple models that differ only in terms of a multiplicative factor to a single dataset, in R

I have been struggling with this problem for a while and although I think I am close I can't seem to get to the answer. Say I have a dataset that I want to simultaneously fit multiple models to, but I ...
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1answer
28 views

Regression with subsets and baseline specification + differing variables

I want to regress a variable on a baseline specification and seven additional variables subsequently (i.e. 8 regressions). I want to do this for two subsets of the data.frame and for two subsets of ...
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0answers
20 views

R programming: Lapply(split) and Model Generation [closed]

I would like to generate and store for multiple models to subsets of my data, but am having a hard time getting the programming code to produce correct output for more than one model. I have hundreds ...
2
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1answer
35 views

Scaling of target causes Scikit-learn SVM regression to break down

When training a SVM regression it is usually advisable to scale the input features before training. But how about scaling of the targets? Usually this is not considered necessary, and I do not see a ...
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0answers
21 views

Weighted Least Squares with Standardized Coefficients [migrated]

I want to understand how weighted least squares regressions work to implement it in a more complex context. I think I'm a good step into that process, but I'm still wondering what the correct way to ...
0
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0answers
11 views

I want to make a regression using libsvm, if I get the label , how can I predict the feature value?

I get a 4160 * 10 trainData, the first column of trainData is label ,the rest column is feature value. Then I use libsvm in matlab to train. This is a row of trainData after scaling: 8 1:0.636364 ...
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0answers
6 views

confidence intervlas in rqss function

I have a problem with function rqss from quantreg package. I plot a model for a variable (say "x") with confidence intervals. When I plot a model for a modified variable (x/10000) confidence ...
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23 views

Cooks distance for NLS Regression with R

I had to rebuilt my standart lm regression into a nls regression as I had to determine a lower bound for one of my variables: NONLinear <- nls (PD04_AL ~ a * Health_Care + b * Utilities + c ...
0
votes
1answer
27 views

The R^2 score I get from GridSearchCV is very different from the one I get from cross_val_score, why? (sklearn, python)

I'm using GridSearchCV to pick a regressor. Once it's fitted, I pull out the chosen regressor with predictor = GridSearchCV(Pipeline(...), params={...}, cv=10, scoring='r2') ...
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28 views

numerical recipes c: which function for data-fitting

I worked through a couple of methods in the numerical recipes book (version 2) and am really not sure anymore, which function I need. I have a function like f(x,y)=a(x-x0)^2/(1+b*y)^2 and a couple of ...
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0answers
16 views

Weka LIbSVm & Time series forecasting

I'm tryng to use LIBSVM regression for a forecast of 6 months in following data: I would use LIBSVM with RBF kernel and SVMTType-SVR with default data (I'm not expert to modify that) Due the few ...
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0answers
16 views

sklearn LogisticRegression without regularization

Logistic regression class in sklearn comes with L1 and L2 regularization. How can I turn off regularization to get the "raw" logistic fit such as in glmfit in Matlab? I think I can set C = large ...
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2answers
43 views

Polynomial regression with two variables with R

I am trying to do something pretty simple with R but I am not sure I am doing it well. I have a dataset containing three columns V1,V4,V5 and I want to do a regression to get the coefficients Ci,j of ...
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0answers
31 views

c++ nonlinear least square data fit using mnewt

I seem to misunderstand the use of mnewt from numerical recipes. I have a function like f(x,y)=a(x-x0)/(y-y0) and would like to get optimal values for a, x0 and y0 using a number of (x,y,f) sets. ...
2
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0answers
28 views

SPSS: Comparing regression coefficient from mutiple models

Hope you guys could help me with a question I've been stuck on for a while. Assuming I have price of houses as the dependent variable and the following as the independent variable: 1. Age 2. Area 3. ...