for issues related to linear regression modelling approach

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2answers
31 views

linear-regression with torch7 demo

I am following this demo- https://github.com/torch/demos/blob/master/linear-regression/example-linear-regression.lua feval = function(x_new) -- set x to x_new, if differnt -- (in this simple ...
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1answer
32 views

sas covariates in a linear regressions

I am running a simple linear regression in SAS. The regression has three different groups of participants as the predictors (with group 1 as the reference), the outcome a continuous social support ...
0
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0answers
38 views

How to visualize confidence interval for linear regression

The model is simple, I have two arrays, X and Y, and we want to run linear regression Y=aX+b. For example, if df denotes our data frame: X = df.x Y = df.y result = ols(x=X, y=Y) (a,b) = result.beta ...
1
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1answer
29 views

Python sklearn.linear_model: LinearRegression() ValueError occured when .predict()

My training matrix X has shape (5182, 19231) and y is a list of 1s and 0s with length 5182. My test matrix has shape (496, 5477). I stored them in seperate pickle files. Here is my code: def read(...
2
votes
1answer
52 views

Calculating multiple R squared values by groups

This toy example allows me to reactively update the R squared value for two vectors I'm interested in from the mtcars dataset for linear regression. library(shiny) ui <- fluidPage( ...
0
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2answers
83 views

Running several linear regressions from a single dataframe in R

I have a dataset of export trade data for a single country with 21 columns. The first column indicates the years (1962-2014) while the other 20 are trading partners. I am trying to run linear ...
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0answers
52 views

Weighted effect coding in R

I have a data set with a categorical variable and a continuous dependent variable, and I want to know the effect of deviation of mean of each category from the overall mean. str(dat) 'data.frame': ...
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0answers
26 views

R - paste() invalidates UDF input object

The below function used to work before I added the compatibility for factorMain by changing static response variable in lm() description to the following: <<..paste("factorMain", "~ ."),..>>. ...
2
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1answer
73 views

ggplot2: how to get values for the regression line equation, r^2 and p value?

I cant work out how to get the regression line equation, r^2 and p value of the linear regression I have plotted using the function geom_smooth. This is my code: g <- ggplot(data=data.male, ...
0
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1answer
41 views

Statsmodel Multiple Linear Regression Error - Python

I am running (what I think is) as fairly straightforward multiple linear regression model fit using Stats model. My code is as follows: y = 'EXITS|20:00:00' all_columns = "+".join(y_2015piv....
1
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1answer
40 views

ggplot2; single regression line when colour is coded for by a variable?

I am trying to create a scatterplot in ggplot2 with one regression line even though colour is dependent on the 'Survey Type' variable. I would ideally also like to specify which survey type is which ...
0
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0answers
31 views

L2 regularized MLR using caret, and how to make sure I am using best model while predicting

I am trying to do L2-regularized MLR on a data set using caret. Following is what I have done so far to achieve this: r_squared <- function ( pred, actual){ mean_actual = mean (actual) ...
2
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1answer
41 views

R: function returns numeric(0) but code works outside function

I am currently working with R and I'm trying to write a function that derives the partial residuals for a multiple linear model. I know that there are existing functions in R but I want to write a ...
0
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3answers
51 views

Regression in R with Groups

I have imported a CSV with 3 columns , 2 columns for Y and X and the third column which identifies the category for X ( I have 20 groups/categories). I am able to run a regression at overall level but ...
2
votes
1answer
176 views

Tensorflow on simple linear regression

I am a beginner in machine learning and tensorflow. In the first step trying the tensorflow, I tried a simple multivariate linear regression. However, it seems the model stuck at a local minimum. Here ...
0
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0answers
32 views

ar() function vs lag variables in lm()

I am trying to understand how the ar() function of the "stats" package differs from simply using lag variables in a regular linear regression through the Base lm() function. I have ran: ar(lh) ...
1
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2answers
30 views

Loop to create Regression Models

I have a single data frame consisting of x unique combinations of region and channel. I need to create a distinct regression model for each the x combinations using some sort of a loop. region ...
0
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2answers
57 views

python groupwise winsorization and linear regression

I am new to the python world. I have to deal with financial datasets. Say I have a data frame looks like this: TradingDate StockCode Size ILLIQ 0 20050131 000001 13.980320 77.7522 ...
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0answers
34 views

Relationship between sklearn .fit() and .score()

While working with a linear regression model I split the data into a training set and test set. I then calculated R^2, RMSE, and MAE using the following: lm.fit(X_train, y_train) R2 = lm.score(X,y) ...
0
votes
1answer
36 views

Perform regression from CSV file in R

I am new to R and want to perform a linear regression from the data in a CSV file as follows: Data = read.csv("ErrorTest.csv",header=T, row.names=NULL) regmodel=lm(Error ~ Const, data = Data) ...
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0answers
22 views

Error message: Na/NaN/Inf

I am trying to add a best fit line to a scatterplot where the y variable has been log transformed. My command is: abline(lm(log(Epiphyte.Cover)~Seagrass.Cover)) And the error message that keeps ...
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0answers
28 views

R: test quadratic regression with interaction

I have data from an experiment with two conditions (dichotomous IV: 'condition'). I also want to make use of another IV which is metric ('hh'). My DV is also metric ('attention.hh'). I've already run ...
0
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1answer
114 views

Multiple Linear Regression Model by using Tensorflow

I want to build a multiple linear regression model by using Tensorflow. Dataset: Portland housing prices One data example: 2104,3,399900 (The first two are features, and the last one is house price; ...
3
votes
1answer
93 views

how to create DataFrame from multiple arrays in Spark Scala?

val tvalues: Array[Double] = Array(1.866393526974307, 2.864048126935307, 4.032486069215076, 7.876169953355888, 4.875333799256043, 14.316322626848278) val pvalues: Array[Double] = Array(0....
0
votes
1answer
70 views

How to apply linear regresssion of sklearn for some string variable

I am going to predict the box office of a movie using logistic regression. I got some train data including the actors and directors. This is my datas: Director1|Actor1|300 million Director2|Actor2|...
1
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1answer
54 views

Click revenue prediction model

I'm trying to build a model for eCommerce that would predict revenue for single click that comes via online-marketing channels (e.g. google shopping). Clicks are aimed for product detail pages so my ...
1
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1answer
29 views

R - Predict(), renaming columns, and “ had 10 rows but variables found have 20 rows ”

From other threads I've seen people provide solutions that are specific to exact problems, but I don't understand the underlying reason of what's going wrong. I do... modTest = glm( trainLabels[,1] ~...
2
votes
1answer
85 views

lme4:::lmer reports “fixed-effect model matrix is rank deficient”, do I need a fix and how to?

I am trying to run a mixed-effects model that predicts F2_difference with the rest of the columns as predictors, but I get an error message that says fixed-effect model matrix is rank deficient ...
0
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1answer
23 views

Why is SVD applied on Linear Regression

I cannot understand on these slides why is the SVD applied to the Least Square Problem? And then it follows this: And here I don't understand why was the Derivative of the Residuals taken, and is ...
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0answers
9 views

SPSS: Interpretation of coefficients - OLS

I could need some help interpreting my findings. I've been conducting a linear OLS regression with the following output: I'm trying to discover what the influences are from an acquisition on the ...
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votes
2answers
31 views

In R lm() regression fit, how handle a continuous effect and a ranged effect combined?

I want to know how to fit data into the lm() function in which one effect is continuous and the other effect takes place only on a range of the predictor. Would the function (for example a ranged x^2 ...
2
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0answers
86 views

Wrong intercept in Spark linear regression

I am starting with Spark Linear Regression. I am trying to fit a line to a linear dataset. It seems that the intercept is not correctly adjusting, or probably I am missing something.. With intercept=...
4
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2answers
90 views

Difference between linear and non linear regression

In Machine Learning, we see that w1x1 + w2x2 +...+ wnxn is linear regression model where w1,w2....wn are the weights and x1,x2...x2 are the features whereas w1x12 + w2x22 +...+ wnxn2 is a non ...
0
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2answers
81 views

Error while performing linear regression [closed]

I am trying to perform Linear Regression on the below data:- Need to perform Linear Regression on Air_weight and Water_weight. Kindly let me know how to resolve this error. This is the code i tried ...
0
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1answer
40 views

Linear Regression with 3 input vectors and 4 output vectors?

Task: As an example, we have 3 input vectors: foo = [1, 2, 3, 4, 5, 6] bar = [50, 60, 70, 80, 90, 100] spam = [-10, -20, -30, -40, -50, -60] Also, we have 4 output vectors that have linear ...
0
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0answers
23 views

How to use existing trained model using LinearRegressionModel to work with SparkStreaming and predict data with it [duplicate]

I trained data using LinearRegression and saved the model, now I am trying to use this in SparkStreaming and predict the data using it, but my program does not predict the data, other lines fetching ...
1
vote
1answer
65 views

Multivariate Linear Regression in Python - analog of mvregress in MATLAB? [duplicate]

I want to use the same function or method in Python as mvregress in MATLAB. As an example, we have x1, x2, x3, x4, x5, x6 inputs and y1, y2, y3 outputs. After using this function we should get some ...
0
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0answers
32 views

Linear Regression with character matrix, containing “0”, “1”, “2” and “-” in R. Are the numbers converted to numericals?

first of all I have to say I am very new to R. I just have been in contact with S plus throughout my degree but I only have been using R studio for a week now. I am currently working on a small ...
0
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0answers
8 views

unexpected error linear model---unexpected symbol in “model = lm(DV”

I am getting the error when I am trying to build linear model with 5 independent variables . unexpected symbol in "model = lm(DV" model = lm(DV~IV1+IV2+IV3+IV4+IV5) Sample data: Date IV1 IV2 ...
0
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0answers
53 views

Analysis of regression algorithms on matlab environment

Hi I want to do a comprehensive analysis of regression techniques and so will go on editing this question. I am trying to solve a regression problem using techniques available in Matlab. Ideally I ...
0
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0answers
24 views

Bicoin price prediction using spark and scala [duplicate]

I am trying to build a prediction model for Bitcoin price using Apache spark and scala. I have preprocessed the data and built following format: TimeStamp BTC price USD price MaxPrice minPrice ...
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votes
1answer
33 views

Is there a way to plot linear regression in ImageJ?

I have a coding problem where i want to plot values (x and y) and calculate the linear regression and plot it in imageJ. Can anyone help? I tried this public class Plot implements PlugIn { ...
1
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0answers
34 views

Robust statistics linear regression in seaborn pairplot

Trying to implement robust statistics instead of ordinary least squares (OLS) fitting so that outliers aren't such a problem to my fits. I was hoping to implement this in the pairplot function of ...
-1
votes
1answer
37 views

Python: Why does my linear regression plot give me many messy coloured lines?

This is the code I got, but I am unsure why it would even give me such a bad plot. Where did I went wrong? import pandas as pd df = pd.read_csv('https://archive.ics.uci.edu/ml/machine-learning-...
0
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0answers
17 views

Is it possible to use k-fold cross validation for regression models?

Some texts I read said it's possible to optimise the lambda parameters using this method, but using sklearn, it seems that continuous models are not supported. This is reasonable, since the aim of the ...
0
votes
1answer
49 views

How to use the * operator in lm() in R when the independent variable is a matrix

I'm fitting several multi-variable linear models using lm() Basically matrix1 holds the dependent variables (y) and matrix2 the independent ones (x) model.1<-lm(matrix1[, 1] ~ matrix2) Where ...
0
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0answers
12 views

Using -1 as dummy variable?

Can we take 1,0 & -1 as dummy variable in the time series regression modelling? Also can we put all these 3 numbers(1,0 &-1) under 1 variable?
0
votes
1answer
29 views

Derive standard error of a transformed variable in linear regression

I would like to calculate the standard error of a transformed variable from my linear regression, i.e. divide two variables and get the standard error from this variable. I use the deltamethod ...
0
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1answer
30 views

Including lagged independent variables - R

I would like to run a regression where I use both the current value and lagged values from a specific independent variable. My dataset This is an example extract from my dataset: dt ...
0
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1answer
47 views

Sum of Sine Fits

I have some sample data found below that I'm attempting to make two curve fits to. The first is a fit based on the sum of sines and cosines which I was able to do using the statsmodels OLS function. ...