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Questions tagged [regression]

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

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2 views

how to transoform the test data to deal with error “test shape[1] should be equal to the number of samples at training time”

I am using sklearn.svm.SVR for a regression task which I want to use my customized kernel method. Here is the dataset samples and the code: index density speed label 0 14 ...
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1answer
14 views

How to add prediction to polynomial regression

Is it possible to add function like predict from sklean library? And how to do it? def monomial(a,b): return lambda x : a * math.pow(x,b) Returns a list of monomials forming a polynomial of the ...
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5answers
10k views

Python Pandas: how to turn a DataFrame with “factors” into a design matrix for linear regression?

If memory servies me, in R there is a data type called factor which when used within a DataFrame can be automatically unpacked into the necessary columns of a regression design matrix. For example, a ...
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1answer
16 views

Regression with multivariate vectors and coefficients extraction

I want to create 1000 samples of 200 bivariate normally distributed vectors mu<-c(1,1) S<-matrix(c(0.56, 0.4, 0.4, 1),nrow=2, ncol=2,byrow=T) bivn<-mvrnorm(200,mu=mu, Sigma=S) ...
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0answers
19 views

Regression with levels 1-4 returns “1 not defined because of singularities” & NA values for 4

Education column has four levels (1, 2, 3, 4) Although I factored education, I get these errors. I know that the undefined issue is caused by collinearity, but don't know how to fix it. I checked ...
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1answer
16 views

How can I aggregate the error term of a regression to create a time series in R?

I have a dataset which includes the sales for a company in a given year (company code = gvkey, year = fyearq, sales = realsales), along with its growth rates and the volatility of these growth rates ...
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1answer
12 views

Reverse Label Encoder Features in Python

Consider the following example table that I'm trying to make predictions on As you can see, I have a mix of numerical (Num1 & Num2) and categorical features (Cat1 & Cat2) to predict a value, ...
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1answer
94 views

ordinalNet Package in R

I'm using the ordinalNet package in R for prediction. My Dataset has 51 Variables and 160k observations. In the ordinalNet() function, x has to be a covariate matrix and y has to be a factor. If I ...
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0answers
6 views

So just wondering, for testing the hypothesis beta1=0, will the p- value from the t and F tests always be the same?

So just wondering, for testing the hypothesis beta1=0, will the p- value from the t and F tests always be the same ?
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0answers
12 views

Polynomial regression without sklearn and numpy

Does anyone have an example of working polynomial regression without sklearn and numpy?
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1answer
16 views

How to get VIF from an h2o regression

I'm trying to get the the VIF scores from an h2o regression. Is there a VIF like function or data stored within h2o? Here's my example: library(ggplot2) library(h2o, quietly = TRUE) library(tibble) ...
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1answer
654 views

Changing visreg line colour

I'm using the R package visreg to visualise the results of a model. I want to change the colour of the regression line from the default blue to black. Adding col = "black" doesn't help. How do I make ...
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1answer
18 views

having ambiguity using customized kernel for `sklearn.svm` regressor

I want to use customized kernel function in Epsilon-Support Vector Regression module of Sklearn.svm. I found this code as an example for customized kernel for svc at the scilit-learn documentation: ...
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0answers
15 views

How to run a regression with dates and variables (each variable linked to a stock)?

I am trying to run a regression with dates (lines) and variables (columns). My problem: We haeve 60 stocks and for each of them 5 variables. It is the same variables for each stocks but I have more ...
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0answers
29 views

Residual Plot: Is the linear model appropriate for this dataset?

I am working on a linear regression analysis and in order to verify that the linear model was appropriate for my data, I produced a residual plot and found what looks like "patterns". I learned that ...
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0answers
29 views

fractional frequency weights in R's lm()

I understand that lm treats weights as "analytic" weights, meaning that observations are just weighted against each other (e.g. lm will weigh an observation with weight= 2 twice as much as one with ...
2
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1answer
52 views

Running simple regression in base Tensorflow 2.0

I'm learning Tensorflow 2.0 and I thought that it would be a good idea to implement the most basic simple linear regression in Tensorflow. Unfortunately, I ran into several issues and I was wondering ...
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0answers
23 views

To which value in the statsmodels summary relates the error bar size in the plot?

With the following code, I get a plot how the regression was done for my data. In the plot also vertical (error?) bars are shown. To which number in the summary refers the length of these bars, ...
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0answers
38 views

How to interpret result from statsmodels ordinary least squares model?

Inspired by Can scipy.stats identify and mask obvious outliers? I would like to understand the output from statsmodel's OLS. I adapted the code to today's requirements and would like to understand, ...
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0answers
29 views

What is on the “x-axis” of an plot from a Gaussian Process

I try the understand how the Gaussian Process works. So if I'm sampling from it, I will get values, which come from a multivariate distribution. Let's say I have 5 input features in my training data. ...
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1answer
19 views

Using statsmodels OLS on a test-set

I would like to use a technique from Scikit Learn, namely the ShuffleSplit to benchmark my linear regression model with a sequence of randomized test and train sets. This is well established and works ...
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0answers
12 views

Flexmix package: mixture of regression with nested structure

I am fitting a mixture of regressions via flexmix package in R. Given a data frame df with variables x,y,z i run a code of the form out <- flexmix(x ~ y + z, data=df, cluster=.., options=..) The ...
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2answers
10k views

unigrams & bigrams (tf-idf) less accurate than just unigrams (ff-idf)?

This is a question about linear regression with ngrams, using Tf-IDF (term frequency - inverse document frequency). To do this, I am using numpy sparse matrices and sklearn for linear regression. I ...
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1answer
75 views

Custom loss function in Keras for weighting missclassified samples

Assume that y_true and y_pred are in [-1,1]. I want a weighted mean-square-error loss function, in which the loss for samples that are positive in the y_true and negative in y_pred or vice versa are ...
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0answers
14 views

Spatial Regression, “w must be a pysal.W object” Error

When i am trying to perform Spatial Auto Regression analysis, i am having trouble with the weight function. I had tried to create a "w" matrix with KNN, however when i run i have the following; " w ...
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0answers
31 views

raster using prediction of bagging LASSO in r

Fit a bagging LASSO linear regression model with 80 variables d1<-traindata x.1 <- as.matrix(d1[1:95,2:81]) y.1 <- as.matrix(d1[1:95,1]) Bagging.fit <- Bagging.lasso(x=x.1, y=y.1,family=...
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1answer
45 views

Linear Regression on each column without creating for loops or functions

Applying regression on each of the columns or rows in a pandas dataframe, without using for loops. There is a similar post about this; Apply formula across pandas rows/ regression line, that does a ...
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1answer
32 views

Formulating MatLab Deep Neural Network without Images

I am trying to use MatLab to generate a neural network capable of regression. Essentially, I would like to map 36 inputs to 24 outputs. (Eventually I would like to transition the network to an RNN ...
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1answer
30 views

Linear algebra with large, sparse matrices

I want to solve the linear equation Ax = b, for the unknown matrix x. A and b are both large and sparse, and have shapes (when converted to dense) of 30,000 x 25 and 30,000 x 100,000, respectively. I ...
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0answers
24 views

How to generate PMML for stepwise polynomial regression

I have tried using R and it throws below error. How to generate PMML for stepwise polynomial regression ? Code snippet: library(reshape2) library(pmml) data(tips) fit <- lm(total_bill ~ poly(...
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3answers
59 views

Iterate over list and append in order to do a regression in R

I know that somewhere there will exist this kind of question, but I couldn't find it. I have the variables a, b, c, d and I want to write a loop, such that I regress and append the variables and ...
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0answers
16 views

Insights from RMSE Value

My data lies in the range -0.0275 to 0.99 and I am using Linear Regression. The RMSE value that I get is 0.14. What does this mean? Is it a good fit? Can you help or provide any material for getting ...
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0answers
17 views

Linear Interpolation with krige-Function in R

I'm doing a regression kriging in R and have already done the ordinary kriging with the residuals which worked absolutely fine. Now I want to do the linear regression with three prediction variables ...
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0answers
16 views

Surrogate modeling (regression with neural network) accuracy and region of trust

I am interested in how to increase the accuracy of the model and how to know where the model is accurate. I have also tried gaussian process regression and KNeighborsRegressor but so far have been ...
10
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3answers
8k views

Predicting Football match winners based only on previous data of same match

I'm a huge football(soccer) fan and interested in Machine Learning too. As a project for my ML course I'm trying to build a model that would predict the chance of winning for the home team, given the ...
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2answers
33 views

Removing unwanted characters from regression line equation

In prior builds of R/R-Studio I've used, when applying a regression formula to a ggplot, I would get a graph with the regression equation properly rendered. However, now that I've switched to R v3.5.3,...
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1answer
38 views

Which regression should i use for the give structure … its looks like logistic regression but when i tried not working

i have Set of data the which looks like give below.. C D 0 1.920 1.81 1 1.925 1.76 2 1.940 1.71 3 1.950 1.68 4 1.955 2.24 i just draw the graph which looks like Scatter Graph ...
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0answers
42 views

How do I output the results of a loop with multiple regressions of multiple dependent variables? [on hold]

I'm regressing time-series excess returns of 40 industries on Fama-French Factors. I managed to write a loop that can regress all 40 industries at once. However, I don't know how I can output the ...
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0answers
14 views

Error in forecast.ets(ets(object, lambda = lambda, biasadj = biasadj, : (list) object cannot be coerced to type 'double'

I have done some analysis, I have calculated variable changes (plants, animals) based on population data. I have done it until 2016 (I only have population data until then). Now what I am trying to do ...
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0answers
22 views

How to correctly scale new data points sklearn

Imagine a simple regression problem, where you are using Gradient Descent. For correct implementation you will need to scale values using mean of entire training dataset. Imagine your model is already ...
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1answer
98 views

How do I plot Linear Regression?

I wish to learn how to use Plotly with Python for data analysis. I have been using this website as reference. My current code looks like this: from plotly import tools import plotly as py import ...
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2answers
45 views

Regression with a small dataset

We examined a software which was supposedly used for cracking. We discovered that the working time depends significantly on input length N, especially when N is greater than 10-15. During our tests, ...
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1answer
24 views

Change ordering of esttab output

The solution below involving the community-contributed command esttab (based on code from estout's help file), provides a way to show coefficients from different regressions in the same row. However,...
2
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2answers
188 views

Calculate 95% confidence interval on the mean

I have an exercise that says Find a confidence interval of 95% on the mean number of games won by a team when x2=2300,x7=56 and x8=2100. Is there a function in R that gives directly such confidence ...
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0answers
37 views

How do I plot linear regression with Plotly in Python? [duplicate]

I am new to Python and Anaconda and I am trying to plot linear regression on a data set in Python using Plotly. I have followed some online guides (i.e. https://plot.ly/scikit-learn/plot-ols/) Edit: ...
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2answers
67 views

VS 2019 Ctrl + , is not behaving as VS 2017

I remember if I typed Ctrl + , in VS 2017 I could navigate to almost everything that had the typed characters, But in VS 2019 it searches only files. Here is what 2019 looks like But in 2017 it ...
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2answers
62 views

Plot scatter plot when values are wrongly paired

I am trying to create some correlation plots based of a data frame that I created using dplyr's spread() function. When I used the spread function, it created NAs in the new data frame. This makes ...
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1answer
126 views

How to add linear lines to a plot with multiple data sets of a data frame?

I have the following data frame: expected observed group 1: 0.5371429 0.0000 1 2: 1.3428571 1.3736 1 3: 2.6857143 2.4554 1 4: 5.3714286 3.6403 1 5: 0.5294118 0.0000 ...
1
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1answer
111 views

Script won't run (Error in terms.formula(formula, data = data) : 'data' argument is of the wrong type

I have run the script below numerous times and it has worked until this morning, when it suddenly produced the error message: (Error in terms.formula(formula, data = data) : 'data' argument is of ...
2
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2answers
108 views

ggplot2: Problem with x axis when adding regression line equation on each facet

Based on the example here Adding Regression Line Equation and R2 on graph, I am struggling to include the regression line equation for my model in each facet. However, I don't figure why is changing ...