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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20 views

np.where error when trying to select two columns

I am trying to perform a multiple regression on the 'Linnerud' dataset from sklearn. I have an np array that is 20x3, but I only want to select two of the three columns. I can add a single independent ...
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8 views

Pipeline deployment in Flask (python)

I'm trying to deploy my model built using Pipeline via Flask, however I'm facing the following Attribute error 'Can't get attribute 'FeatureSelector' on main' from 'app.py'' Here is my code for model....
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1answer
26 views

Regression line using Relplot in seaborn

Below is a working example where I need to draw regression line. I have searched online but I see another function like regplot, implot to draw regression lines but here I am using replot. How I can ...
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How to use regular expressions in lint-staged

I want to use regular expressions in lint-staged, which list all missing alt attribute of image tags in the files. package.json "scripts": { "postinstall": "find node_modules/ -name \"*.info\" -...
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1answer
14 views

Deploying simple linear regression model using RShiny

I am trying to deploy simple linear regression model using RShiny. But whenever, I run the app and give a random predictor value, instead of single valued output, I am getting a table of entire fitted ...
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1answer
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What does the background area mean in seaborn regression plot?

What does the background in blue mean or determine in the regression plot when using seaborn? What determines its width at both ends?
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27 views

stepwise regression returns an empty model (no predictors chosen)

I have a numerical (continuous) dependent variable and more than 40 independent variables. (2 numerical, 3 categorical and the rest are dummy variables). I tried to do both forward and backward ...
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8 views

can we add a polynomial or regression equation for the plot with R squared?

ggline(UWGIRP, x = "VDP", y = "LST", add = c("mean","reg.line"), title = "LST for different vegetation proximities over Builtup Proximities", shape = "BDP", size = 1.5, ...
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8 views

Nonparametric regression using npreg() in R got large bandwidths

I nonparametrically regressed a binary variable y on two continuous covariates x1 and x2 using npreg() and npregbw() in R and got extremely large bandwidths (in millions). A similar example is shown ...
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6 views

LinAlgError: not positive definite, even with jitter

I am trying to use Gaussian process regression on a cancer dataset using GPy, but the problem is when I fit a combination of 3 or 4 kernels the system collapses and gives the LinAlgError: not positive ...
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1answer
49 views

ML model for Signal Decomposition

So recently I got a task which can be summarized as follows: Suppose we have 3 functions f1, f2, f3 and a certain combination of the functions gives us F. af1 + bf2 + cf3 = F The component ...
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How can I perform Isometric log-ratio transformation in Python?

I want to transform my categorical data with ILR transformation in Python (and later transform it back with the inverse). This is for the purpose of transforming my data so I can run a Random Forest ...
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1answer
15 views

Negative r squared for linear regression but positive r squared with Random forest regressor

My R squared score for Linear regression is -1.56 but my R squared score for Random Forest regressor is around 0.48. Is it okay to get scores like this?
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Bias and variance calculation for Ridge estimator of β

I understand how bias and variance for ridge estimator of β are calculated when the model is Y=Xβ + ϵ. But I have the model Y=Xtβ + ϵ. I don't understand if a model like that makes sense, can someone ...
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1answer
24 views

machine learning problem:i made a new column in test data but instead of median value it is filled with NaN

Here i am trying to predict the sales price by taking median of price with respect to area and mzzone here are the values: combo=pd.pivot_table(train,values=['SALES_PRICE'],index=['MZZONE','AREA'],...
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POLR of Probit Regression is failing

I am trying to tune some models to prepare for an experiment, utilizing the following setup: R version 3.5.2 (2018-12-20) -- "Eggshell Igloo" Copyright (C) 2018 The R Foundation for Statistical ...
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1answer
28 views

Linear Regression with one variable

While implementing Gradient Descent Algorithm in linear regression, the prediction that my algorithm is making and the resulting regression line are coming as a wrong output. Could anyone please have ...
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2answers
21 views

Why is negative (MSE or MAS) Scoring parameter like- neg_mean_absolute_error in SKLEARN is considered for regression model evaluation

I an a novice in Machine Learning and while going through the course I came across the "Scoring Parameter". I understood for Regression model evaluation, we consider the negatives of Mean Squared ...
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1answer
53 views

COVID-19 Data visualization with R [closed]

I wanted to use this time to improve my skills with R. I chose CoVID-19 as my topic and would like to visualize some data and maybe analyze it. I would be interested in how globalization is connected ...
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1answer
49 views

R nls() Initial Parameter Problem, nonlinear Regression

I get a error message: Error in nlsModel(formula, mf, start, wts) : singular gradient matrix at initial parameter estimates when using the nls() function like form_Q10_parabolic_SM <- as....
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11 views

Keras “class_weights” parameter usable for regression?

I am training a Sequential model for regression. I noticed there is a "class_weights" parameter in the fitting function. As I understand one can give a different importance to a class during ...
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9 views

Implementing Linear regression with leave-one-out cross validation in MATLAB

I have a data set of 87 variables and 1 outcome where all are continuous. I need to use linear regression with leave-one-out cross validation to create a model/equation with prediction's accuracy, ...
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3answers
55 views

How to make a loop for these regressions?

I have a dataframe with 10 columns like this: df = structure(list(X1 = c(-0.158841494166799, 1.74997712540787, -0.603638753496694, -0.253379995687274, -1.13536828104642, -2.72698649676692, 0....
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6 views

Automating regression test involving two different sites

I am trying to automate regression test using puppeetersharp. My test case is to update a value of one field in one site and verify if the value has flow to the other site, The value takes 10 minutes ...
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1answer
27 views

Stata and how to use local variables on a regression

I have 2 sets of variables which explain an outcome (motor and size) and I am interested in finding which part of the predicted outcome belongs to which set. local motor could contain 1 or more ...
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1answer
31 views

scipy.optimize.minimize can't find least square solution

My intention was to solve the l1 error fitting problem using scipy.optimize as suggested in L1 norm instead of L2 norm for cost function in regression model, but I keep getting the wrong solution, so ...
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1answer
36 views

using a list of regressors and storing the values of betas

I have a list of circumstances and effects: I want to generate a matrix with betas containing the values of betas. I am going to run the loop 10 times, because i am in fact going to bootstrap my ...
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0answers
16 views

Interpret results Diff-in-Diff model [migrated]

I need to run a Diff in Diff analysis, but I'm not sure whether my code is ok and how to interpret the results. I want to assess the effect of a law implementation on domestic violence. Here are the ...
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2answers
59 views

Syntax for three-piece segmented regression using NLS in R when concave

My goal is to fit a three-piece (i.e., two break-point) regression model to make predictions using propagate's predictNLS function, making sure to define knots as parameters, but my model formula ...
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1answer
18 views

How to fit a piecewise regression in R, and constrain the first fit to pass through the intercept..?

I would like to perform a broken-stick regression in which the intercept of the first segment is constrained to pass through the origin. The below code uses the 'segmented' package in R to fit two ...
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1answer
13 views

Correlation Coefficient over Correlation Determination in linear regression

i am new to machine learning and i am using housing price dataset from kaggle.com to solve regression problem. i want to know the difference between Correlation Coefficient and Correlation ...
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1answer
21 views

Error in eval() when using randomForest in R

I am trying to use the randomForest command I have a sparse matrix, called counts, of single-cell expression data, and another variable, identity, which has the type of cell counts <- t(as.matrix(...
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5 views

How to do Regression testing in Azure?

Currently we have a test plan for each sprint and a regression test plan for the overall application. New test suites are added to each sprint and some are also copied to the regression test plan, ...
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2answers
55 views

Do I had to loop? Is there a faster way to build dummy variables?

I have some plant data that looks like (but I have up to 7 attributes): Unnamed: 0 plant att_1 att_2 ... 0 0 plant_a sunlover tall 1 ...
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1answer
23 views

Regression models with same fitted values that output FALSE when compared to each other with equal operator in r [duplicate]

Given the cuadratic models for the odor dataset from the faraway package: > lmod <- lm(odor ~ I(temp) + I(gas) + I(pack)+I(temp^2)+I(gas^2)+I(pack^2)+I(temp*gas)+I(gas*pack)+I(pack*temp),odor) ...
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2answers
36 views

Logistic Regression sklearn with categorical Output

i have to train a model with logistic Regression in sklearn. I saw everywhere that the outcome has to be binary but my label is good, bad or normal. I have 12 features and i don't know how can i deal ...
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0answers
28 views

IV regression computation

For my thesis I am doing an Instrumental Variables (IV) regression and I was wondering if I did it the right way. Couple of issues I have: Comparing the linear model with the IV models, the sign of ...
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0answers
7 views

why my Catboost Regressor train and evaluation metrics will not change over iterations?

Context Training a very wide dataset (969, 8789) with few (20) categorical features. All the remaining are numeric. In order to test Catboost´s allegedly capacity to deal with categorical and missing ...
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1answer
23 views

weighted least absolute regression in python?

I was wondering if there's a function in Python that can find the best-fitted line (in 2D) or best-fitted plane (in 3D) of a set of data by least absolute deviation and while considering uncertainties ...
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1answer
33 views

R logistic regression extracting coefficients in a loop: error with setting up loop

I'm trying to build a logistic regression model with 3 predictors, and I have a list of IDs for each predictor like below. (using mtcars dataset as an example) var1 <- c("mpg", "cyl", "disp") var2 ...
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1answer
27 views

Using “~ call” in R with dynamic variables

I'm currently working on regression and classification with R. Therefore I'm using a formula similar to X ~ Y in order to make predictions about X. I am now trying to use a function inside a for-...
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12 views

What should I use to model a non-monotonic relationship with values between 0 and 1? [migrated]

I am trying to find a good model to fit to these curves: They are relationship between the probability of a dispute escalating into war, and the number of disputes in the past ten years between those ...
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1answer
23 views

How to specify “strict” priors for fixed coefficients in rstanarm?

How do I provide a prior distribution for a coefficient with mean in the range 1e-05 and standard deviation (sd) in the range 1e-06? What are the distributions to choose for such high precision (sd &...
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0answers
58 views

Getting an error during runtime after submitting values for a regression model in flask

Error: Traceback (most recent call last): File "D:\Anaconda\lib\site-packages\flask\app.py", line 2463, in __call__ return self.wsgi_app(environ, start_response) File "D:\Anaconda\lib\site-...
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1answer
43 views

how to solve linear regression with conditions in R

I would like to do a linear regression with conditions, like: Y = ax1 + bx2 +c, a>0 , b <1 and c>=0 Y <- c(167, 136, 195, 174, 144, 135, 89, 81, 114, 111) x1 <- c(2.9, 3.4, 0.7, 1.1, 3.5, 5....
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0answers
9 views

Does it make sense to use nested CV with different algorithms for different folds?

I have a small dataset, therefore, I don't want to split my data into training and testing set. I would rather calculate the generalisation error with nested CV. There is a python library called TPOT ...
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0answers
20 views

shape of identity matrix in ridge regression

I am trying to implement manually ridge regression for the b coefficients in python. I want to make the inverse matrix from this formula: (XT X+λI)-1, but I am not entirely sure which should be the ...
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0answers
18 views

Android NNAPI support for ML algorithms

Android NNAPI is a low level C API for implementing ML operations. Given trained model of classification type, it is pretty much straightforward to reconstruct the same model using Android NNAPI's. I ...
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1answer
27 views

What does r option in Stata's regress command do?

I've seen the ,r option used in Stata with the regress command: . regress whora edad i.estudios i.cnae_4 i.sexo i.tipojor, r However, I can't find that option in the documentation nor can I figure ...
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0answers
9 views

How does correlation effect the regression model

I am new to machine learning and took the housing price dataset from kaggle for practice. couldnt get good score so googled and found that Multicollinearity would play a very important role in ...

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