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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how to perform machine learning based forecast for multiple variables for the next n years in Python

I am working on a self-project, where I have some UN data for 25 years. Multiple variables, such as Employment ratio, total population, and a few more features. These variables may or may not be ...
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6 views

Regularization in Ridge Regression model [on hold]

Regularization As λ increases from 0 to infinity, select the correct option that describes the pattern of the variance of the model. Increases initially and then eventually starts decreasing ...
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25 views

How to fix, Regression gives me nonsense output, no training?

I need some help with my tensorflow code. It has to be a regression for around one million datasets like: 0.0611814 13824 10338 2695 8 17 3 10 4.5135 0.0622363 13824 10337 2690 8 17 4 10 4.61102 0....
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17 views

How to write regression loop over moving window and store data?

Trying to write a loop to run a regression on multiple portfolios. It's over a 3 year moving window (so 1990-1993, 1991-1994, 1992-1995,...) and I would like to store the data in another dataframe and ...
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14 views

Could you help me in Matlab and MARS algorithm?

I'm trying to figure out multivariate additive regression splines and write code in Matlab. I couldn't solve how to find knot points. Thanks for any help.
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17 views

Why Tensorflow error: `failed to convert object of type <class 'dict'> to Tensor` happens and How can I solve it?

I am doing a task on traffic analysis and I am stymied with some error in my code. My data rows are like this: Hour_percentage | DOW (Day of week)| Hour | density | speed | label (predicted speed for ...
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29 views

What does the i.year command do to my data algebraically? [on hold]

I have a dataset of different countries ranging from 2005 to 2016. It looks at the alcohol consumption abundance as a population percentage in each country for every year. I am looking at the effect ...
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46 views

Plot random intercepts from lmer model

I ran a regression that looks as follows: fit <- lmer(support ~ 1 + (1 | country), data = df, REML = F) I want to plot the varying intercepts for the different countries. I tried with the ...
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22 views

How do i predict future multiple values given a single value using a trained tensorflow model?

I am trying to build a program in tensorflow that can predict how a certain baseball player will do in future seasons. To train it, i split the dataset so that X_Train contains 5 specific statistics, ...
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29 views

How do I resolve the error in generating multivariate normal distribution [on hold]

I am running the following regression in Stata reg ln_cost_pf ln_Q ln_Q2 ln_pkf ln_plf mat A = e(b) mat list A mat B = e(V) mat list B matrix M = A[1,1], A[1,2] matrix N = (B[...
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10 views

Keras ConvLSTM2D: why use the averagepooling3d and how to to regression

i have been studying Keras ConvLSTM2D: ValueError on output layer i want to use the same code but i want to do regression ( single value ). I dont know how to do this. And i also dont understand the ...
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17 views

Including the (0,0) point in a linear regression in Rstudio

I have run a simple linear regression in Rstudio with two variables and got the following relation: y = 30000+1.95x Which is reasonably fair. My only concern is that, practically the (0,0) point ...
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5 views

Try to implement logistic regression on the r dataset

Basically i am implementing ordinal logistic regression on the las vegas trip advisor dataset. I have done dummy coding on all the variables and in order to do that i removed the dependent variable, ...
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0answers
15 views

What is the formal regression equation used by lm.cluster in R?

When using lm.cluster, I have three fixed effects variables (which have different levels), and 1-3 'explanatory' variables (in one case I have 1, and in another case I have 3). What is the formal ...
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1answer
39 views

Regression without independent variables - Python and Stata [on hold]

In Stata you can use the command regress on one variable and this outputs the coefficient, std error, t-statistic, p-value etc. For example: regress a My question is, in Python, is there an ...
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18 views

Neural network regression with multi-value (probabilistic) functions

I'm a bit of a beginner in the art of machine learning. Here is a rather conceptual question I've been wondering: Suppose I have a function X->Y, say y=x^2, then, generating enough data of X->Y, I ...
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1answer
51 views

Using libreOffice calc to fit a plane through a set of 3D points minimizing the total distance

Consider a set of 3D points: | y/z | -1 | 0 | 1 | |:---:|:------:|:------:|:------:| | 5 | 19.898 | 19.905 | 19.913 | | 0 | 19.898 | 19.92 | 19.935 | | -3 | 19.883 | 19.883 | 19....
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30 views

Cannot get goodnes-of-fit measures from ivprobit output (in ivprobit package)

I am using the ivprobit function from the ivprobit package in R. This ivprobit function is a binary regression with instrumental variables. However, I could not find a way to derive any goodness-of-...
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1answer
39 views

Inverse regression procedures with robust linear models, quantile regression, and machine learning methods

Context Often in dose-response models we regress some range of doses against a response variable, but we are really interested in identifying the dose required to elicit a particular response. ...
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2answers
35 views

Matlab deep learning regression

I'm trying to build my own regression network using Matlab. Although what I've got so far looks a bit pointless, I do want to expand it later into a slightly unusual network so I am doing it myself ...
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0answers
11 views

How can I simulate a dataset from a robust linear model or a quantile regression model?

I have a dataset which I have fitted with a robust linear model (MASS::rlm), and I would like a computationally efficient way of simulating a new dataset from this rlm with the difference that I "know"...
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0answers
19 views

Can't fit the Negative Binomial regression to log-data

I am working with high-dimensional count data, I have first fitted a Poisson regression in which the explanatory variables are log-transformed. I wanted to do the same with the Negative Binomial ...
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0answers
32 views

How to combine KNeighborsRegressor with RandomForestRegressor for prediction?

I have done two predictions for some data, one with KNeighborsRegressor, another with RandomForestRegressor, and have scored them. I would now like to use both models combined to make a prediction. ...
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2answers
16 views

How to fit a polynomial (using np.polyfit or something else) under conditions on intercept?

I want to write a generic function that takes as input two 1-D arrays and an integer N and return the most likelihood polynomial of degree N that fits my data. I want this polynomial to be of zero ...
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0answers
24 views

How do I do prediction with Zero-Inflated regression model?

I am fitting a Zero-Inflation Poisson regression model, this it the summary output: Call: zeroinfl(formula = m ~ lcounts | 1, dist = "poisson") Pearson residuals: Min 1Q Median ...
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0answers
31 views

time serie decomposition with linear trend

I would like to decompose my time series in a linear trend (the trend would be the result of a linear regression model) then seasonality and residuals. The packages I explored did not match my ...
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0answers
17 views

How to avoid error “requires numeric/complex matrix/vector arguments”?

I am currently running a post-hoc analysis with the function lsmeans after running a multifactorial gls model. Like this: vfix3 <- varIdent(form=~1|time*factor(aq)) mix1 <- gls(G ~ ph+feed, ...
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0answers
12 views

Using Simple Linear Regression for bid prediction

Hi So i have this set of columns which are translated eventually to a one-hot-encoding table. (all categorical for now). i need to find the multipliers that transform an initial bid to the final bid. ...
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0answers
14 views

svm on time series horrible results

I am training a svm on time series data with 219k datums that have 100 features each. Here is what the actual looks like: actual results But I get predictions that look like: prediction. I removed ...
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0answers
16 views

Multi label image classification/regression where each label has different intensity value, Keras

I want to do multi-class multi-label image classification/regression to recognize human expression. I have around 2500 (128,128,3) images and every sample has 22 facial action units where each AUs can ...
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2answers
58 views

Regression model point estimation

I'd like to retrieve the values of a second order polynomial regression line based on a list of values for a parameter. Here is the model: fit <- lm(y ~ poly(age, 2) + height + age*height) I ...
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2answers
34 views

quadratic regression in a loop

Following is my dataframe data <- data.frame(y = rep(1:10, times = 4), dataID = rep(1:4, each = 10),x1 = rnorm(40), x2 = rnorm(40), x3 = rnorm(40)) For each dataID and x combination, I am ...
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15 views

Regression from feature combinations

I wish to use tensorflow to do regression from a set of different features an artifact can have. My input data will be a binary vector of features that the artifact can either have or not. The output ...
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1answer
14 views

can we generate loss curve for mlpregressor with lbfgs solver

is it possible to generate loss curve for MLPregressor with lbfgs solver? it has been specified that it can be generated only for 'adam' solver. if it can be done, kindly help me in this regard.
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26 views

How build a artificial neural network archtitecture for regression task based on time series data

i have many datasets of different time series. There ist one constant value to each of the datasets. I would like to predict these values. So the Inputs have to be time series data. I'm thinking ...
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40 views

i don't understand why anwser be like this [closed]

why answer predict 64 is 4.06? Please tell me or explain about that this's help for my project to graduate
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1answer
23 views

Passing New Data to simulate.glmmTMB

In a previous question (Generate a predicted count distribution from a ZINB model of class glmmTMB) I asked how to generate a predicted count distribution for a zero-inflated negative binomial model ...
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1answer
44 views

plot regression plane without points - R

dat <- data.frame(nitrogen = runif(50, 0, 10), temperature= rnorm(50, 10, 3)) modmat <- model.matrix(~ nitrogen * temperature, dat) coeff <- c(1, 2, -1, 1.5) dat$soil <- rnorm(50, mean = ...
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1answer
40 views

Multiple regression with pykalman?

I'm looking for a way to generalize regression using pykalman from 1 to N regressors. We will not bother about online regression initially - I just want a toy example to set up the Kalman filter for 2 ...
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32 views

Regression using Deep Learning

Iam trying to use a regression deep learning algorithm to predict the values of a set of reading, using Matlab. The following error appears when using the TrainingOption function: "Invalid solver ...
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1answer
27 views

Multivariable linear regression doesn't get more accurate with higher polynomial degree?

I'm computing the MSE on the training set so I expect the MSE to decrease when using higher polynoms. However, from degree 4 to 5, the MSE increases significantly. What could be the cause? import ...
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1answer
46 views

Automatically recognize that a variable has been factorized before in a regression in R

I want to write my own predict function but face some problems doing so. At first I wrote a code for a logistic regression. Before you can run the logistic regression, you have to manually factorize ...
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1answer
62 views

Extract regression coefficients out of large list in R

I have a large data frame with about 100 columns and splitted it up by year. I want to regress x[i] from the precedent year as the independent variable on x[i] the subsequent year as the dependent ...
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1answer
76 views

predict function with lasso regression

I am trying to implement lasso regression for my sales prediction problem. I am using glmnet package and cv.glmnet function to train the model. library(glmnet) set.seed(123) model = cv.glmnet(as....
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0answers
24 views

3D Inputs for Random Forest Regression

Problem Looking at examples of Sklearn's random forest regression, such as with the IRIS dataset, the inputs are vectors of size [n_samples, n_features]: slen swid plen pwid 5.1 3.5 ...
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2answers
77 views

Gradient Descent implementation in python?

I have tried to implement gradient descent and it was working properly when I tested it on sample dataset but it's not working properly for boston dataset. Can you verify what's wrong with the code. ...
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0answers
11 views

Can you combine 3 similar predictor variables when fitting a model?

The question is about the affect on house prices of the following predictors: distance to amenity 1 distance to amenity 2 distance to amenity 3 square footage number of bathrooms parking type I ...
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1answer
22 views

How to change code for plot function of a regression?

I want to plot more than one graph in R. However, I don't want to use the par() or layout() function. I want to change the plots by pressing enter just like the inbuilt plot function for a regression. ...
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1answer
31 views

Function for multiple regression, using QR decomposition and backward substitution

I am trying to write a function for a multiple regression analysis using a QR decomposition and backward substitutions with a for loop. I have an input matrix X and an independent variable y and I ...
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0answers
43 views

(R) Error in elnet(x, is.sparse, ix, jx, y, weights, offset, type.gaussian, : (list) object cannot be coerced to type 'double'

Dataset is Auto from ISLR library. library(ISLR) df <- Auto df <- na.omit(df) glimpse(df) rownames(df) <- c() train_x = train%>% dplyr::select(-horsepower) test_x = train$horsepower ...