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Questions tagged [multicollinearity]

Situation when there is strong linear relationship among predictor variables, so that their correlation matrix becomes (almost) singular. This "ill condition" makes it hard to determine the unique role each of the predictors is playing: estimation problems arise and standard errors are increased. Bivariately very high correlated predictors are one example of multicollinearity.

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Estimating correlated features in OLS regression [closed]

I am given decently large sample set of $y$’s and ${\beta}_{i}$’s of following OLS fitted by someone else: $y$ = $\sum({\beta}_{i} x_i)$ + α + ε I want to estimate $x_i$’s (say $\hat{x_i}$’s). ...
Gerry's user avatar
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ridge regression vs enforcing coefficient signs when regularizing colinearity

When dealing with multicollinearity problem, one standard solution is to run ridge regression. So we avoid a fit of $y = 10000 x_1 - 9999 x_2 $ for example. when $x_1$ and $x_2$ are highly correlated....
Taylor Fang's user avatar
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Does including a variable for stepwise change and another variable for linear change in an ARIMAX model introduce issues of multicollinearity?

I am trying to perform interrupted time series analysis using an ARIMA model based on the following paper: Interrupted time series analysis using autoregressive integrated moving average (ARIMA) ...
researcher20240708's user avatar
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2 answers
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Multicollinearity when controlling for a variable

I have a few questions about multicollinearity in my data: I'm looking at a certain type of lesion seen on MRI scans; for each patient I know the volume of those lesions and a metric that captures the ...
user20501139's user avatar
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Difference-in-Differences with Multiple Time Periods

For my master thesis, I want to estimate the effect that replications have on the citations of a paper. For this, I wanted to make a comparison between the citations of papers that were once ...
LauraGonzalezGa's user avatar
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1 answer
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GLMM Model Averaging with Predictor Multicollinearity

I am running GLMM models to determine how environmental factors influence bird collisions. I've obtained a list of candidate models with delta AIC less than 2, and I want to perform model averaging. I ...
yxfang's user avatar
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how to find the singular values of singular value decomposition (SVD) [closed]

I am a bit confused as to how we find the singular values and therefore condition index number. Some mathematicians say the singular values are the square roots of the eigenvalues of the correlation ...
NAFISA's user avatar
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No Multicollinearity between highly Correlated IVs

Suppose I'm building a multiple regression model, with y as dependent variable and X1, X2,..., Xn as independent variables. I've ...
Beta's user avatar
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Any Insights on the adoption and use of the Healthy Akaike Information Criterion (hAIC)?

Recently, I came across the Healthy Akaike Information Criterion (hAIC), introduced by Demidenko in his 2004 book "Mixed Models: Theory and Applications with R." Despite its (potential) ...
Robert Long's user avatar
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3 votes
2 answers
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Test for multicollinearity with binary and continuous independent variables

I have a question concerning multicollinearity: I have several independent variables. Some are binary and some continuous. The dependent variable is binary. Can I use the Pearson correlations to test ...
Lou's user avatar
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How to address multicollinearity when adding random effects in gam model and include random slopes?

I'm working with a generalized additive model (GAM) using the mgcv package in R. My dataset includes measurements collected over several years at different sites. I ...
maycca's user avatar
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Understanding the coefficients of highly correlated features in generalized linear models

I am trying to fit a generalized linear model, for simplicity assume that is a linear regression. I have a bunch of features and I fitted a linear model to it, the feature ...
shurik's user avatar
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4 votes
2 answers
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Is lasso preferable to ridge or principal component regression in multicollinear settings?

Consider a $N\times p$ data matrix $\mathbf X$ with columns $\mathbf x_j$. ESL recommends standardizing the inputs before performing ridge regression, which I understand to mean centering the columns $...
Tomo's user avatar
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Connection between multicollinearity and problem of identification in Simultaneous Equations Model

Is there any connection between multicollinearity and problem of identification in Simultaneous Equations Model? I know Multicollinearity is the occurrence of high intercorrelations among two or more ...
CrunchySia24's user avatar
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What is the best model for this case?

I have the following problem: A data set, which is about the soft drink consumption of people, that covers 300 subjects are available to us. Using Excel tabulations and graphing capabilities only: ...
raffaello.sanzio's user avatar
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Regression with small sample size - LASSO or remove variables?

I'm trying to run a regression, but I only have 14 observations, each being a different city in the US. My dependent variable is the total number of trips per capita, and my explanatory variables are ...
BeyondConfused's user avatar
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Is this multicollinearity, and how can I specify my model better?

I'm analyzing data from the usual care period only of a stepped wedge cluster-randomized trial. The goal is to describe the usual care period as though it was a cohort study because much higher ...
telegraph's user avatar
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Understanding differences in collinearity across Stata commands

Here's a simple example of a regression of y on x including time and id fixed-effects and both a linear and a quadratic time trend. If my t starts at 1, these 3 different regressions get the same ...
why's user avatar
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2 answers
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Does Factor Analysis completely mitigate the singular covariance matrix problem?

Background I have been trying to understand Stanford CS 229’s lecture about Factor Analysis and the accompanying lecture notes. The lecturer introduced Factor Analysis as a way to mitigate the ...
fumoboy007's user avatar
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Check_model performance package interpretation plots

I am fairly new to R and statistics and I am building GLMs for frogs occupancy and abundance using a dataset with 57 observations and 13 independent variables. As some variables are correlated the ...
Marco Lassandro's user avatar
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Estimating treatment effect with/without intercept [duplicate]

I am trying to estimate the treatment effect based on the above two model: $$Y(Z)=\beta_0+\tau Z+\varepsilon.$$ $$Y(Z)=\tau Z+\varepsilon.$$ Based on result from my data, I found the intercept is not ...
Fangzhi Luo's user avatar
2 votes
3 answers
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searching for which x-variables affect y the most when there is strong collinearity among the x-variables [closed]

I have a sample of 33 observations with 16 variables. My main goal is to find which (could be several) of these affect y the most. Y is an unwanted error in a system and the x variables are possible ...
anders's user avatar
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3 votes
1 answer
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Error in mixed-models. Which to detect? Collinearity? Singularity in backsolve at level 0, block 1

Firstly, I would like to admit that even though it is not the first time I am working with linear mixed models, the mathematical foundations escape me. I am running a linear mixed-effects model using ...
Javier Hernando's user avatar
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Fixed effects regression drops estimates due to collinearity for more aggregated FE, but not for less aggregated FE

I am running a fixed effects regression in r using the fixest package with a few different settings. I cannot provide data that replicates the errors, as the ...
flâneur's user avatar
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Which variables should I include/exclude in my regression analysis for GDP? [duplicate]

I am wanting to establish the impact mobile money has on Kenyan economic growth. I am building my regression model and have collected data for GDP, consumption, government spending, investment, net ...
Georgia's user avatar
1 vote
1 answer
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How this categorical variable have no reference value?

I'm reading the vignette for fixest After fitting this model for trade between countries: $E\left(Trade_{i,j,p,t}\right)=\exp\left(\gamma_{i}^{Exporter}+\gamma_{j}^{Importer}+\gamma_{p}^{Product}+\...
robertspierre's user avatar
1 vote
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25 views

Dealing with collinearity [closed]

I have a variable called Instagram reach, which represents the number of people who viewed a post, and engagement is the number of unique individuals who interacted with that post. We know that ...
Thiago Cunha's user avatar
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31 views

How to interpret the coefficient of a residualized variable in a linear model?

I was fitting a linear model and there was strong multicollinearity present in the data. So, I decided to residualize one regressor variable to reduce the multicollinearity and fitted the model again. ...
Peter's user avatar
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42 views

Multicollinearity with interaction term and fixed effects

I have the following regression including an interaction term and fixed effects ...
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21 views

Is the random forest classfier affected by related samples or biological replicates?

Correlation or collinearity between features can impact the results of random forest. So can having unbalanced data. However, I have not found a clear answer on whether having related samples can ...
Tal's user avatar
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How to handle multicollinearity with varying length and type of conjoint treatments?

We ran a complicated experiment and are struggling to build a linear model that estimates everything we're interested in. We showed each person a description of a product (for illustration, let's say ...
Tia's user avatar
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3 votes
1 answer
301 views

Multicollinearity and control variables dilemma

I had some superficial understanding of multicollinearity, that two highly correlated variables in the regression model are not what we want, as the estimated coefficient would be biased. Control ...
LJNG's user avatar
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1 answer
75 views

Multivariate statistical criterion to select key variables

I have a complex dataset with several predictor variables $X_i$ ($i=1,...,m$) and several outcome variables $Y_j$ $(j=1,...,n$). The problem is that many of the predictor variables are correlated ...
Fernando's user avatar
2 votes
1 answer
48 views

Distribution of Maximum Eigen Value

Suppose I have X, k*n, where $M=X'X$. Suppose $n>>k$, and $rank(M) =k-1$. Suppose $\lambda_1, \cdots, \lambda_{k-1}$ are the eigen values of M. Under the assumption that the columns of X are ...
deb's user avatar
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6 votes
2 answers
345 views

How to report the interaction effect in the paper?

I am calculating the moderation (interaction) effect of one variable on the relationship between two variables using Mplus. All of them are continuous variables. Before I calculated the interaction ...
İpek Gülsün's user avatar
2 votes
1 answer
48 views

Choosing Predictors in Multiple Regression

I am planning regression analyses and present this (hypothetical) scenario to communicate my query. I am interested in the effect of 2 different measures ('IQ' and 'SPQ') on dependent variable '...
SilvaC's user avatar
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To avoid the problem of perfect multicollinearity in binary variables, why is it fine to create separate variables for them in the linear regression? [duplicate]

I am reading Wooldridge's econometrics textbook. He provides the following example: Suppose we have a regression model relating wages to gender and education level. wage = b0 + d0 female + b1educ + u ...
user57623's user avatar
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0 votes
1 answer
87 views

Fixed-effect model with ridge regression, or how else to deal with multicollinearity

I am currently writing a registered report for data which will be clustered within eight countries. Since that is too few to do a multilevel model with random effects (McNeish & Stapleton, 2016), ...
Maximilian's user avatar
1 vote
1 answer
47 views

Mediation analysis not producing expected results, probably as consequence of multicollinearity issue

I am using the PROCESS macro to do a basic mediation analysis, with variables X,M, and Y. All are continuous. I know from theory that X and M, and M and Y respectively, should have a relationship. I ...
Maarten 's user avatar
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0 answers
59 views

OLS Duplicated Feature

Let's say we have $n$ samples and a single feature variable $X$, and we run OLS to regress $Y$ onto $X$ and get some $\beta$. Now, suppose we duplicate this feature to now get $X_1=X_2$, and we ...
PerplexedPelican's user avatar
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1 answer
93 views

Losing significance when adding variables to hierarchical regression model

I have two hierarchical models with continuous variables. In the first block, one of the variables is significant. However, in the second block, when I add three more variables the first variable ...
Statistics_3280's user avatar
2 votes
1 answer
124 views

multicollinearity and categorical variables

When performing regression with categorical variables, in order to avoid multicollinearity, it is necessary to drop one level. This is clear in fact: Let's assume I have a binary categorical variable (...
Marco De Virgilis's user avatar
1 vote
0 answers
70 views

Issue of multicollinearity in R for glm analysis

I was wondering if someone could help me with a statistical problem I have run into. Any help would be incredibly helpful. Please note that for clarity, I have simplified the below description. It ...
Ian Holdroyd's user avatar
3 votes
3 answers
582 views

Does it make sense to talk of "multicollinearity" in the context of simple linear regression?

As far as I am concerned, "multicollinearity" referers to the presence of collinearity between two or more variables, even if there is no pair of variables that have a particularly high ...
ghost wizard's user avatar
1 vote
1 answer
167 views

Homoskedasticity and Collinearity

I am curious whether the property of homoskedasticity is more or less dependent on the correlation between independent variables. I assumed that if the $cor(x_1,x_2....x_n) \approx 0$, hence the ...
Tunay Sabri Yüksel's user avatar
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Assumption in DBSCAN Clustering

Does the non-multicollinearity assumption apply to DBSCAN? I've read that this clustering method makes no assumptions about the density or variance in clusters that may exist in the data set. Can that ...
Anna's user avatar
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0 votes
1 answer
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How to deal with interaction terms in regression that cannot have a negative product?

Assume we have the following model: $y = \beta_0 + \alpha_1 * x_1 ^{\beta_1} + \alpha_2 * x_2^{\beta_2} + \alpha_3 * x_1^{\beta_1} * x_2^{\beta_2}$ where as we have the following priors for our IV's $\...
richard baws's user avatar
1 vote
1 answer
187 views

Could multicollinearity be messing up my logistic regression? Can I overcome it?

My data has 5 binary dependent variables, 9 categorical independent variables, and 3 continuous independent variables, with a sample size of 1232. The 5 dependent variables are just different ways of ...
Jamie Watts's user avatar
3 votes
1 answer
106 views

high variance proportion for intercept

I'm using the ols_eigen_cindex function to assess multicollinearity. With these variance proportions: ...
locus's user avatar
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1 vote
1 answer
248 views

Fixed Effects causes Multicollinearity

I have a dataset that contains every tranche of a Deal (a Deal may contain multiple Tranches) and its Variables like Poolsize, Rating etc. The Tranches are included into the dataset at the time the ...
Nasim El-Issa's user avatar

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