Questions tagged [imputation]

Missing data imputation is the process of replacing missing data with substituted, 'best guess', values. Because missing data can create problems for analyzing data and can lead to missing-data bias, imputation is seen as a way to avoid the problems associated with listwise deletion (ignoring all observations with any missing values).

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Mice 2l.pan method giving a bimodal distribution for skewed variable

I am working with an imputed dataset, and I am unsure if the imputation method for one of for one of my variables is suitable. I have several variables across 2 timepoints. I am using the mice package ...
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imputeLCMD proteomic mising values data

I am working with a DIAnn PASEF proteomics dataframe in R. However, some of the columns contain a lot of missing values (NAs) that I need to impute in order to perform a comprehensive analysis. I have ...
Marta López's user avatar
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How to impute missing values in electricity time series data considering the previous and next 2 values on the same day and time previous 2 days?

I have a pandas dataframe like below: meter IDs date 00:00 00:30 01:00 01:30 ....... 23:00 23:30 1 2020-09-01 0.30 0.40 0.41 0.42 ....... 0.47 0.39 1 2020-09-02 0.36 0.39 nan nan ....... 0.53 0.41 ...
Rajesh Ahir's user avatar
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Imputation by Class Average [closed]

I have a dataset with several variables that have a lot of missing data. I want to do an imputation by class considering a variable that has 3 categories as its level. I would like to be able to make ...
Simone Carminati's user avatar
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How do I return the actual statistical value computed by from pyspark's ml Imputer class?

Rather than just write & read to use the imputer downstream, I'm being asked to save the statistic computed by Imputer from pyspark.ml.feature in a yaml file for later consumption. I don't see any ...
Ana's user avatar
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How to calculate pooled Cronbach's Alpha after multiple imputation

I'm new here and I have a question regarding Cronbach's Alpha after imputation. I've already looked up several resources and I found the same problem here with a reproducible example (How do I ...
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Use of robust std errors in pooled regression & obtaining R^2 in R

I have a multiply imputed data and run a regression for each impID. Then I pool the results, to obtain one result for the analysis. Now I wish to use robust standard errors and compare the pooled ...
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Mice() imputation using 2l.norm method gives Error in chol.default() leading minor of order 1 is not positive

Having an issue with imputation using mice. I'm testing a few ways to impute on a longitudinal dataset, however using the 2l.norm method gives me an error in almost every case I try (as a separate ...
Mia 's user avatar
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How to solve an error in MICE imputation in R - system is computationally singular?

I'm trying to impute missing values in my dataset using MICE. I have a dataset consisting of 116 obs. of 134 variables. My dataset contains numerical, categorical and binary data. All variables with ...
student's user avatar
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How to use xgBoost for imputation?

I know that my question may be sounding too naive for this community, but I can't figure it out myself and need some insights from more experienced people. So, the point I am trying to address is ...
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Is there a proper way to apply median imputation by groups in caret?

I'm a beginner in machine learning, and I'm trying to do logistic regression on the titanic data set from Kaggle. I want to impute the Age variable using the titles (Mr, Master, Miss, etc.) contained ...
maglorismyspiritanimal's user avatar
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Difference between mice::pool and mitools::MIcombine

I can't figure out the difference between mitools::MIcombine and mice::pool. I used the following code: dsurvey<- svydesign(id =~0, data = imp_list, weights =~wgt) MIcombine(with(dsurvey, ...
user21683212's user avatar
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Trouble exporting and saving multiply imputed data in R for future use

I am running multiple imputations for missing NIS data and I have some trouble writing the imputed data on my hard drive. As far as I understand, the following code should export a bunch of files (....
Hans G.'s user avatar
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How can I impute observations on one variable in a list of dataframes? (dyadic time series)

I have several individual csv-files on specific country pairs and their trade volumes for the years 1870-2020 (using the COW trade dataset, smoothtotrade variable here). Unfortunately, the dataset is ...
dorokal's user avatar
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How to access p-values and fit estimates after pooling results from large lavaan.mi object?

tried doing exactly this as shown as well by Hall & Clark (2023): *All analyses were conducted in R, with the SEMs estimated using the lavaan package (Rosseel, 2012). Missing data were handled ...
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Imputing with NN left NaN in the data

I tried imputing values from a dataset with the Nearest Neighbour and it did it for almost all the NaNs, but it missed two. I'm working on the Titanic dataset and I'm trying to impute the ages in my ...
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Read already multiple imputed DataSet with mice (in R)

I currently have an already multiply imputed dataset with the structure: Structure clientID <- c(4,4,4,4,4,6,6,6,6,6,7,7,7,7,7,15,15,15,15,15) impID <- c(1,2,3,4,5,1,2,3,4,5,1,2,3,4,5,1,2,3,4,5) ...
Jerrry's user avatar
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What is the difference in models used between a data imputation with missForest and predict.randomForest from the randomForest package in R

I have some missing data in one column (y) of a dataframe I am working with. I now want to impute this missing data using the information from all the available information of that dataframe (i.e., ...
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Getting within and in-between variances and lambda ratio with MIcombine?

I'm pooling estimates from a raking weighting procedure on multiple imputed data and I'm interested in describing how the variability from the imputation by chained equation carry over my estimates. I ...
usual_user16960220's user avatar
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Bootstrapping function error. (Error in eval(mf, parent.frame()) : object 'dTMP' not found)

I am trying to perform a bootstrapped logistic regression with backwards selection using boot.stepAIC() on a multiple imputed dataset (created using mice). The dataset consists of a couple of columns ...
Mozzarella's user avatar
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HLA-HD tool for genomic imputation

Partial message: ./bin/hlahd.sh: line 121: /mountpoint/hla-hd/hlahd.1.7.0/bin/drop_intron_map: Permission denied Warning: Could not open read file "estimation/ALL192/mapfile/ALL192.exon.over.R1....
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Subscript `ina` is a matrix, the data `donors[ina]` must have size 1

df_mom_educ <- impute_knn(dat=df, formula = mom_educ ~ x + w, pool = "complete", k = 5, backend = "simputation") Error in [<-: ! Subscript ina is a matrix, the data donors[...
Lyds's user avatar
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Using a cluster variable in mice with method 'pmm'

I have read this question, this question which refer to the imputation of multilevel level data using the 2l.pan or one of the other 2l methods in mice. However, my question is about using method &...
Verity's user avatar
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1 answer
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How to pool average predictions from a multinomial regression per category in R

I want to obtain pooled average predictions per level of a categorical variable using a multinomial regression on multiple imputed data. My problem is that the pool() function seems to collapse all ...
usual_user16960220's user avatar
1 vote
1 answer
56 views

R: Function to Iteratively Impute\Back out Missing Values

I am a long-time forum lurker and a first-time poster. I'm sorry in advance for any deficiencies in my post. This is a rather complicated one. Description: I have a Frankenstein dataset gathered from ...
Sam Deegan's user avatar
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42 views

What should I do to the entries that have a lot of 0's?

(https://i.stack.imgur.com/68eVJ.png) Should I keep these entries as they are and use them for modeling? I thought of applying KNNImputer, but I still don't know what would that result to. Should I ...
Adem Maatallah's user avatar
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How can I avoid impossible trait combinations when using multiple imputation?

I'm working with a fish trait dataset in R, where anatomical constraints dictate that head length (HL) must be less than standard body length (SL), and SL must be less than or equal to total body ...
John Llewelyn's user avatar
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I get error for object "weight" not found whereas it exists in the data frame

I am using SIMPUTE package in R to impute a continuous variable. This is my dataset 'data.frame': 6000 obs. of 11 variables: $ age : chr "1" "1" "1" "...
datadigger's user avatar
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112 views

Manually program EM in r to update multiple parameters and solve missing data

I am trying to use EM (Expectation-maximization) to fill in missing data in R, but am not sure how to model/code it for my specific case. I am generally trying to follow the example format used in ...
flâneur's user avatar
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Using FIML with Sample.weights in Lavaan with fixed .X = F

I am hoping that someone can help me understand why I can not fit the model when I set FIML to impute my X and Y variables (as would occur in the joint model specification in MICE) . I have a data set ...
Steven Haworth's user avatar
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SQL, backward fill only for first nulls, forward fill only for last nulls, linear interpolation for other nulls

How do I fill backward, forward, and linear interpolation of a column in a table that has column timestamp in bigquery? I have this table: timestamp mycol 1 null 2 null 3 69 4 null 5 71 6 72 7 ...
Muhammad Ikhwan Perwira's user avatar
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Passive imputation with categorical:continuous interaction in R

I am trying to do a passive imputation to deal with a continuous:categorical interaction in a linear regression model (total_sleep ~ mean_commute + sex + mean_commute:sex) I have used the solution ...
ash_a's user avatar
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Error using pool ( ) with imputed data when using mice in r

I'm quit new to R. I would like to conduct a linear regression with my imputed data. This is my imputation code (works fine): imp <- mice(impu, predictorMatrix=pred, method=meth, m=10, seed = 1234) ...
Lisa's user avatar
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Obtaining standardized coefficients after multiple imputation with MICE in R

I ran multiple imputations to deal with my missing data. Then I used the with() and pool() functions to run a linear regression for my dataset and get a pooled estimate. I am trying to predict a score ...
yusefsoliman's user avatar
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How to specify an imputation model so that the resulting imputed variable approaches to a specific distribution, mean and standard deviation

In a survey dataset I have a variable that has measurement error. I want to impute new values to it. I have a training dataset that includes surveys from past years that have common variables, so I ...
Santiago Valdivieso's user avatar
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IterativeImputer modifies non-missing values apart from the missing ones

I used the IterativeImputer from sklearn.impute to impute values in a large dataframe containing many NaNs and one of the columns, which contained two non-zero values (the rest were 0s and NaNs), is ...
Julita Kulesza's user avatar
1 vote
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Impute additional dataset 2 based on initial dataset 1 - mice package [duplicate]

I have a situation in which I have an initial dataset to which subsequent datasets will be added over time. These future datasets will need to be imputed. Is it possible with the mice package in R to ...
nate's user avatar
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how to set the first individual coordinates of MCA principal components as an imputed variable by post-processing in mice?

I am trying to impute a matrix, of which a subset of the variables are a binary matrix that I would like to summarise into one by means of MCA. This should be achieved by writing my own post-...
m_tinka's user avatar
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How do I combine rows were of unique values across columns of character strings nested within two groups in R

This is a bit convoluted; I have a dataframe where there are patients with clinic visits and for each clinic visit there are medications with one medication per column. In some occassions, there are ...
Martin's user avatar
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Convertion of multiply imputed data from wide to long format and back to class mids does not work

I performed multiple imputation on my data set (longitudinal study) in wide format. For some analyses I need the data to be in long format. So I used mice::complete and tidyverse:pivot_longer (see ...
juliawwu's user avatar
1 vote
1 answer
70 views

Imputation failing with predictorMatrix and custom imputation in 'mice'

I am imputing three columns X1, X2, X3 based on three other columns Y1, Y2, Y3. I prefer custom imputation, over pmm from mice because I need the following rules to be preserved: X1 and X2 are always ...
Daniel's user avatar
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How to implement Expectation Maximization Imputation in Python?

I am comparing different imputation techniques for missing data in sensor measurements. One of the ones I am interested in is the EM algorithm. Unfortunately I have only found information about ...
xoani's user avatar
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Error when carrying out exp lincom function on multiple imputed data in R

I am trying to use (exp(lincom) to calculate the percentage change of GEE model outputs using (exp(lincom(data, variable)))-1. However, I had to account for missing data using MICE, thus changing the ...
L197's user avatar
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3 votes
1 answer
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Replace an NA in a column with it's nearest, in terms of a date column, within group, non-NA, with a condition, in R

I have a dataframe similar to the one below - my actual being larger - and was wondering how to impute the NAs with the nearest non NA, within group, for an integer variable - nearest in terms of date ...
Martin's user avatar
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Replace an NA in a column with it's nearest, in terms of a date column, non-NA with a condition, in R [closed]

I have a dataframe similar to the one below - my actual being larger and grouped - and was wondering how to impute the NAs with the nearest non NA for an integer variable, in terms of date, that is ...
Martin's user avatar
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77 views

How to plot interaction effects of pooled regression coefficents of multiple imputed data using mice in R?

I've conducted a multilevel regression analysis using imputed data in R, utilizing the mice package. Here's my workflow: I initially imputed my dataset using the mice package. Next, I performed a ...
sophie.mayo's user avatar
1 vote
1 answer
29 views

Pandas: Replace missing values in testing set by the mean of each group from the training set

I want to replace the missing values in the "X" column of the testing set according to the average of each category of the "Class" column, but these averages must come from the ...
wjosielct's user avatar
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127 views

When 'allow_singular is False', the input matrix must be symmetric positive definite

Im trying to use autoimpute for a dataset Im using. I am trying to use the MultipleImputer from autoimpute, and use the pmm strategy. My dataframe consists of 20+ columns with int, float values. ...
Jacob's user avatar
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1 answer
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how to impute missing values that are conditional on other values in the data set in R with MICE

I have a dataset consisting of 2 continuous variables X1, X2 with missing values in both, and I need to impute the missing data. I am working with the MICE package in R. The trouble is that the values ...
jackmo375's user avatar
1 vote
2 answers
163 views

Can I conduct pooled regression analysis on only a subsample of a dataset imputed with MICE in R?

I conducted multiple imputation using the 'mice' package in R. Afterwards, I calculated pooled regression analyses using the 'with' and 'pool' functions. For further analyses, I only want to look at a ...
Lesimster's user avatar

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