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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16 views

Error when imputing minimum values using SimpleImputer

I'm trying to use the minimum values of each column to replace missing values but keep getting an error. Below is my code: from sklearn.impute import SimpleImputer numeric_cols = [X_test.select_dtypes(...
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21 views

How to handle KNNImputer (sklearn) with large dataframe

I have a large dataset/dataframe (43 columns, 1155870 entries and all numeric, memory usage of 379.2 MB). The dataset includes a considerable number of NaN and zeros in many columns. I do not want to ...
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20 views

Handling missing data without leakage from future observations

I have a dataset with which I want to train a binary classifier. The dataset consists of one or more entries for a large number of people, and the goal of the classifier is to predict whether any ...
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1answer
47 views

Unable to impute missing numerical values

I want to impute missing values for both numerical and nominal values. My code for the finding missing numerical values did not return anything even though one of the columns HDI for year actually has ...
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35 views

Data imputation in correlation matrix

As a part of meta-analysis, I have a large correlation matrix. However, there are many missing values in the correlation matrix. I tried searching for data imputation methods for the correlation ...
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19 views

How to combine all datasets into a data frame after multiple imputation (mice)

I read this article (https://journal.r-project.org/archive/2021/RJ-2021-073/RJ-2021-073.pdf) about multiple imputation and propensity score matching - here is the code from this article: # code from &...
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20 views

Use the Survey package to weight observations in stacked imputations

I am exploring model variable selection within imputed data. One technique is to stack imputations in long format (where n observations in M imputed datasets creates a dataset n x M long), and use ...
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26 views

Imputation of specific columns with mice()

I would like to use data imputation by using the mice package. My dataset contains the columns "A" to "G", but I only want to impute the values of column C and D. In this article (...
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Correcting for Heteroscedasticity in multiple imputed datasets

I have a question regarding the homogeneity of variance in three regression models of diffrent datasets belonging to the same multiple imputed data. As I used multiple imputation I have to check ...
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21 views

Introduce missingness into mixed data using MAR, MNAR and MCAR in Python

I am trying to introduce missing values into a complete dataset(adult dataset) using MAR, MNAR and MCAR mechanisms. Including missing values such as using df = df.mask(np.random.random(df.shape) < ....
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How to choose best imputed data for further analysis in r

I have a multivariate time series dataset (almost 30 years) with random missing values. T S po4 si din 9.00000 NA 0.290 5.310 18.51 8.45000 NA 0.130 6.180 14.74 13.60000 36.46000 0.010 0.500 1.86 ...
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32 views

KNN with scikit-learn: how to obtain the distance matrix using NaN euclidean metric?

I am using sklearn.impute.KNNImputer on a dataset with missing values. I want to try several numbers of neighbors. To instantiate the KNNImputer, the number of neighbors should be specified. The ...
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I have used datawig to predict some values. It returns only few columns of my DF

import datawig df_train, df_test = datawig.utils.random_split(imput_data) #Initialize a SimpleImputer model imputer = datawig.SimpleImputer( input_columns=['Income Stability','Loan Amount ...
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56 views

mode imputation by groups in pandas (handling group modes that are NaN)

I have a categorical column "WALLSMATERIAL_MODE" containing NaN that I want to impute using the mode by the following groups ['NAME_EDUCATION_TYPE', 'AGE_GROUP']: NAME_EDUCATION_TYPE ...
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mice.reuse() question: Error in doTryCatch(return(expr), name, parentenv, handler): Missing left after imputation

I am attempting to impute data in my validation set, which follows the MICE imputation model from my train set using mice.reuse(). Imputation is following data split as they'll be used to train/val ML ...
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'mitml'-package: Is it possible to get ICC in output of multilevel logistic regression with binary outcome variable?

I’m trying to run a series of multilevel logistic regression analyses with the lme4 package. The analyses run fine without imputations and also provide me with the ICC, using the following code: ...
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Pooling bootstrapped confidence intervals

I used ten imputations with MICE to perform Hayes process analysis. Now I have ten bootstrapped results for my variables (coefficient, bootstrapped mean, bootstrapped confidence interval for each ...
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33 views

How to impute an approximate Date of Birth from an age field in years?

I have some data with Date of birth information (in string format) and a column with Age in years like below: id DOB AGE_YEARS 01 1992-06-10 29 03 1991-01-10 30 02 20216-6-10 5 when using, df['...
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39 views

missForest Data imputation vs. MICE using RF

What is the difference between both of the methods? Is missForest a multiple imputation method? If so, how does it differ from MICE using RF? Thank you
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24 views

R - missing imputation with MICE: POST processing for all variables at once

I have a question for MICE /MICEADDS imputation. I have #metabolomics dataset, where all my variabes MUST be a positive value (peak intensities are never < 0). I wish to set the POST that correct ...
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1answer
19 views

Does it matter which algorithm you use for Multiple Imputation by Chained Equations (MICE)

I have seen MICE implemented with different types of algorithms e.g. RandomForest or Stochastic Regression etc. My question is that does it matter which type of algorithm i.e. does one perform the ...
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35 views

(MICE) missing data Imputation for dataset with Time factors (longitudinal data)

I have a query regarding the MICE function. I have a longitudinal dataset of 4500 participant's with missing values. Some of the variables are measured over time(0, 2 ,3, 5 etc) however there's ...
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27 views

Partial imputation with missforest - combining the selected columns with original dataset

apologizes for a rather simple question, but I have not successfully resolved this simple issue. I am aiming to only impute selected columns with missforest. The model then outputs only the selected ...
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29 views

NAs in a data frame split by country in R [duplicate]

I would like to impute NA's in a dataframe with means of observed data in each country. In other words, while dealing with NAs, the values in the specific country should be taken into consideration. ...
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20 views

impute missing data using Niplas algorithm (PLS) in python

I have an array with values between 0 - 255 and one missing (nan), its shape is (27, 36). I tried to impute the missing data using the Nipals algorithm. After searching I found that there is a PLS ...
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90 views

Replace NAs with missing values in sequence (R)

I have a DF like Now I want to replace The Col B = NA with 15 since that is the missing value. Col C first NA with 14 and second NA with 15. Col D first NA with 13, second NA with 14 and third NA ...
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30 views

Replacing null values by average of values grouped by concatenated categories in Teradata

Suppose that I have a lot of NULL values (missing values) in a column named 'score'. I want to replace them by a specific average not from all the values of the column 'score' but by groups that I ...
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28 views

Will there be issues if I split, merge and re-split in pandas dataframe

Here is what I am doing. I have a data set with a lot of features for which I am doing feature engineering separately based on the type of values they are like categorical-ordinal, categorical-non ...
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83 views

Label encode then impute missing then inverse encoding

I have a data set on police killings that you can find on Kaggle. There's some missing data in several columns: UID 0.000000 Name 0.000000 Age 0.018653 ...
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38 views

R- compare lmer with mice imputation to original data

I want to fit a mixed model with data containing missing values. The imputation is performed with mice. How can I compare the original data model fit to the mice one? Example code.. ## dummy data set....
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70 views

replace missing values in a 3d array

I have a 3d array containing missing values: arr = np.array([[[ 1, 13],[ 2, 14],[ 3, np.nan]],[[ 4, 16],[ 5, 17],[ 6, 18]],[[ np.nan, 19],[ 8, 20],[ 9, 21]],[[10, 22],[11, 23],[12, np.nan]]]) I would ...
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LASSO method for multiple imputed datasets and categorical outcome variable

I have been endlessly searching for an answer and would really appreciate any help. I currently have 10 imputed datasets, a categorical outcome variable (ordinal, three levels), a categorical exposure ...
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69 views

How to do the prediction after multiple imputation with MICE package

As part of my analysis, I have to do the prediction but mice doesn't have the tool to do so! Meaning that using "with" and then "pool" doesn't work! X1<-c(1,1,1,0,0,NA) X2<c(...
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1answer
39 views

median imputation by groups in pandas (handling group medians that are NaN)

I have the following DataFrame train: train = {'NAME_EDUCATION_TYPE': {5: 'Secondary / secondary special', 6: 'Higher education', 7: 'Higher education', 8: 'Secondary / secondary special', 9: '...
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1answer
39 views

How to run a same code on different datasets

I have seen different topics and answers on the similar-ish question on the website but almost none of them answered my question in this specific setting that I am working on. Here is the story: I ...
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30 views

Imputing values with a pipeline in Scikit

I have a question about the Imputer of scikit learn in general. For any machine learning task it is mandatory that I dont leak information from training to test set. I recently experimented with ...
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2answers
28 views

Pandas filling missing date values with a constant date

I have a situation where I am trying to impute missing values in a date column using a standard date. I am using the follwing code but the missing values still remains as is and not getting replaced ...
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35 views

Error when converting imputed dataset into mids object (as.mids) in R

I am attempting to convert a multiply imputed dataset into a mids object with the as.mids() command and receive the following error: Error in `[<-.data.frame`(`*tmp*`, j, value = list(...
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1answer
28 views

How can I use an imputing class to replace a value with the one on the row above?

I have the following dataframe: |1|2|3| ------ |4|-999|6| ------ |7|8|9| I want to replace the only the -999 value with the value from the previous row, same column. In this case the value is 2 and ...
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15 views

Keep Imputed Values Consistent Within Participant

I've run a multiple imputation with mice for data in long format (8 observations per subject) after setting the subject_id to 0 to exclude it as a predictor. The only issue is that when subject_id is ...
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29 views

Pool coefficients for models using splines and interactions in R

I am trying to create a logistic regression model that uses splines and interactions. I used the mice package for multiple imputation to deal with missingness in my data. Here I use Titanic data to ...
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1answer
41 views

Data imputation using R

I need to do multiple imputation to a data set which is similar to the following toy data set. x1=rbinom(20,1,0.5) x2=rnorm(20,100,2) x2=x2/max(x2) x3=rbinom(20,3,0.4) x4=rnorm(20,0,0.5) data=data....
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23 views

na.approx and na.locf not behaving properly

I'm trying to calculate imputated values for a time series for different countries. This piece of code worked fine before, but now the impuated values are all wrong ... I can't figure out the problem, ...
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34 views

Impute missing values in partial rank data?

I have some rank data with missing values. The highest ranked item was assigned a value of '1'. 'NA' values occur when the item was not ranked. # sample data df <- data.frame(Item1 = c(1,2, NA, 2, ...
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29 views

How to recode missing genotype code is " '-' " in the ped file of plink

I'm trying to impute genotype data from the public reference panels but my files fail the file sanity check on Sanger Imputation server and it gives the following error: failed sanity check : of ...
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2answers
51 views

handling missing data with seasonality in python [closed]

How can I use python to impute timeseries data with seasonality components? Below is an example of how my data looks like, I am missing data for long periods that includes many cycles and not sure how ...
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1answer
23 views

Efficient code for imputation of negative values using pyspark

I am working on a data set which contains item wise- date wise information about the quantity sold of that particular item. However, there are some negative values in the ' quantity sold' column which ...
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1answer
36 views

IMPUTE N.A. BINARY SEX DATA in R

I have a dataframe "df_customers" with a binary variable "sex". Of this column, 1.5% are missing, they are NA. Of the non-missing values, "Male" accounts for 60.81%, and &...
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21 views

Using multiple CPUs with jomoImpute in R

I am trying to impute a dataset in R using jomoImpute. However, since my dataset has almost 12,000 lines and 2% missing data, this is taking a huge amount of time. Therefore, I would like to make use ...
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34 views

drop row if 3 out of 5 columns are lower than a specific value

I'm trying to code a line in which I drop a row in a dataframe if a pvalue (columns) is lower than 1.3 for 3 out of 5 columns. If the pvalue is greater than 1.3 in 3 out of 5 columns i keep the row. ...

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