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Easily carry out Latent Profile Analysis (LPA) using open-source or commercial software

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As per title, I noticed a discrepancy between the Mplus and the calc_lrt calculation of the adjusted likelihood ratio test (LRT) as in Formula 15 of Lo, Mendell, & Rubin...

Hello, I am interested in running latent profile analysis with multiply imputed data. I have conducted multiple imputation with the `mice` package, but combining `with` and `estimate_profiles` results in an...

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My kind request is similar to the one on multiple starts using MClust to improve convergence-issues: I use tidyLPA with Mplus a lot. An issue that I encounter very often...

Hello, Thanks for all of the amazing work you have done with this package! The wrappers are a fantastic way to parameterize and compare LPA models; though, I need some...

Dear community, First of all thank you all so much for sharing your questions & knowledge. You helped me all very much in the past, while I was implementing my...

I tried to replicate the basic example as documented in the README.md However, the following is the error I received... ``` r library(tidyverse) library(tidyLPA) #> You can use the function...

Hi, I have a case that involves missing data, so I split my data into separate tables and I need the distribution of the classes, Is there a way I...

When some models have negative information criteria (e.g., BIC) values, the AHP appears to select the best model that has positive IC values, thereby ignoring better fitting models, see example...

@jrosen48 I think you'll have to do this; on the codecov website, under settings, you can find the code for a badge that displays coverage percentage. Copy-paste that into the...

See references: https://journals.sagepub.com/doi/pdf/10.1177/0049124110366240?casa_token=VKM1nw2bd0cAAAAA:wMhGBZUcToaaJp6IIi740Fn_WwwoI9iJHWs-_4A13wNIvKYoyUoqFH-exM5B2SNxnPz9aj6w3rF_ On the identifiability of a mixture model for ordinal data M Iannario - Metron, 2010