cancel
Showing results for 
Show  only  | Search instead for 
Did you mean: 
Choose Language Hide Translation Bar
zacatlan
Level II

latent profile analysis (LPA)

I'm trying to find latent profile analysis (LPA), not latent class analysis (LCA). I have continuous Y variables I'm examining for a latent structural categorical variable. Not looking for K-means, hierarchical, or other clustering types. Thank you.

2 ACCEPTED SOLUTIONS

Accepted Solutions
LauraCS
Staff

Re: latent profile analysis (LPA)

Hi @zacatlan

 

I think it's useful to drop this image here for others who might come across this post,

 

LauraCS_0-1710853399096.png

 

The "Normal Mixtures" platform does Latent Profile Analysis. You can find it under Analyze > Clustering,

 

LauraCS_1-1710857127919.png

 

After selecting the variables you want to use to launch the platform, you'll find a Control Panel that allows you to select the range of clusters to extract so you can compare their fit (based on BIC or AICc) and decide which is best,

 

LauraCS_2-1710857844087.png

 

You should consider whether you want to restrict the covariances between variables to be zero. If you do, you should check the "Diagonal Variance" box. Doing so often helps with model estimation (depending on the data). The Advanced Controls allow you to change the number of random starts (Tours) to make sure you don't land on a local solution.

 

Once you have the cluster solutions, you'll find it useful to look at biplots and Parallel Coordinate Plots using the red triangle menu options,

 

LauraCS_3-1710858483264.png

 

Lastly, you'll also find useful examples in the online doc:

https://www.jmp.com/support/help/en/17.2/#page/jmp/normal-mixtures.shtml#

 

HTH,

~Laura

Laura C-S

View solution in original post

LauraCS
Staff

Re: latent profile analysis (LPA)

IMO, your best bet for finding analyses in JMP that might have different names is to look under Search JMP in the Help menu,

 

LauraCS_0-1710863576983.png

 

Unfortunately, Latent Profile Analysis still wouldn't come up here (but I'll pass that feedback to make sure it does in the future!). We generally try to use multiple terms in the description of stat techniques so that this Search JMP engine will find them.  Search JMP is a great feature because it'll also show you exactly how to access what you're looking for. Of course, the JMP Community is also a great tool to ask your questions and get the answers you need =).

 

As far as the image I pasted, it's one I made a while back to explain these concepts in a blog post. You can find it here if you scroll down to the comments:

https://community.jmp.com/t5/JMP-Blog/Principal-components-or-factor-analysis/ba-p/38347

 

HTH,

~Laura

Laura C-S

View solution in original post

6 REPLIES 6
Byron_JMP
Staff

Re: latent profile analysis (LPA)

It sounds like you might be looking for structural equation modeling (SEM) or maybe partial least squares (PLS)?  Both are in the Analyze/Multivariate Methods menu. (JMP Pro) 

JMP Systems Engineer, Health and Life Sciences (Pharma)
zacatlan
Level II

Re: latent profile analysis (LPA)

Thanks, but I'm looking for LPA: https://www.sciencedirect.com/topics/psychology/latent-profile-analysis

 

It is LCA but with continuous variables instead of categorical or ordinal.

LauraCS
Staff

Re: latent profile analysis (LPA)

Hi @zacatlan

 

I think it's useful to drop this image here for others who might come across this post,

 

LauraCS_0-1710853399096.png

 

The "Normal Mixtures" platform does Latent Profile Analysis. You can find it under Analyze > Clustering,

 

LauraCS_1-1710857127919.png

 

After selecting the variables you want to use to launch the platform, you'll find a Control Panel that allows you to select the range of clusters to extract so you can compare their fit (based on BIC or AICc) and decide which is best,

 

LauraCS_2-1710857844087.png

 

You should consider whether you want to restrict the covariances between variables to be zero. If you do, you should check the "Diagonal Variance" box. Doing so often helps with model estimation (depending on the data). The Advanced Controls allow you to change the number of random starts (Tours) to make sure you don't land on a local solution.

 

Once you have the cluster solutions, you'll find it useful to look at biplots and Parallel Coordinate Plots using the red triangle menu options,

 

LauraCS_3-1710858483264.png

 

Lastly, you'll also find useful examples in the online doc:

https://www.jmp.com/support/help/en/17.2/#page/jmp/normal-mixtures.shtml#

 

HTH,

~Laura

Laura C-S
zacatlan
Level II

Re: latent profile analysis (LPA)

Thank you so much for the explanation and instructions. This is exactly what I was looking/hoping for. I first tried imputing continuous variables in the LCA platform, but it wouldn't take of course, which had me worried. And I kept turning up a blank when searching for the term latent profile analysis. Chat GPT told me it was there, but was probably called something else. Thanks for showing me where. I wonder if there is a type of glossary maintained by JMP that equates the many different names of analyses and specifies which one JMP uses. Or, could you show me where the image you posted comes from? Is this a JMP diagram/map? Many thanks.

LauraCS
Staff

Re: latent profile analysis (LPA)

IMO, your best bet for finding analyses in JMP that might have different names is to look under Search JMP in the Help menu,

 

LauraCS_0-1710863576983.png

 

Unfortunately, Latent Profile Analysis still wouldn't come up here (but I'll pass that feedback to make sure it does in the future!). We generally try to use multiple terms in the description of stat techniques so that this Search JMP engine will find them.  Search JMP is a great feature because it'll also show you exactly how to access what you're looking for. Of course, the JMP Community is also a great tool to ask your questions and get the answers you need =).

 

As far as the image I pasted, it's one I made a while back to explain these concepts in a blog post. You can find it here if you scroll down to the comments:

https://community.jmp.com/t5/JMP-Blog/Principal-components-or-factor-analysis/ba-p/38347

 

HTH,

~Laura

Laura C-S
zacatlan
Level II

Re: latent profile analysis (LPA)

Hi Laura,

One more question about how JMP handle LPA analysis and provides results. After running the analysis over a range of possible clusters, the fit statistics I'm shown are BIC, AICc, and -LogLikelihood. It looks like JMP suggests a best clustering solution based only on BIC & AICc. However, Chatbot tells me that JMP also gives entropy measures (like other packages) and results of a Hosmer-Lemeshow (HL) Test to also compare. These last two I do not see. I read that entropy is somehow calculated from the different "proportion" numbers provided under each cluster solution summary, but there is some disagreement online over how this is done for LPA. Do you know if JMP also provides these two fit statistics for us, even though BIC & AIC may be most reliable? Thanks,