Hi all!

I'm currently exploring alternatives to PCA, CVA, and CMD for data 
visualization. A colleague introduced me to t-SNE (t-Distributed Stochastic 
Neighbor Embedding, Van der Maaten & Hinton, 2008), which is a method used 
to reduce high-dimensional data. This is the first time I've come across 
this method, and I haven't seen it mentioned in many "theoretical" articles 
on geometric morphometrics (except for Courtenay, 2022).

I would appreciate hearing your opinion on the application of t-SNE in 
geometric morphometrics. What are its advantages, disadvantages, and 
potential uses?

Thank you so much for your input, and I apologize for asking such an 
open-ended question.

 

Van der Maaten, L., & Hinton, G. (2008). Visualizing data using t-SNE. *Journal 
of machine learning research*, *9*(11).

Courtenay, L. A. (2023). Can we restore balance to geometric morphometrics? 
A theoretical evaluation of how sample imbalance conditions ordination and 
classification. *Evolutionary Biology*, *50*(1), 90-110.

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