Hi @lujc07 ,
Indeed, as you noted, there are times when standardized estimates are greater than 1 and, given the images you shared, it's due to the variances and covariances involving the latent variables, which are omitted in the correlation matrix you provided. You can get a sense of the associations between latent variables and your MMI outcome by looking at the Model-Implied Covariances (under the red triangle menu of the fitted model). The standardized estimate for a regression is obtained by multiplying the unstandardized coefficient by the ratio of model-implied standard deviations of the from/to variables. For example, in your model, the standardized estimate for Latent 1 --> MMI (let's call it Beta) can be computed as:
Beta = unstandardized estimate * sqrt(model-implied variance of Latent 1) / sqrt(model-implied variance of Macroinvertebrate MMI)
I hope this helps answer your question!
~Laura
Laura C-S