At the moment the clustering metrics are all internal and used to optimize hyper-parameters.
We have a plan to expose them and if there is some interest all the better.
For the time being, and keeping in mind that is code might change in the future, you can directly use the internal function
data = RandomReal[1, {1000, 2}];
clusters = FindClusters[data];
ClusterValidation = MachineLearning`PackageScope`ClusterValidation;
Some criteria that measure the "goodness" of a cluster are reversed to for every measure the lower the better
Table[
Last@ClusterValidation[type, "" -> {"", clusters}],
{type,
{"StandardDeviation", "RSquared", "Dunn", "CalinskiHarabasz", "Silhouette"}}
]
(* {0.337803, 373.229, -0.00908816, -684.364, -0.380691} *)