Exact recovery guarantee for SC-LCM under strengthened conditions
Prove that the spectral clustering algorithm SC-LCM achieves exact recovery of the latent class membership matrix Z (up to label permutation) in the latent class model for ordinal categorical data (LCM(K) in Definition 1) under appropriately strengthened signal and separation conditions, by developing the required detailed entrywise singular subspace perturbation analysis so that Assumption A5 holds for SC-LCM.
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This indicates that SC-LCM could potentially be shown to achieve exact recovery under analogous strengthened conditions. A rigorous proof of this, however, would require a detailed entrywise analysis that is beyond the scope of the present paper, whose main focus is to develop a goodness-of-fit test for the number of latent classes. We leave this meaningful theoretical question for our future work.