Felipe Ortega, ÁngelMiranda Menéndez, PedroPardo Llorente, Leandro2023-06-192023-06-1920150033-312310.1007/s11336-015-9450-4https://hdl.handle.net/20.500.14352/34635The main purpose of this paper is to introduce and study the behavior of minimum (Formula presented.)-divergence estimators as an alternative to the maximum-likelihood estimator in latent class models for binary items. As it will become clear below, minimum (Formula presented.)-divergence estimators are a natural extension of the maximum-likelihood estimator. The asymptotic properties of minimum (Formula presented.)-divergence estimators for latent class models for binary data are developed. Finally, to compare the efficiency and robustness of these new estimators with that obtained through maximum likelihood when the sample size is not big enough to apply the asymptotic results, we have carried out a simulation study.engMinimum ϕ-Divergence Estimation in Constrained Latent Class Models for Binary Datajournal articlehttp://link.springer.com/article/10.1007%2Fs11336-015-9450-4https://link.springer.com/open access519.22asymptotic distributionlatent class modelsmaximum-likelihood estimatorminimum phi-divergence estimatorEstadística matemática (Matemáticas)1209 Estadística