Identification Problems in a Class of Mixture Models with an Application to the LISREL Model
نویسنده
چکیده
Support of the contract Projet d’Actions de Recherche Concertées ARC 93/98-164, of the Belgium Government, is gratefully aknowledged. Support of the project Modèles d’équations structurales et modélisation de covariances FDS 96/98, Université catholique de Louvain, is gratefully aknowledged.
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