ملخص
Latent variable models with hidden binary units appear in various applications. Learning such models, in particular in the presence of noise, is a challenging computational problem. In this paper we propose a novel spectral approach to this problem, based on the eigenvectors of both the second order moment matrix and third order moment tensor of the observed data. We prove that under mild non-degeneracy conditions, our method consistently estimates the model parameters at the optimal parametric rate. Our tensor-based method generalizes previous orthogonal tensor decomposition approaches, where the hidden units were assumed to be either statistically independent or mutually exclusive. We illustrate the consistency of our method on simulated data and demonstrate its usefulness in learning a common model for population mixtures in genetics.
| اللغة الأصلية | الإنجليزيّة |
|---|---|
| الصفحات (من إلى) | 2196-2205 |
| عدد الصفحات | 10 |
| دورية | Proceedings of Machine Learning Research |
| مستوى الصوت | 80 |
| حالة النشر | نُشِر - 2018 |
| منشور خارجيًا | نعم |
| الحدث | 35th International Conference on Machine Learning, ICML 2018 - Stockholm, السويد المدة: 10 يوليو 2018 → 15 يوليو 2018 |
بصمة
أدرس بدقة موضوعات البحث “Learning Binary Latent Variable Models: A Tensor Eigenpair Approach'. فهما يشكلان معًا بصمة فريدة.قم بذكر هذا
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