Restricted Boltzmann machines (RBM) are generative models capable to learn data with a rich underlying structure. We study the teacher-student setting where a student RBM learns structured data generated by a teacher RBM. The amount of structure in the data is controlled by adjusting the number of hidden units of the teacher and the correlations in the rows of the weights, a.k.a. patterns. In the absence of correlations, we validate the conjecture that the performance is independent of the number of teacher patters and hidden units of the student RBMs, and we argue that the teacher-student setting can be used as a toy model for studying the lottery ticket hypothesis. Beyond this regime, we find that the critical amount of data required to learn the teacher patterns decreases with both their number and correlations. In both regimes, we find that, even with a relatively large dataset, it becomes impossible to learn the teacher patterns if the inference temperature used for regularization is kept too low. In our framework, the student can learn teacher patterns one-to-one or many-to-one, generalizing previous findings about the teacher-student setting with two hidden units to any arbitrary finite number of hidden units.

Modeling structured data learning with Restricted Boltzmann machines in the teacher-student setting

Theriault, Robin
;
Tantari, Daniele
2025

Abstract

Restricted Boltzmann machines (RBM) are generative models capable to learn data with a rich underlying structure. We study the teacher-student setting where a student RBM learns structured data generated by a teacher RBM. The amount of structure in the data is controlled by adjusting the number of hidden units of the teacher and the correlations in the rows of the weights, a.k.a. patterns. In the absence of correlations, we validate the conjecture that the performance is independent of the number of teacher patters and hidden units of the student RBMs, and we argue that the teacher-student setting can be used as a toy model for studying the lottery ticket hypothesis. Beyond this regime, we find that the critical amount of data required to learn the teacher patterns decreases with both their number and correlations. In both regimes, we find that, even with a relatively large dataset, it becomes impossible to learn the teacher patterns if the inference temperature used for regularization is kept too low. In our framework, the student can learn teacher patterns one-to-one or many-to-one, generalizing previous findings about the teacher-student setting with two hidden units to any arbitrary finite number of hidden units.
Modelling structured data learning with Restricted Boltzmann machines in the teacher-student setting
2025
Settore MATH-04/A - Fisica matematica
Settore INFO-01/A - Informatica
Restricted Boltzmann Machines, Statistical Mechanics, Machine Learning, Spin Glasses
   Statistical Mechanics of Learning Machines: from algorithmic and information-theoretical limits to new biologically inspired paradigms
   Ministero dell'Università e della Ricerca - MUR - Segretariato Generale - Direzione generale della ricerca
   20229T9EAT_001
  
     https://doi.org/10.5281/zenodo.14892573
     https://dx.doi.org/10.5281/zenodo.14892573
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11384/153425
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