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Mode-assisted joint training of deep Boltzmann machines

Haik Manukian, Massimiliano Di Ventra

2021Scientific Reports18 citationsDOIOpen Access PDF

Abstract

The deep extension of the restricted Boltzmann machine (RBM), known as the deep Boltzmann machine (DBM), is an expressive family of machine learning models which can serve as compact representations of complex probability distributions. However, jointly training DBMs in the unsupervised setting has proven to be a formidable task. A recent technique we have proposed, called mode-assisted training, has shown great success in improving the unsupervised training of RBMs. Here, we show that the performance gains of the mode-assisted training are even more dramatic for DBMs. In fact, DBMs jointly trained with the mode-assisted algorithm can represent the same data set with orders of magnitude lower number of total parameters compared to state-of-the-art training procedures and even with respect to RBMs, provided a fan-in network topology is also introduced. This substantial saving in number of parameters makes this training method very appealing also for hardware implementations.

Topics & Concepts

Boltzmann machineComputer scienceMode (computer interface)Restricted Boltzmann machineArtificial intelligenceSet (abstract data type)Joint (building)Training setTraining (meteorology)Extension (predicate logic)Deep learningImplementationMachine learningTask (project management)Human–computer interactionEngineeringSystems engineeringPhysicsMeteorologyArchitectural engineeringProgramming languageGenerative Adversarial Networks and Image SynthesisLattice Boltzmann Simulation StudiesModel Reduction and Neural Networks
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