Title of article
Contrastive divergence for memristor-based restricted Boltzmann machine
Author/Authors
Sheri، نويسنده , , Ahmad Muqeem and Rafique، نويسنده , , Aasim and Pedrycz، نويسنده , , Witold and Jeon، نويسنده , , Moongu، نويسنده ,
Pages
7
From page
336
To page
342
Abstract
Restricted Boltzmann machines and deep belief networks have been shown to perform effectively in many applications such as supervised and unsupervised learning, dimensionality reduction and feature learning. Implementing networks, which use contrastive divergence as the learning algorithm on neuromorphic hardware, can be beneficial for real-time hardware interfacing, power efficient hardware and scalability. Neuromorphic hardware which uses memristors as synapses is one of the most promising areas to achieve the above-mentioned goals. This paper presents a restricted Boltzmann machine which uses a two memristor model to emulate synaptic weights and achieves learning using contrastive divergence.
Keywords
Restricted Boltzmann machine , Neuromorphic , MEMRISTOR , Contrastive divergence
Journal title
Astroparticle Physics
Record number
2048555
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