Unsupervised Hebbian learning experimentally realized with analogue memristive crossbar arrays
Published 2018 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
Unsupervised Hebbian learning experimentally realized with analogue memristive crossbar arrays
Authors
Keywords
-
Journal
Scientific Reports
Volume 8, Issue 1, Pages -
Publisher
Springer Nature
Online
2018-06-05
DOI
10.1038/s41598-018-27033-9
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- Memristor-Based Analog Computation and Neural Network Classification with a Dot Product Engine
- (2018) Miao Hu et al. ADVANCED MATERIALS
- SiGe epitaxial memory for neuromorphic computing with reproducible high performance based on engineered dislocations
- (2018) Shinhyun Choi et al. NATURE MATERIALS
- An enhanced lumped element electrical model of a double barrier memristive device
- (2017) Enver Solan et al. JOURNAL OF PHYSICS D-APPLIED PHYSICS
- Sparse coding with memristor networks
- (2017) Patrick M. Sheridan et al. Nature Nanotechnology
- Double-Barrier Memristive Devices for Unsupervised Learning and Pattern Recognition
- (2017) Mirko Hansen et al. Frontiers in Neuroscience
- Memristive neural network for on-line learning and tracking with brain-inspired spike timing dependent plasticity
- (2017) G. Pedretti et al. Scientific Reports
- Mastering the game of Go with deep neural networks and tree search
- (2016) David Silver et al. NATURE
- Memristors with diffusive dynamics as synaptic emulators for neuromorphic computing
- (2016) Zhongrui Wang et al. NATURE MATERIALS
- Unsupervised learning in probabilistic neural networks with multi-state metal-oxide memristive synapses
- (2016) Alexander Serb et al. Nature Communications
- The role of ion transport phenomena in memristive double barrier devices
- (2016) Sven Dirkmann et al. Scientific Reports
- Memristive Hebbian Plasticity Model: Device Requirements for the Emulation of Hebbian Plasticity Based on Memristive Devices
- (2015) Martin Ziegler et al. IEEE Transactions on Biomedical Circuits and Systems
- Experimental Demonstration of a Second-Order Memristor and Its Ability to Biorealistically Implement Synaptic Plasticity
- (2015) Sungho Kim et al. NANO LETTERS
- Machine intelligence
- (2015) Tanguy Chouard et al. NATURE
- Training and operation of an integrated neuromorphic network based on metal-oxide memristors
- (2015) M. Prezioso et al. NATURE
- Deep learning in neural networks: An overview
- (2015) Jürgen Schmidhuber NEURAL NETWORKS
- Neuromorphic Electronic Circuits for Building Autonomous Cognitive Systems
- (2014) Elisabetta Chicca et al. PROCEEDINGS OF THE IEEE
- Brain-like associative learning using a nanoscale non-volatile phase change synaptic device array
- (2014) Sukru B. Eryilmaz et al. Frontiers in Neuroscience
- Pattern classification by memristive crossbar circuits using ex situ and in situ training
- (2013) Fabien Alibart et al. Nature Communications
- An Electronic Version of Pavlov's Dog
- (2012) Martin Ziegler et al. ADVANCED FUNCTIONAL MATERIALS
- Memristive devices for computing
- (2012) J. Joshua Yang et al. Nature Nanotechnology
- Pavlov's Dog Associative Learning Demonstrated on Synaptic-Like Organic Transistors
- (2012) O. Bichler et al. NEURAL COMPUTATION
- Towards artificial neurons and synapses: a materials point of view
- (2012) Doo Seok Jeong et al. RSC Advances
- An Electronic Synapse Device Based on Metal Oxide Resistive Switching Memory for Neuromorphic Computation
- (2011) Shimeng Yu et al. IEEE TRANSACTIONS ON ELECTRON DEVICES
- Short-term plasticity and long-term potentiation mimicked in single inorganic synapses
- (2011) Takeo Ohno et al. NATURE MATERIALS
- Nanoscale Memristor Device as Synapse in Neuromorphic Systems
- (2010) Sung Hyun Jo et al. NANO LETTERS
- Pattern Separation in the Human Hippocampal CA3 and Dentate Gyrus
- (2008) A. Bakker et al. SCIENCE
Find the ideal target journal for your manuscript
Explore over 38,000 international journals covering a vast array of academic fields.
SearchBecome a Peeref-certified reviewer
The Peeref Institute provides free reviewer training that teaches the core competencies of the academic peer review process.
Get Started