Meta-learning with memory-augmented neural networks
Google (United States) · Google DeepMind (United Kingdom) · +1 more institution
Abstract
Despite recent breakthroughs in the applications of deep neural networks, one setting that presents a persistent challenge is that of one-shot learning. Traditional gradient-based networks require a lot of data to learn, often through extensive iterative training. When new data is encountered, the models must inefficiently relearn their parameters to adequately incorporate the new information without catastrophic interference. Architectures with augmented memory capacities, such as Neural Turing Machines (NTMs), offer the ability to quickly encode and retrieve new information, and hence can potentially obviate the downsides of conventional models. Here, we demonstrate the ability of a memory-augmented neural…
Citation impact
- FWCI
- 87.09
- Percentile
- 100%
- References
- 17
Authors
5- ASAdam SantoroCorresponding
Google (United States), Google DeepMind (United Kingdom)
- SBSergey Bartunov
National Research University Higher School of Economics, Google (United States), Google DeepMind (United Kingdom)
- MBMatthew Botvinick
Google (United States), Google DeepMind (United Kingdom)
- DWDaan Wierstra
Google (United States), Google DeepMind (United Kingdom)
- TLTimothy Lillicrap
Google (United States), Google DeepMind (United Kingdom)
Topics & keywords
- Computer science
- Leverage (statistics)
- Artificial neural network
- Artificial intelligence
- Deep learning
- ENCODE
- Machine learning
- Deep neural networks