Title
One-shot Learning with Memory-Augmented Neural Networks.
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 network to rapidly assimilate new data, and leverage this data to make accurate predictions after only a few samples. We also introduce a new method for accessing an external memory that focuses on memory content, unlike previous methods that additionally use memory locationbased focusing mechanisms.
Year
Venue
Field
2016
arXiv: Learning
ENCODE,Computer science,Turing machine,Artificial intelligence,One-shot learning,Artificial neural network,Machine learning,Catastrophic interference,Deep neural networks,Auxiliary memory
DocType
Volume
Citations 
Journal
abs/1605.06065
61
PageRank 
References 
Authors
1.88
10
5
Name
Order
Citations
PageRank
Adam Santoro143820.37
Sergey Bartunov21486.64
Matthew M Botvinick349425.34
Daan Wierstra4612.55
Timothy P. Lillicrap54377170.65