Augmenting Differentiable Neural Computer with Read Network and Key-Value Memory

dc.contributor.authorAlok Yadav
dc.contributor.authorKitsuchart Pasupa
dc.date.accessioned2026-05-08T19:22:52Z
dc.date.issued2021-11-18
dc.description.abstractA Differential Neural Computer (DNC) is a type of neural network architecture that can make use of external memory. A DNC model can represent complex data sequences and reason about them. However, training a complex DNC with large memory matrices was slow, hence this study focused on improving a DNC model to learn faster and perform bAbi question-answering tasks more accurately. The attempted improvements were to use key-value pairs for memory locations instead of arrays and to obtain a read vector from the memory matrix with a neural network. Evaluation of the improved DNC models on the bAbi dataset showed that their compute time was 13% shorter and their error rate was 6.6% lower. To conclude, the attempted improvements were successful, and the training speed of the key-value memory model also became shorter.
dc.identifier.doi10.1109/icsec53205.2021.9684629
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/18766
dc.subjectNeural Networks and Applications
dc.subjectFuzzy Logic and Control Systems
dc.subjectNeural Networks and Reservoir Computing
dc.titleAugmenting Differentiable Neural Computer with Read Network and Key-Value Memory
dc.typeArticle

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