Library Automation and Digital Archive
LONTAR
Fakultas Ilmu Komputer
Universitas Indonesia

Pencarian Sederhana

Find Similar Add to Favorite

Call Number SEM-372
Collection Type Indeks Artikel prosiding/Sem
Title Learning Explicit and Implicit Knowledge with Differentiable Neural Computer. Hal 297-302
Author Adnan Ardhian, Mohamad Ivan Fanany;
Publisher ICACSIS 2017 International Conference on Advanced Computer Science and Information System
Subject Neural Network, Differentiable Neural Computer, Sequence, Classification
Location
Lokasi : Perpustakaan Fakultas Ilmu Komputer
Nomor Panggil ID Koleksi Status
SEM-372 TERSEDIA
Tidak ada review pada koleksi ini: 47298
Abstract- Neural Network can perform various of tasks well after learning process, but still have limitations in remembering. This is due to very limited memory. Differentiable Neural Computer or DNC is proven to address the problem. DNC consist or Neural network which associated with an external memory module that works like a tape on an accessible Turing Machine. DNC can solve simple problems that require memory, such as copy, graph, and Question Answering. DNC learns the algorithm tp accomplish the task based on input and output. In this research, DNC with MLP or Multi-Layer Perceptron as the controller is compared with MLP only. The aim of this investigation is to test the ability of the neural Network to learn explicit and implicit knowledge at once. The tasks are sequence classification and sequence addition of MNIST handwritten is much better than with out external memory to process sequence data. The results also show that DNC as a fully differentiable system can solve the problem that requires explicit and implicit knowledge learning at once.