Developing Deep Learning Models to Simulate Human Declarative Episodic Memory Storage

Abstract

Human like visual and auditory sensory devices became very popular in recent years through the work of deep learning models that incorporate aspects of brain processing such as edge and line detectors found in the visual cortex. However, very little work has been done on the human memory, and thus our aim is to model human long-term declarative episodic memory storage using deep learning methods. An innovative way of deep neural network was created on supervised feature learning dataset such as MNIST to achieve high accuracy as well as storing the models hidden layers for future extraction. Convolutional Neural Network (CNN) learning models with transfer learning models were trained to imitate the long-term declarative episodic memory storage of human. A Recurrent Neural Network (RNN) in the form of Long Short Term Memory (LSTM) model was assembled in layers and then trained and evaluated. A Variational Autoencoder was also used for training and evaluation to mimic the human memory model. Frameworks were constructed using TensorFlow for training and testing the deep learning models.

Authors and Affiliations

Abu Kamruzzaman, Charles C. Tappert

Keywords

Related Articles

Sensitivity Analysis of Fourier Transformation Spectrometer: FTS Against Observation Noise on Retrievals of Carbon Dioxide and Methane

Sensitivity analysis of Fourier Transformation Spectrometer: FTS against observation noise on retrievals of carbon dioxide and methane is conducted. Through experiments with real observed data and additive noise, it is f...

The Performance of the Bond Graph Approach for Diagnosing Electrical Systems

The increasing complexity of automated industrial systems, the constraints of competitiveness in terms of cost of production and facility security have mobilized in the last years a large community of researchers to impr...

Introducing Time based Competitive Advantage in IT Sector with Simulation

Incompletion of projects in time leads to project failure which is the major dilemma of the software industry. Different strategies are used to gain a competitive advantage over competitors in business. In software persp...

Safety and Performance Evaluation Method for Wearable Artificial Kidney Systems

This paper focuses on international standards and guidelines related to evaluating the safety and performance of wearable dialysis systems and devices. The applicable standard and evaluation indices for safety and perfor...

Integration of REST-Based Web Service and Browser Extension for Instagram Spam Detection

In this paper, a REST-based Web Service developed in previous work was integrated with a newly developed browser extension that works in modern browser (Firefox and Google Chrome) using Greasemonkey. It uses previous col...

Download PDF file
  • EP ID EP498345
  • DOI 10.14569/IJACSA.2019.0100302
  • Views 65
  • Downloads 0

How To Cite

Abu Kamruzzaman, Charles C. Tappert (2019). Developing Deep Learning Models to Simulate Human Declarative Episodic Memory Storage. International Journal of Advanced Computer Science & Applications, 10(3), 6-15. https://europub.co.uk/articles/-A-498345