DynMat, a network that can learn after learning

06/16/2018
by   Jung H. Lee, et al.
0

To survive in the dynamically-evolving world, we accumulate knowledge and improve our skills based on experience. In the process, gaining new knowledge does not disrupt our vigilance to external stimuli. In other words, our learning process is 'accumulative' and 'online' without interruption. However, despite the recent success, artificial neural networks (ANNs) must be trained offline, and they suffer catastrophic interference between old and new learning, indicating that ANNs' conventional learning algorithms may not be suitable for building intelligent agents comparable to our brain. In this study, we propose a novel neural network architecture (DynMat) consisting of dual learning systems, inspired by the complementary learning system (CLS) theory suggesting that the brain relies on short- and long-term learning systems to learn continuously. Our experiments show that 1) DynMat can learn a new class without catastrophic interference and 2) it does not strictly require offline training.

READ FULL TEXT
research
03/06/2020

Triple Memory Networks: a Brain-Inspired Method for Continual Learning

Continual acquisition of novel experience without interfering previously...
research
02/21/2018

Continual Lifelong Learning with Neural Networks: A Review

Humans and animals have the ability to continually acquire and fine-tune...
research
08/09/2021

Some thoughts on catastrophic forgetting and how to learn an algorithm

The work of McCloskey and Cohen popularized the concept of catastrophic ...
research
03/11/2019

Complementary Learning for Overcoming Catastrophic Forgetting Using Experience Replay

Despite huge success, deep networks are unable to learn effectively in s...
research
07/10/2023

Measuring and Mitigating Interference in Reinforcement Learning

Catastrophic interference is common in many network-based learning syste...
research
04/05/2019

Reducing catastrophic forgetting when evolving neural networks

A key stepping stone in the development of an artificial general intelli...
research
07/07/2020

Towards a practical measure of interference for reinforcement learning

Catastrophic interference is common in many network-based learning syste...

Please sign up or login with your details

Forgot password? Click here to reset