List of Topics:
Location Research Breakthrough Possible @S-Logix pro@slogix.in

Office Address

Social List

Exploring the Intersection between Neural Architecture Search and Continual Learning - 2022

a-review-on-plastic-artificial-neural-networks-exploring-the-intersection-between-neural-architecture-search-and-continual-learning.jpg

Exploring the Intersection between Neural Architecture Search and Continual Learning | S-Logix

Research Area:  Machine Learning

Abstract:

Despite the significant advances achieved in Artificial Neural Networks (ANNs), their design process remains notoriously tedious, depending primarily on intuition, experience and trial-and-error. This human-dependent process is often time-consuming and prone to errors. Furthermore, the models are generally bound to their training contexts, with no considerations to their surrounding environments. Continual adaptiveness and automation of neural networks is of paramount importance to several domains where model accessibility is limited after deployment (e.g IoT devices, self-driving vehicles, etc.). Additionally, even accessible models require frequent maintenance post-deployment to overcome issues such as Concept/Data Drift, which can be cumbersome and restrictive. By leveraging and combining approaches from Neural Architecture Search (NAS) and Continual Learning (CL), more robust and adaptive agents can be developed. This study conducts the first extensive review on the intersection between NAS and CL, formalizing the prospective Continually-Adaptive Neural Networks (CANNs) paradigm and outlining research directions for lifelong autonomous ANNs.

Keywords:  
Computer Vision
Pattern Recognition
Neural
Evolutionary Computing
Continually-Adaptive Neural Networks

Author(s) Name:  Mohamed Shahawy, Elhadj Benkhelifa, David White

Journal name:  Artificial Intelligence

Conferrence name:  

Publisher name:  arXiv.2206.05625

DOI:  10.48550/arXiv.2206.05625

Volume Information: