AILGNEJun 17, 2022

A Survey on Computational Intelligence-based Transfer Learning

arXiv:2206.10593v12 citationsh-index: 5
Originality Synthesis-oriented
AI Analysis

It provides a systematic review for researchers in machine learning, but it is incremental as it organizes existing methods without introducing new ones.

This paper surveys computational intelligence-based transfer learning techniques, categorizing them into neural network-based, evolutionary algorithm-based, swarm intelligence-based, and fuzzy logic-based approaches to improve performance over vanilla transfer learning.

The goal of transfer learning (TL) is providing a framework for exploiting acquired knowledge from source to target data. Transfer learning approaches compared to traditional machine learning approaches are capable of modeling better data patterns from the current domain. However, vanilla TL needs performance improvements by using computational intelligence-based TL. This paper studies computational intelligence-based transfer learning techniques and categorizes them into neural network-based, evolutionary algorithm-based, swarm intelligence-based and fuzzy logic-based transfer learning.

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