Quantum continual learning of quantum data realizing knowledge backward transfer
Haozhen Situ, Tianxiang Lu, Minghua Pan, Lvzhou Li

TL;DR
This paper introduces a quantum continual learning scheme using gradient episodic memory to prevent forgetting and enhance performance on previous quantum tasks during sequential learning.
Contribution
It develops a quantum continual learning method that overcomes catastrophic forgetting and achieves knowledge backward transfer in quantum data classification.
Findings
Overcomes catastrophic forgetting in quantum models
Achieves knowledge backward transfer, improving previous task performance
Demonstrates effectiveness through numerical simulations
Abstract
For the goal of strong artificial intelligence that can mimic human-level intelligence, AI systems would have the ability to adapt to ever-changing scenarios and learn new knowledge continuously without forgetting previously acquired knowledge. When a machine learning model is consecutively trained on multiple tasks that come in sequence, its performance on previously learned tasks may drop dramatically during the learning process of the newly seen task. To avoid this phenomenon termed catastrophic forgetting, continual learning, also known as lifelong learning, has been proposed and become one of the most up-to-date research areas of machine learning. As quantum machine learning blossoms in recent years, it is interesting to develop quantum continual learning. This paper focuses on the case of quantum models for quantum data where the computation model and the data to be processed are…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Geophysical and Geoelectrical Methods · Machine Learning and ELM
