元学习:自适应快速学习系统

Morshed Alom
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引用次数: 0

摘要

元学习(Meta-learning)已成为机器学习领域的一种强大范式,它使自适应快速学习系统能够高效地从各种任务和领域中获取知识。本文概述了元学习技术,重点介绍了元学习技术利用先前经验促进新任务学习的能力。我们探讨了元学习的基本概念、方法和应用,强调了元学习在提高学习系统的适应性和速度方面的作用。通过采用元学习策略,算法可以自主适应新任务和数据分布,从而提高不同领域的性能和效率。这篇综述揭示了元学习研究的最新进展,并强调了元学习对人工智能未来的潜在影响。
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Meta-Learning: Adaptive and Fast Learning Systems
Meta-learning has emerged as a powerful paradigm in machine learning, enabling adaptive and fast learning systems capable of efficiently acquiring knowledge from various tasks and domains. This paper provides an overview of meta-learning techniques, focusing on their ability to leverage prior experience to facilitate the learning of new tasks. We explore the fundamental concepts, methodologies, and applications of meta-learning, emphasizing its role in enhancing the adaptability and speed of learning systems. By incorporating meta-learning strategies, algorithms can autonomously adapt to new tasks and data distributions, thereby improving performance and efficiency across diverse domains. This review sheds light on the current state-of-the-art in meta-learning research and highlights its potential implications for the future of artificial intelligence.  
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