AI Advancements: Comparison of Innovative Techniques

AI Pub Date : 2023-12-20 DOI:10.3390/ai5010003
Hamed Taherdoost, Mitra Madanchian
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Abstract

In recent years, artificial intelligence (AI) has seen remarkable advancements, stretching the limits of what is possible and opening up new frontiers. This comparative review investigates the evolving landscape of AI advancements, providing a thorough exploration of innovative techniques that have shaped the field. Beginning with the fundamentals of AI, including traditional machine learning and the transition to data-driven approaches, the narrative progresses through core AI techniques such as reinforcement learning, generative adversarial networks, transfer learning, and neuroevolution. The significance of explainable AI (XAI) is emphasized in this review, which also explores the intersection of quantum computing and AI. The review delves into the potential transformative effects of quantum technologies on AI advancements and highlights the challenges associated with their integration. Ethical considerations in AI, including discussions on bias, fairness, transparency, and regulatory frameworks, are also addressed. This review aims to contribute to a deeper understanding of the rapidly evolving field of AI. Reinforcement learning, generative adversarial networks, and transfer learning lead AI research, with a growing emphasis on transparency. Neuroevolution and quantum AI, though less studied, show potential for future developments.
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人工智能的进步:创新技术比较
近年来,人工智能(AI)取得了令人瞩目的进步,拓展了可能的极限,开辟了新的领域。这本比较性综述调查了人工智能进步的演变情况,对塑造了这一领域的创新技术进行了深入探讨。文章从人工智能的基本原理(包括传统机器学习和向数据驱动方法的过渡)入手,介绍了强化学习、生成对抗网络、迁移学习和神经进化等人工智能核心技术。本综述强调了可解释人工智能(XAI)的意义,同时还探讨了量子计算与人工智能的交叉。综述深入探讨了量子技术对人工智能进步的潜在变革性影响,并强调了与它们的整合相关的挑战。此外,还探讨了人工智能中的伦理问题,包括对偏见、公平性、透明度和监管框架的讨论。这篇综述旨在加深对快速发展的人工智能领域的理解。强化学习、生成式对抗网络和迁移学习引领着人工智能研究,并日益强调透明度。神经进化和量子人工智能虽然研究较少,但显示出未来发展的潜力。
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