论文标题
绿色学习:介绍,例子和展望
Green Learning: Introduction, Examples and Outlook
论文作者
论文摘要
在过去的十年中,人工智能(AI)的快速进步主要建立在深度学习(DL)的广泛应用之上。但是,越来越大的DL网络产生的高碳足迹成为了可持续性的关注。此外,DL决策机制有些观察,只能通过测试数据来验证。绿色学习(GL)已被认为是解决这些问题的替代范式。 GL的特征是碳足迹低,小型模型大小,低计算复杂性和逻辑透明度。它在云中心以及移动/边缘设备中提供能源有效的解决方案。 GL还提供了一个清晰,合乎逻辑的决策过程,以获得人们的信任。近年来,已经开发了几种统计工具来实现这一目标。它们包括子空间近似,无监督和监督的表示学习,监督判别功能选择以及特征空间分区。我们已经看到了一些成功的GL示例,其性能与最先进的DL解决方案相当。本文介绍了GL,其展示的应用程序和未来的展望。
Rapid advances in artificial intelligence (AI) in the last decade have largely been built upon the wide applications of deep learning (DL). However, the high carbon footprint yielded by larger and larger DL networks becomes a concern for sustainability. Furthermore, DL decision mechanism is somewhat obsecure and can only be verified by test data. Green learning (GL) has been proposed as an alternative paradigm to address these concerns. GL is characterized by low carbon footprints, small model sizes, low computational complexity, and logical transparency. It offers energy-effective solutions in cloud centers as well as mobile/edge devices. GL also provides a clear and logical decision-making process to gain people's trust. Several statistical tools have been developed to achieve this goal in recent years. They include subspace approximation, unsupervised and supervised representation learning, supervised discriminant feature selection, and feature space partitioning. We have seen a few successful GL examples with performance comparable with state-of-the-art DL solutions. This paper offers an introduction to GL, its demonstrated applications, and future outlook.