Hazra Tanmoy, Anjaria Kushal
Department of Computer Science and Engineering, Indian Institute of Information Technology Pune, Pune, Maharashtra India.
Institute of Rural Management Anand (IRMA), Post Box No. 60, Anand, Gujarat 388001 India.
Multimed Tools Appl. 2022;81(6):8963-8994. doi: 10.1007/s11042-022-12153-2. Epub 2022 Feb 9.
This paper provides a comprehensive overview of the applications of game theory in deep learning. Today, deep learning is a fast-evolving area for research in the domain of artificial intelligence. Alternatively, game theory has been showing its multi-dimensional applications in the last few decades. The application of game theory to deep learning includes another dimension in research. Game theory helps to model or solve various deep learning-based problems. Existing research contributions demonstrate that game theory is a potential approach to improve results in deep learning models. The design of deep learning models often involves a game-theoretic approach. Most of the classification problems which popularly employ a deep learning approach can be seen as a Stackelberg game. Generative Adversarial Network (GAN) is a deep learning architecture that has gained popularity in solving complex computer vision problems. GANs have their roots in game theory. The training of the generators and discriminators in GANs is essentially a two-player zero-sum game that allows the model to learn complex functions. This paper will give researchers an extensive account of significant contributions which have taken place in deep learning using game-theoretic concepts thus, giving a clear insight, challenges, and future directions. The current study also details various real-time applications of existing literature, valuable datasets in the field, and the popularity of this research area in recent years of publications and citations.
本文全面概述了博弈论在深度学习中的应用。如今,深度学习是人工智能领域一个快速发展的研究领域。另外,在过去几十年里,博弈论已展现出其多维度的应用。博弈论在深度学习中的应用为该研究增添了新的维度。博弈论有助于对各种基于深度学习的问题进行建模或求解。现有研究成果表明,博弈论是一种提升深度学习模型效果的潜在方法。深度学习模型的设计常常涉及博弈论方法。大多数普遍采用深度学习方法的分类问题都可被视为斯塔克尔伯格博弈。生成对抗网络(GAN)是一种在解决复杂计算机视觉问题方面颇受关注的深度学习架构。GAN源于博弈论。GAN中生成器和判别器的训练本质上是一个双人零和博弈,这使得模型能够学习复杂函数。本文将向研究人员详细介绍运用博弈论概念在深度学习领域所取得的重大成果,从而清晰地洞察其中的挑战和未来发展方向。当前研究还详细阐述了现有文献的各种实时应用、该领域有价值的数据集,以及近年来该研究领域在出版物和引用方面的热度。