Continual learning and its industrial applications: A selective review

J. Lian, K. Choi, B. Veeramani, A. Hu, S. Murli, L. Freeman, E. Bowen, X. Deng
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Abstract

In many industrial applications, datasets are often obtained in a sequence associated with a series of similar but different tasks. To model these datasets, a machine‐learning algorithm, which performed well on the previous task, may not have as strong a performance on the current task. When the architecture of the algorithm is trained to adapt to new tasks, often the whole architecture needs to be revised and the old knowledge of modeling can be forgotten. Efforts to make the algorithm work for all the relevant tasks can cost large computational resources and data storage. Continual learning, also called lifelong learning or continual lifelong learning, refers to the concept that these algorithms have the ability to continually learn without forgetting the information obtained from previous task. In this work, we provide a broad view of continual learning techniques and their industrial applications. Our focus will be on reviewing the current methodologies and existing applications, and identifying a gap between the current methodology and the modern industrial needs.This article is categorized under: Technologies > Artificial Intelligence Fundamental Concepts of Data and Knowledge > Knowledge Representation Application Areas > Business and Industry
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持续学习及其工业应用:选择性综述
在许多工业应用中,数据集的获取往往与一系列相似但不同的任务相关联。为了对这些数据集进行建模,在前一个任务中表现出色的机器学习算法在当前任务中可能表现不佳。当训练算法架构以适应新任务时,往往需要修改整个架构,而建模的旧知识可能会被遗忘。要使算法适用于所有相关任务,需要耗费大量的计算资源和数据存储空间。持续学习,也称为终身学习或持续终身学习,指的是这些算法具有持续学习的能力,而不会遗忘从以前任务中获得的信息。在这项工作中,我们将广泛介绍持续学习技术及其工业应用。我们的重点是回顾当前的方法和现有应用,并找出当前方法与现代工业需求之间的差距:技术 > 人工智能 数据和知识的基本概念 > 知识表示 应用领域 > 商业和工业
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