Possibi¬lities of Using Neural Network Incremental Learning

E. S. Abramova, A. Orlov, K. Makarov
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Abstract

The present time is characterized by unprecedented growth in the volume of information flows. Information processing underlies the solution of many practical problems. The intelligent infor-mation systems applications range is extremely extensive: from managing continuous technological processes in real-time to solving commercial and administrative problems. Intelligent information systems should have such a main property, as the ability to quickly process dynamical incoming da-ta in real-time. Also, intelligent information systems should be extracting knowledge from previously solved problems. Incremental neural network training has become one of the topical issues in ma-chine learning in recent years. Compared to traditional machine learning, incremental learning al-lows assimilating new knowledge that comes in gradually and preserving old knowledge gained from previous tasks. Such training should be useful in intelligent systems where data flows dynamically. Aim. Consider the concepts, problems, and methods of incremental neural network training, as well as assess the possibility of using it in intelligent systems development. Materials and methods. The idea of incremental learning, obtained in the analysis of a person's learning during his life, is consid-ered. The terms used in the literature to describe incremental learning are presented. The obstacles that arise in achieving the goal of incremental learning are described. A description of three scenari-os of incremental learning, among which class-incremental learning is distinguished, is given. An analysis of the methods of incremental learning, grouped into a family of techniques by the solution of the catastrophic forgetting problem, is given. The possibilities offered by incremental learning ver-sus traditional machine learning are presented. Results. The article attempts to assess the current state and the possibility of using incremental neural network learning, to identify differences from traditional machine learning. Conclusion. Incremental learning is useful for future intelligent sys-tems, as it allows to maintain existing knowledge in the process of updating, avoid learning from scratch, and dynamically adjust the model's ability to learn according to new data available.
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使用神经网络增量学习的可能性
当今时代的特点是信息流的数量空前增长。信息处理是解决许多实际问题的基础。智能信息系统的应用范围非常广泛:从实时管理连续的技术过程到解决商业和管理问题。智能信息系统应该具有这样一个主要特性,即能够快速实时地处理动态传入的数据。此外,智能信息系统应该从以前解决的问题中提取知识。近年来,增量神经网络训练已成为机器学习领域的热点问题之一。与传统的机器学习相比,增量学习可以吸收逐渐进入的新知识,并保留从以前的任务中获得的旧知识。这种训练在数据动态流动的智能系统中应该是有用的。的目标。考虑增量神经网络训练的概念、问题和方法,并评估在智能系统开发中使用它的可能性。材料和方法。增量学习的思想是在分析一个人一生的学习过程中得到的。提出了文献中用于描述增量学习的术语。描述了在实现增量学习目标时出现的障碍。对增量学习的三种场景进行了描述,其中区分了类增量学习。通过解决灾难性遗忘问题,对增量学习方法进行了分析,并将其归为一系列技术。介绍了增量学习与传统机器学习相比所提供的可能性。结果。本文试图评估使用增量神经网络学习的现状和可能性,以识别与传统机器学习的区别。结论。增量学习对于未来的智能系统非常有用,因为它允许在更新过程中维护现有知识,避免从头开始学习,并根据可用的新数据动态调整模型的学习能力。
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