Next challenges for adaptive learning systems

I. Žliobaitė, A. Bifet, M. Gaber, B. Gabrys, João Gama, Leandro L. Minku, Katarzyna Musial
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引用次数: 96

Abstract

Learning from evolving streaming data has become a 'hot' research topic in the last decade and many adaptive learning algorithms have been developed. This research was stimulated by rapidly growing amounts of industrial, transactional, sensor and other business data that arrives in real time and needs to be mined in real time. Under such circumstances, constant manual adjustment of models is in-efficient and with increasing amounts of data is becoming infeasible. Nevertheless, adaptive learning models are still rarely employed in business applications in practice. In the light of rapidly growing structurally rich 'big data', new generation of parallel computing solutions and cloud computing services as well as recent advances in portable computing devices, this article aims to identify the current key research directions to be taken to bring the adaptive learning closer to application needs. We identify six forthcoming challenges in designing and building adaptive learning (pre-diction) systems: making adaptive systems scalable, dealing with realistic data, improving usability and trust, integrat-ing expert knowledge, taking into account various application needs, and moving from adaptive algorithms towards adaptive tools. Those challenges are critical for the evolving stream settings, as the process of model building needs to be fully automated and continuous.
适应性学习系统的下一个挑战
在过去十年中,从不断变化的流数据中学习已经成为一个“热门”研究课题,许多自适应学习算法已经被开发出来。这一研究是由快速增长的工业、交易、传感器和其他商业数据推动的,这些数据是实时到达的,需要实时挖掘。在这种情况下,不断手动调整模型是低效的,而且随着数据量的增加也变得不可行。然而,在实践中,适应性学习模型在商业应用中的应用仍然很少。鉴于快速增长的结构丰富的“大数据”,新一代并行计算解决方案和云计算服务以及便携式计算设备的最新进展,本文旨在确定当前需要采取的关键研究方向,以使自适应学习更接近应用需求。我们确定了在设计和构建自适应学习(预测)系统方面即将面临的六个挑战:使自适应系统具有可扩展性,处理现实数据,提高可用性和信任,集成专家知识,考虑各种应用需求,以及从自适应算法转向自适应工具。这些挑战对于不断发展的流设置是至关重要的,因为模型构建过程需要完全自动化和连续。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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