Machine learning for streaming data: state of the art, challenges, and opportunities

Heitor Murilo Gomes, Jesse Read, A. Bifet, J. P. Barddal, João Gama
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引用次数: 146

Abstract

Incremental learning, online learning, and data stream learning are terms commonly associated with learning algorithms that update their models given a continuous influx of data without performing multiple passes over data. Several works have been devoted to this area, either directly or indirectly as characteristics of big data processing, i.e., Velocity and Volume. Given the current industry needs, there are many challenges to be addressed before existing methods can be efficiently applied to real-world problems. In this work, we focus on elucidating the connections among the current stateof- the-art on related fields; and clarifying open challenges in both academia and industry. We treat with special care topics that were not thoroughly investigated in past position and survey papers. This work aims to evoke discussion and elucidate the current research opportunities, highlighting the relationship of different subareas and suggesting courses of action when possible.
流数据的机器学习:现状、挑战和机遇
增量学习、在线学习和数据流学习是通常与学习算法相关的术语,这些算法在给定连续涌入的数据而不执行多次遍历数据的情况下更新其模型。在这个领域已经有了一些作品,直接或间接地作为大数据处理的特征,即Velocity和Volume。考虑到当前的行业需求,在现有方法能够有效地应用于实际问题之前,还有许多挑战需要解决。在这项工作中,我们重点阐述了当前相关领域的最新技术之间的联系;澄清学术界和工业界的公开挑战。我们特别小心地对待在过去的立场和调查文件中没有彻底调查的主题。这项工作旨在唤起讨论和阐明当前的研究机会,突出不同子领域的关系,并在可能的情况下提出行动方案。
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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