论文标题

月球:用于漂移数据流的蜂窝自动机

LUNAR: Cellular Automata for Drifting Data Streams

论文作者

Lobo, Jesus L., Del Ser, Javier, Herrera, Francisco

论文摘要

随着以快速流的形式产生的Guges量的出现,实时机器学习已成为在众多现实世界应用中出现的相关性的挑战。处理如此快速的流通常需要高内存和处理资源。此外,它们可能会受到非平稳现象(概念漂移)的影响,通过该现象,学习方法必须检测流数据分布的变化并适应这些不断发展的条件。在实时场景中,尤其是在计算资源受到严重限制的实时场景中尤其注意的,因为它发生在小型的,众多的,相互联系的处理单元(例如所谓的智能灰尘,实用程序或群体机器人范式)的网络中。在这项工作中,我们提出了Lunar,这是一个流化的蜂窝自动机的流媒体版本,该版本已成功地满足上述要求。在适应漂流条件的同时,它可以充当真正的增量学习者。与长期且成功的在线学习方法相比,具有合成和真实数据的广泛模拟将提供其在分类绩效方面的竞争行为的证据。

With the advent of huges volumes of data produced in the form of fast streams, real-time machine learning has become a challenge of relevance emerging in a plethora of real-world applications. Processing such fast streams often demands high memory and processing resources. In addition, they can be affected by non-stationary phenomena (concept drift), by which learning methods have to detect changes in the distribution of streaming data, and adapt to these evolving conditions. A lack of efficient and scalable solutions is particularly noted in real-time scenarios where computing resources are severely constrained, as it occurs in networks of small, numerous, interconnected processing units (such as the so-called Smart Dust, Utility Fog, or Swarm Robotics paradigms). In this work we propose LUNAR, a streamified version of cellular automata devised to successfully meet the aforementioned requirements. It is able to act as a real incremental learner while adapting to drifting conditions. Extensive simulations with synthetic and real data will provide evidence of its competitive behavior in terms of classification performance when compared to long-established and successful online learning methods.

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