Gossip-Based Learning under Drifting Concepts in Fully Distributed Networks

István Hegedüs, Róbert Ormándi, Márk Jelasity
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引用次数: 13

Abstract

In fully distributed networks data mining is an important tool for monitoring, control, and for offering personalized services to users. The underlying data model can change as a function of time according to periodic (daily, weakly) patterns, sudden changes, or long term transformations of the environment or the system itself. For a large space of the possible models for this dynamism-when the network is very large but only a few training samples can be obtained at all nodes locally-no efficient fully distributed solution is known. Here we present an approach, that is able to follow concept drift in very large scale and fully distributed networks. The algorithm does not collect data to a central location, instead it is based on online learners taking random walks in the network. To achieve adaptivity the diversity of the learners is controlled by managing the life spans of the models. We demonstrate through a thorough experimental analysis, that in a well specified range of feasible models of concept drift, where there is little data available locally in a large network, our algorithm outperforms known methods from related work.
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全分布网络中漂移概念下基于八卦的学习
在全分布式网络中,数据挖掘是监测、控制和向用户提供个性化服务的重要工具。底层数据模型可以根据环境或系统本身的周期性(每日、弱)模式、突然变化或长期转换作为时间函数进行更改。对于这种动态的可能模型的大空间-当网络非常大,但在所有节点局部只能获得少量训练样本时-没有有效的完全分布式解决方案是已知的。在这里,我们提出了一种能够在非常大规模和完全分布式的网络中跟踪概念漂移的方法。该算法不将数据收集到一个中心位置,而是基于在线学习者在网络中随机漫步。为了实现自适应,通过管理模型的生命周期来控制学习器的多样性。我们通过彻底的实验分析证明,在概念漂移的可行模型的明确范围内,在大型网络中本地可用数据很少的情况下,我们的算法优于相关工作中的已知方法。
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