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Time-Efficient Ensemble Learning with Sample Exchange for Edge Computing

  • Wu Chen
  • , Yong Yu
  • , Keke Gai*
  • , Jiamou Liu
  • , Kim Kwang Raymond Choo
  • *此作品的通讯作者
  • Southwest University
  • The University of Auckland
  • University of Texas at San Antonio

科研成果: 期刊稿件文章同行评审

摘要

In existing ensemble learning algorithms (e.g., random forest), each base learner's model needs the entire dataset for sampling and training. However, this may not be practical in many real-world applications, and it incurs additional computational costs. To achieve better efficiency, we propose a decentralized framework: Multi-Agent Ensemble. The framework leverages edge computing to facilitate ensemble learning techniques by focusing on the balancing of access restrictions (small sub-dataset) and accuracy enhancement. Specifically, network edge nodes (learners) are utilized to model classifications and predictions in our framework. Data is then distributed to multiple base learners who exchange data via an interaction mechanism to achieve improved prediction. The proposed approach relies on a training model rather than conventional centralized learning. Findings from the experimental evaluations using 20 real-world datasets suggest that Multi-Agent Ensemble outperforms other ensemble approaches in terms of accuracy even though the base learners require fewer samples (i.e., significant reduction in computation costs).

源语言英语
文章编号3409265
期刊ACM Transactions on Internet Technology
21
3
DOI
出版状态已出版 - 8月 2021

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