利用自适应多任务多视图学习进行增量数据流分类

IF 7.7 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Jun Wang;Maiwang Shi;Xiao Zhang;Yan Li;Yunsheng Yuan;Chenglei Yang;Dongxiao Yu
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引用次数: 0

摘要

随着数据收集能力的增强,在众多应用场景中积累了大量的流数据。具体来说,基于移动传感器的数据流分类问题可以形式化为一个多任务多视图学习问题,具体任务包括从多个传感器收集的具有共享特征的多个视图。现有的增量学习方法通常是单任务单视图的,无法学习相关任务和视图之间的共享表征。为了应对上述挑战,我们利用多任务多视图学习的思想,提出了一种用于数据流分类的自适应多任务多视图增量学习框架,称为 MTMVIS。具体来说,首先利用注意力机制对不同视角的传感器数据进行对齐。此外,MTMVIS 还从多任务多视图学习的角度出发,使用自适应 Fisher 正则化来克服增量学习中的灾难性遗忘。结果表明,根据在两个不同数据集上与其他基线进行的实验,所提出的框架优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incremental Data Stream Classification with Adaptive Multi-Task Multi-View Learning
With the enhancement of data collection capabilities, massive streaming data have been accumulated in numerous application scenarios. Specifically, the issue of classifying data streams based on mobile sensors can be formalized as a multi-task multi-view learning problem with a specific task comprising multiple views with shared features collected from multiple sensors. Existing incremental learning methods are often single-task single-view, which cannot learn shared representations between relevant tasks and views. An adaptive multi-task multi-view incremental learning framework for data stream classification called MTMVIS is proposed to address the above challenges, utilizing the idea of multi-task multi-view learning. Specifically, the attention mechanism is first used to align different sensor data of different views. In addition, MTMVIS uses adaptive Fisher regularization from the perspective of multi-task multi-view learning to overcome catastrophic forgetting in incremental learning. Results reveal that the proposed framework outperforms state-of-the-art methods based on the experiments on two different datasets with other baselines.
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来源期刊
Big Data Mining and Analytics
Big Data Mining and Analytics Computer Science-Computer Science Applications
CiteScore
20.90
自引率
2.20%
发文量
84
期刊介绍: Big Data Mining and Analytics, a publication by Tsinghua University Press, presents groundbreaking research in the field of big data research and its applications. This comprehensive book delves into the exploration and analysis of vast amounts of data from diverse sources to uncover hidden patterns, correlations, insights, and knowledge. Featuring the latest developments, research issues, and solutions, this book offers valuable insights into the world of big data. It provides a deep understanding of data mining techniques, data analytics, and their practical applications. Big Data Mining and Analytics has gained significant recognition and is indexed and abstracted in esteemed platforms such as ESCI, EI, Scopus, DBLP Computer Science, Google Scholar, INSPEC, CSCD, DOAJ, CNKI, and more. With its wealth of information and its ability to transform the way we perceive and utilize data, this book is a must-read for researchers, professionals, and anyone interested in the field of big data analytics.
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