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Heterogeneous transfer learning for activity recognition using heuristic search techniques

机译:使用启发式搜索技术进行活动识别的异构转移学习

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摘要

Purpose - The purpose of this paper is to study heterogeneous transfer learning for activity recognition using heuristic search techniques. Many pervasive computing applications require information about the activities currently being performed, but activity recognition algorithms typically require substantial amounts of labeled training data for each setting. One solution to this problem is to leverage transfer learning techniques to reuse available labeled data in new situations. Design/methodology/approach - This paper introduces three novel heterogeneous transfer learning techniques that reverse the typical transfer model and map the target feature space to the source feature space and apply them to activity recognition in a smart apartment. This paper evaluates the techniques on data from 18 different smart apartments located in an assisted-care facility and compares the results against several baselines. Findings - The three transfer learning techniques are all able to outperform the baseline comparisons in several situations. Furthermore, the techniques are successfully used in an ensemble approach to achieve even higher levels of accuracy. Originality/value - The techniques in this paper represent a considerable step forward in heterogeneous transfer learning by removing the need to rely on instance - instance or feature - feature co-occurrence data.
机译:目的-本文的目的是研究使用启发式搜索技术进行活动识别的异构转移学习。许多普适计算应用程序都需要有关当前正在执行的活动的信息,但是活动识别算法通常需要为每个设置添加大量带标签的训练数据。该问题的一种解决方案是利用转移学习技术在新情况下重用可用的标记数据。设计/方法/方法-本文介绍了三种新颖的异构转移学习技术,这些技术可以逆转典型的转移模型,并将目标特征空间映射到源特征空间,并将其应用于智能公寓中的活动识别。本文评估了来自辅助护理设施中18个不同智能公寓数据的技术,并将结果与​​多个基准进行了比较。调查结果-三种转移学习技术在某些情况下均能胜过基线比较。此外,这些技术已成功地用于整体方法中,以达到更高的准确性。原创性/价值-本文中的技术通过消除对实例-实例或特征-特征共现数据的依赖,在异构转移学习中迈出了重要的一步。

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