4.7 Article

Hierarchical Lifelong Learning by Sharing Representations and Integrating Hypothesis

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSMC.2018.2884996

关键词

Deep learning; image processing; lifelong machine learning (LML); representations learning

资金

  1. National Natural Science Foundation of China [61702195, 61751202, U181320097, 61572540, U180120050, 61702192, U1636218]
  2. Guangzhou Key Laboratory of Body Data Science [201605030011]
  3. Science and Technology Program of Guangzhou of China [201704020043]
  4. Fundamental Research Funds for the Central Universities [2017BQ059]

向作者/读者索取更多资源

Lifelong machine learning systems require labeled data for task relationships extraction, while the hierarchical lifelong learning algorithm excels in handling unlabeled data and intertask distribution shift.
In lifelong machine learning (LML) systems, consecutive new tasks from changing circumstances are learned and added to the system. However, sufficiently labeled data are indispensable for extracting intertask relationships before transferring knowledge in classical supervised LML systems. Inadequate labels may deteriorate the performance due to the poor initial approximation. In order to extend the typical LML system, we propose a novel hierarchical lifelong learning algorithm (HLLA) consisting of two following layers: 1) the knowledge layer consisted of shared representations and integrated knowledge basis at the bottom and 2) parameterized hypothesis functions with features at the top. Unlabeled data is leveraged in HLLA for pretraining of the shared representations. We also have considered a selective inherited updating method to deal with intertask distribution shifting. Experiments show that our HLLA method outperforms many other recent LML algorithms, especially when dealing with higher dimensional, lower correlation, and fewer labeled data problems.

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