4.6 Article

Continual Learning Objective for Analyzing Complex Knowledge Representations

期刊

SENSORS
卷 22, 期 4, 页码 -

出版社

MDPI
DOI: 10.3390/s22041667

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continual learning; complex knowledge representations; catastrophic forgetting; multimodal datasets

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The paper proposes a continual learning objective to address the catastrophic forgetting issue in deep learning and achieves high accuracy and F1 scores across multiple datasets and different applications.
Human beings tend to incrementally learn from the rapidly changing environment without comprising or forgetting the already learned representations. Although deep learning also has the potential to mimic such human behaviors to some extent, it suffers from catastrophic forgetting due to which its performance on already learned tasks drastically decreases while learning about newer knowledge. Many researchers have proposed promising solutions to eliminate such catastrophic forgetting during the knowledge distillation process. However, to our best knowledge, there is no literature available to date that exploits the complex relationships between these solutions and utilizes them for the effective learning that spans over multiple datasets and even multiple domains. In this paper, we propose a continual learning objective that encompasses mutual distillation loss to understand such complex relationships and allows deep learning models to effectively retain the prior knowledge while adapting to the new classes, new datasets, and even new applications. The proposed objective was rigorously tested on nine publicly available, multi-vendor, and multimodal datasets that span over three applications, and it achieved the top-1 accuracy of 0.9863% and an F1-score of 0.9930.

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