Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:2416-2420. doi: 10.1109/EMBC48229.2022.9871690.
The recent success of deep neural networks in prediction tasks on wearable sensor data is evident. However, in more practical online learning scenarios, where new data arrive sequentially, neural networks suffer severely from the "catastrophic forgetting" problem. In real-world settings, given a pre-trained model on the old data, when we collect new data, it is practically infeasible to re-train the model on both old and new data because the computational costs will increase dramatically as more and more data arrive in time. However, if we fine-tune the model only with the new data because the new data might be different from the old data, the neural network parameters will change to fit the new data. As a result, the new parameters are no longer suitable for the old data. This phenomenon is known as catastrophic forgetting, and continual learning research aims to overcome this problem with minimal computational costs. While most of the continual learning research focuses on computer vision tasks, implications of catastrophic forgetting in wearable computing research and potential avenues to address this problem have remained unexplored. To address this knowledge gap, we study continual learning for activity recognition using wearable sensor data. We show that the catastrophic forgetting problem is a critical challenge for real-world deployment of machine learning models for wearables. Moreover, we show that the catastrophic forgetting problem can be alleviated by employing various training techniques.
深度学习网络在可穿戴传感器数据预测任务中的近期成功是显而易见的。然而,在更实际的在线学习场景中,新数据是顺序到达的,神经网络严重受到“灾难性遗忘”问题的困扰。在现实世界的环境中,给定一个在旧数据上训练的预先训练的模型,当我们收集新数据时,实际上不可能在旧数据和新数据上重新训练模型,因为随着越来越多的数据在时间上到达,计算成本将急剧增加。然而,如果我们仅使用新数据微调模型,因为新数据可能与旧数据不同,那么神经网络参数将发生变化以适应新数据。因此,新参数不再适合旧数据。这种现象被称为灾难性遗忘,连续学习研究旨在以最小的计算成本克服这个问题。虽然大多数连续学习研究都集中在计算机视觉任务上,但灾难性遗忘在可穿戴计算研究中的影响以及解决这个问题的潜在途径仍然没有得到探索。为了解决这个知识差距,我们研究了使用可穿戴传感器数据进行活动识别的连续学习。我们表明,灾难性遗忘问题是机器学习模型在可穿戴设备中实际部署的一个关键挑战。此外,我们还表明,通过采用各种训练技术,可以缓解灾难性遗忘问题。