论文标题
在线结构化元学习
Online Structured Meta-learning
论文作者
论文摘要
快速学习对于在在线平台中部署的机器智能至关重要。凭借从学习任务转移知识的能力,元学习通过不断使用博学的先验更新模型来显示其在在线场景中的有效性。但是,当前的在线元学习算法仅限于学习全球共享的元学习者,当任务包含异质性信息本质上与众不同且难以分享时,这可能会导致次级结果。我们通过提出一个在线结构化元学习(OSML)框架来克服这一限制。受人类和层次特征表示的知识组织的启发,OSML明确将元学习者视为具有不同知识块的元层次图。遇到新任务时,它通过使用最相关的知识块或探索新块来构建元知识途径。通过元知识途径,该模型能够快速适应新任务。此外,新知识进一步纳入了选定的块中。在三个数据集上的实验证明了我们在均质和异质任务的背景下提出的框架的有效性和解释性。
Learning quickly is of great importance for machine intelligence deployed in online platforms. With the capability of transferring knowledge from learned tasks, meta-learning has shown its effectiveness in online scenarios by continuously updating the model with the learned prior. However, current online meta-learning algorithms are limited to learn a globally-shared meta-learner, which may lead to sub-optimal results when the tasks contain heterogeneous information that are distinct by nature and difficult to share. We overcome this limitation by proposing an online structured meta-learning (OSML) framework. Inspired by the knowledge organization of human and hierarchical feature representation, OSML explicitly disentangles the meta-learner as a meta-hierarchical graph with different knowledge blocks. When a new task is encountered, it constructs a meta-knowledge pathway by either utilizing the most relevant knowledge blocks or exploring new blocks. Through the meta-knowledge pathway, the model is able to quickly adapt to the new task. In addition, new knowledge is further incorporated into the selected blocks. Experiments on three datasets demonstrate the effectiveness and interpretability of our proposed framework in the context of both homogeneous and heterogeneous tasks.