论文标题
持续的原型演化:从非平稳数据流在线学习
Continual Prototype Evolution: Learning Online from Non-Stationary Data Streams
论文作者
论文摘要
在表示学习中,获得典型的特征来表示班级分布。但是,从流数据在线学习原型证明了一项艰巨的努力,因为它们迅速过时,这是由于学习过程中不断变化的参数空间而引起的。此外,持续学习并不认为数据流是固定的,通常导致灾难性忘记以前的知识。首先,我们介绍了一个解决这两个问题的系统,该系统原型在共享的潜在空间中不断发展,从而在任何时间点都可以学习和预测。与持续学习中的主要工作相反,数据流是以在线方式处理的,没有其他任务信息,而有效的内存方案为数据流提供了鲁棒性。除了最近的基于邻居的预测外,学习还通过新的目标函数来促进学习,鼓励群体原型的集群密度和增加的阶层方差。此外,每个批次中的伪概率提升了潜在的空间质量,这是由记忆中的示例重播所构成的。作为另一个贡献,我们将现有的范式推广到持续学习中,以通过形式化两名Agent Learner-Evaluator框架从数据流中纳入数据增量学习。我们在八个基准测试中获得了明显的余量,包括三个高度不平衡的数据流。
Attaining prototypical features to represent class distributions is well established in representation learning. However, learning prototypes online from streaming data proves a challenging endeavor as they rapidly become outdated, caused by an ever-changing parameter space during the learning process. Additionally, continual learning does not assume the data stream to be stationary, typically resulting in catastrophic forgetting of previous knowledge. As a first, we introduce a system addressing both problems, where prototypes evolve continually in a shared latent space, enabling learning and prediction at any point in time. In contrast to the major body of work in continual learning, data streams are processed in an online fashion, without additional task-information, and an efficient memory scheme provides robustness to imbalanced data streams. Besides nearest neighbor based prediction, learning is facilitated by a novel objective function, encouraging cluster density about the class prototype and increased inter-class variance. Furthermore, the latent space quality is elevated by pseudo-prototypes in each batch, constituted by replay of exemplars from memory. As an additional contribution, we generalize the existing paradigms in continual learning to incorporate data incremental learning from data streams by formalizing a two-agent learner-evaluator framework. We obtain state-of-the-art performance by a significant margin on eight benchmarks, including three highly imbalanced data streams.