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Lifelong Learning of Spatiotemporal Representations With Dual-Memory Recurrent Self-Organization

机译:终身记忆与双记忆递归自组织的时空表示形式

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摘要

Artificial autonomous agents and robots interacting in complex environments are required to continually acquire and fine-tune knowledge over sustained periods of time. The ability to learn from continuous streams of information is referred to as lifelong learning and represents a long-standing challenge for neural network models due to catastrophic forgetting in which novel sensory experience interferes with existing representations and leads to abrupt decreases in the performance on previously acquired knowledge. Computational models of lifelong learning typically alleviate catastrophic forgetting in experimental scenarios with given datasets of static images and limited complexity, thereby differing significantly from the conditions artificial agents are exposed to. In more natural settings, sequential information may become progressively available over time and access to previous experience may be restricted. Therefore, specialized neural network mechanisms are required that adapt to novel sequential experience while preventing disruptive interference with existing representations. In this paper, we propose a dual-memory self-organizing architecture for lifelong learning scenarios. The architecture comprises two growing recurrent networks with the complementary tasks of learning object instances (episodic memory) and categories (semantic memory). Both growing networks can expand in response to novel sensory experience: the episodic memory learns fine-grained spatiotemporal representations of object instances in an unsupervised fashion while the semantic memory uses task-relevant signals to regulate structural plasticity levels and develop more compact representations from episodic experience. For the consolidation of knowledge in the absence of external sensory input, the episodic memory periodically replays trajectories of neural reactivations. We evaluate the proposed model on the CORe50 benchmark dataset for continuous object recognition, showing that we significantly outperform current methods of lifelong learning in three different incremental learning scenarios.
机译:需要在复杂环境中进行交互的人工自治代理和机器人来在持续的时间段内不断获取和微调知识。从连续的信息流中学习的能力被称为终身学习,并且由于灾难性的遗忘而对神经网络模型提出了长期的挑战,在灾难性的遗忘中,新颖的感官体验会干扰现有的表示,并导致先前获得的性能突然下降。知识。终身学习的计算模型通常在给定静态图像数据集和有限复杂性的情况下,减轻实验场景中的灾难性遗忘,从而与人造制剂所处的条件有很大不同。在更自然的环境中,随着时间的流逝,顺序信息可能会逐渐可用,并且访问以前的经验可能会受到限制。因此,需要专门的神经网络机制来适应新颖的顺序体验,同时防止对现有表示的破坏性干扰。在本文中,我们针对终身学习方案提出了一种双记忆自组织架构。该体系结构包括两个不断发展的递归网络,这些网络具有学习对象实例(事件记忆)和类别(语义记忆)的互补任务。两个成长中的网络都可以响应新颖的感官体验而扩展:情节记忆以无监督的方式学习对象实例的细粒度时空表示,而语义记忆使用与任务相关的信号来调节结构可塑性水平,并从情节体验中开发出更紧凑的表示。为了在没有外部感官输入的情况下巩固知识,情景记忆会定期重放神经激活的轨迹。我们在CORe50基准数据集上评估了提出的模型以进行连续的物体识别,表明在三种不同的增量学习方案中,我们的性能大大优于当前的终身学习方法。

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