论文标题
自我牵键的关联记忆
Self-Attentive Associative Memory
论文作者
论文摘要
迄今为止,具有外部内存的神经网络仅限于单个内存,并具有内存相互作用的有损表示。内存零件之间关系的丰富表示敦促高阶和隔离的关系记忆。在本文中,我们建议将单个体验的存储(项目存储器)及其发生的关系(关系记忆)分开。这个想法是通过一种新颖的自我牵手的关联记忆(SAM)操作员实现的。在外部产品上发现,SAM形成了一组关联记忆,代表了任意内存元素之间的假设高阶关系,通过该元素,由项目存储器构建了关系记忆。这两个记忆被连接到能够记忆和关系推理的单个顺序模型中。我们通过提出的两个内存模型在各种机器学习任务中取得了竞争成果,从挑战综合问题到实用的测试台,例如几何,图形,增强学习和问题答案。
Heretofore, neural networks with external memory are restricted to single memory with lossy representations of memory interactions. A rich representation of relationships between memory pieces urges a high-order and segregated relational memory. In this paper, we propose to separate the storage of individual experiences (item memory) and their occurring relationships (relational memory). The idea is implemented through a novel Self-attentive Associative Memory (SAM) operator. Found upon outer product, SAM forms a set of associative memories that represent the hypothetical high-order relationships between arbitrary pairs of memory elements, through which a relational memory is constructed from an item memory. The two memories are wired into a single sequential model capable of both memorization and relational reasoning. We achieve competitive results with our proposed two-memory model in a diversity of machine learning tasks, from challenging synthetic problems to practical testbeds such as geometry, graph, reinforcement learning, and question answering.