The hippocampal-entorhinal complex plays a major role in the organization of memory and thought. The formation of and navigation in cognitive maps of arbitrary mental spaces via place and grid cells can serve as a representation of memories and experiences and their relations to each other. The multi-scale successor representation is proposed to be the mathematical principle underlying place and grid cell computations. Here, we present a neural network, which learns a cognitive map of a semantic space based on 32 different animal species encoded as feature vectors. The neural network successfully learns the similarities between different animal species, and constructs a cognitive map of 'animal space' based on the principle of successor representations with an accuracy of around 30% which is near to the theoretical maximum regarding the fact that all animal species have more than one possible successor, i.e. nearest neighbor in feature space. Furthermore, a hierarchical structure, i.e. different scales of cognitive maps, can be modeled based on multi-scale successor representations. We find that, in fine-grained cognitive maps, the animal vectors are evenly distributed in feature space. In contrast, in coarse-grained maps, animal vectors are highly clustered according to their biological class, i.e. amphibians, mammals and insects. This could be a possible mechanism explaining the emergence of new abstract semantic concepts. Finally, even completely new or incomplete input can be represented by interpolation of the representations from the cognitive map with remarkable high accuracy of up to 95%. We conclude that the successor representation can serve as a weighted pointer to past memories and experiences, and may therefore be a crucial building block for future machine learning to include prior knowledge, and to derive context knowledge from novel input.
翻译:河马- 内心- 内心综合体在记忆和思想组织中扮演着主要角色。 神经网络通过地点和网格细胞形成和导航任意精神空间的认知地图,可以代表记忆和思想空间的记忆和思想。 多尺度的后继代表被提议为数学原理基础所在的位置和网格细胞计算。 我们在这里展示一个神经网络, 学习以32种不同的动物物种为特征矢量编码的语义空间的认知地图。 神经网络成功地学习了不同动物物种之间的相似之处, 并根据后续代表原则构建了“ 动物空间” 的认知地图, 准确度约为30 %, 接近于理论上限。 所有动物物种都拥有不止一个可能的继承者, 即地貌空间的近邻。 此外, 等级结构, 即不同程度的认知地图, 可以建于多尺度的后继方表示。 我们发现, 在精细的认知地图中, 动物矢量的矢量分布在显著的地点空间中, 。 因此,, 在最终的类中, 上, 高级矢量前的矢量和后部, 将显示为新矢量结构, 可能进行新的矢量 。