Hyperbolic ordinal embedding (HOE) represents entities as points in hyperbolic space so that they agree as well as possible with given constraints in the form of entity i is more similar to entity j than to entity k. It has been experimentally shown that HOE can obtain representations of hierarchical data such as a knowledge base and a citation network effectively, owing to hyperbolic space's exponential growth property. However, its theoretical analysis has been limited to ideal noiseless settings, and its generalization error in compensation for hyperbolic space's exponential representation ability has not been guaranteed. The difficulty is that existing generalization error bound derivations for ordinal embedding based on the Gramian matrix do not work in HOE, since hyperbolic space is not inner-product space. In this paper, through our novel characterization of HOE with decomposed Lorentz Gramian matrices, we provide a generalization error bound of HOE for the first time, which is at most exponential with respect to the embedding space's radius. Our comparison between the bounds of HOE and Euclidean ordinal embedding shows that HOE's generalization error is reasonable as a cost for its exponential representation ability.
翻译:超球或超球嵌入(HOE) 代表实体作为超双曲空间的点点, 以便它们同意, 也有可能同意实体 i 形式的特定限制比实体 j 更类似于实体 j 。 实验显示, 由于超球空间的指数增长属性, HOE 能够有效地获得等级数据的代表性, 如知识库和引用网络 。 但是, 它的理论分析限于理想的无噪音环境, 其超球空间指数代表能力补偿的普遍化错误没有得到保证 。 困难在于基于 格拉米安 矩阵 的 或普通嵌入( 或普通嵌入) 的现有一般化错误在 HOE 中并不起作用, 因为超球空间不是内产空间 。 在本文中, 我们通过对 HOE 与不兼容的Lorentz Gramian 矩阵的新型描述, 我们首次提供了 HOE 的概括性错误, 与嵌入空间的半径最为指数化。 我们对 HOE 和 Euclidean 或dinal 嵌入的界限所作的比较表明, 其指数化总成本代表了 。