Supplementary Material of Rot-Pro: Modeling Transitivity by Projection in Knowledge Graph Embedding
–Neural Information Processing Systems
In section 3.2 of the submitted paper, we use the conclusion that "the transitive relation can be represented as the union of transitive closures of of all transitive chains." S1, S2, and S3 datasets of Counties are separated by '/'. Our model is implemented in Python 3.6 using Pytorch 1.1.0. We list the best hyper-parameter setting of Rot-Pro on the above datasets in Table 2. The fully expressive of BoxE refers to that it is able to express inference patterns, which includes symmetry, anti-symmetry, inversion, composition, hierarchy, intersection, and mutual exclusion.
Neural Information Processing Systems
Nov-15-2025, 17:47:11 GMT
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