Knowledge Graph Embedding via Dynamic Mapping Matrix
dynamic mapping matrix for each entity-relation pair by considering the diversity of entities and re-lations simultaneously. It provides a exible style to project entity representations to relation vec-tor space; (2) Compared with TransR/CTransR, TransD has fewer parameters and has no matrix-vector multiplication. It is easy to be applied
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