TY - JOUR
T1 - EvolveKG
T2 - a general framework to learn evolving knowledge graphs
AU - Liu, Jiaqi
AU - Yu, Zhiwen
AU - Guo, Bin
AU - Deng, Cheng
AU - Fu, Luoyi
AU - Wang, Xinbing
AU - Zhou, Chenghu
N1 - Publisher Copyright:
© 2024, Higher Education Press.
PY - 2024/6
Y1 - 2024/6
N2 - A great many practical applications have observed knowledge evolution, i.e., continuous born of new knowledge, with its formation influenced by the structure of historical knowledge. This observation gives rise to evolving knowledge graphs whose structure temporally grows over time. However, both the modal characterization and the algorithmic implementation of evolving knowledge graphs remain unexplored. To this end, we propose EvolveKG–a general framework that enables algorithms in the static knowledge graphs to learn the evolving ones. EvolveKG quantifies the influence of a historical fact on a current one, called the effectiveness of the fact, and makes knowledge prediction by leveraging all the cross-time knowledge interaction. The novelty of EvolveKG lies in Derivative Graph–a weighted snapshot of evolution at a certain time. Particularly, each weight quantifies knowledge effectiveness through a temporarily decaying function of consistency and attenuation, two proposed factors depicting whether or not the effectiveness of a fact fades away with time. Besides, considering both knowledge creation and loss, we obtain higher prediction accuracy when the effectiveness of all the facts increases with time or remains unchanged. Under four real datasets, the superiority of EvolveKG is confirmed in prediction accuracy.
AB - A great many practical applications have observed knowledge evolution, i.e., continuous born of new knowledge, with its formation influenced by the structure of historical knowledge. This observation gives rise to evolving knowledge graphs whose structure temporally grows over time. However, both the modal characterization and the algorithmic implementation of evolving knowledge graphs remain unexplored. To this end, we propose EvolveKG–a general framework that enables algorithms in the static knowledge graphs to learn the evolving ones. EvolveKG quantifies the influence of a historical fact on a current one, called the effectiveness of the fact, and makes knowledge prediction by leveraging all the cross-time knowledge interaction. The novelty of EvolveKG lies in Derivative Graph–a weighted snapshot of evolution at a certain time. Particularly, each weight quantifies knowledge effectiveness through a temporarily decaying function of consistency and attenuation, two proposed factors depicting whether or not the effectiveness of a fact fades away with time. Besides, considering both knowledge creation and loss, we obtain higher prediction accuracy when the effectiveness of all the facts increases with time or remains unchanged. Under four real datasets, the superiority of EvolveKG is confirmed in prediction accuracy.
KW - algorithmic implementation
KW - evolution
KW - knowledge graph
KW - modal characterization
UR - http://www.scopus.com/inward/record.url?scp=85182815774&partnerID=8YFLogxK
U2 - 10.1007/s11704-022-2467-9
DO - 10.1007/s11704-022-2467-9
M3 - 文章
AN - SCOPUS:85182815774
SN - 2095-2228
VL - 18
JO - Frontiers of Computer Science
JF - Frontiers of Computer Science
IS - 3
M1 - 183309
ER -