Scalable Explanation of Inferences on Large Graphs

13 Aug 2019Chao ChenYifei LiuXi ZhangSihong Xie

Probabilistic inferences distill knowledge from graphs to aid human make important decisions. Due to the inherent uncertainty in the model and the complexity of the knowledge, it is desirable to help the end-users understand the inference outcomes... (read more)

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