TY - JOUR
T1 - Scaling Up Markov Logic Probabilistic Inference for Social Graphs
AU - Chen, Haiquan
AU - Ku, Wei Shinn
AU - Wang, Haixun
AU - Tang, Liang
AU - Sun, Min Te
N1 - Publisher Copyright:
© 2016 IEEE.
PY - 2017/2/1
Y1 - 2017/2/1
N2 - Link prediction is a fundamental problem in social network analysis. Although the link prediction problem is not new, the challenge of how to exploit various existing network information, such as network structure data and node attribute data, to enable AI-style knowledge inference for large social networks still remains unsolved. In this paper, we design and implement a scalable framework that treats link prediction as knowledge reasoning using Markov Logic Networks (MLNs). Differing from other probabilistic graphical models, MLNs allow undirected relationships with cycles and long-range (non-adjacent) dependency, which are essential and abound in social networks. In our framework, the prior knowledge is captured as the structure dependency (such as friendship) and the attribute dependency (such as social communities) in terms of inference rules, associated with uncertainty represented as probabilities. Next, we employ the random walk to discover the inference subgraph, on which probabilistic inference is performed, so that the required computation and storage cost can be significantly reduced without much sacrifice of the inference accuracy. Our extensive experiments with real-world datasets verify the superiority of our proposed approaches over two baseline methods and show that our approaches are able to provide a tunable tradeoff between inference accuracy and efficiency.
AB - Link prediction is a fundamental problem in social network analysis. Although the link prediction problem is not new, the challenge of how to exploit various existing network information, such as network structure data and node attribute data, to enable AI-style knowledge inference for large social networks still remains unsolved. In this paper, we design and implement a scalable framework that treats link prediction as knowledge reasoning using Markov Logic Networks (MLNs). Differing from other probabilistic graphical models, MLNs allow undirected relationships with cycles and long-range (non-adjacent) dependency, which are essential and abound in social networks. In our framework, the prior knowledge is captured as the structure dependency (such as friendship) and the attribute dependency (such as social communities) in terms of inference rules, associated with uncertainty represented as probabilities. Next, we employ the random walk to discover the inference subgraph, on which probabilistic inference is performed, so that the required computation and storage cost can be significantly reduced without much sacrifice of the inference accuracy. Our extensive experiments with real-world datasets verify the superiority of our proposed approaches over two baseline methods and show that our approaches are able to provide a tunable tradeoff between inference accuracy and efficiency.
KW - Markov logic network
KW - Social network analysis
KW - graph pruning
KW - probabilistic graphical models
UR - http://www.scopus.com/inward/record.url?scp=85010002184&partnerID=8YFLogxK
U2 - 10.1109/TKDE.2016.2625251
DO - 10.1109/TKDE.2016.2625251
M3 - 期刊論文
AN - SCOPUS:85010002184
SN - 1041-4347
VL - 29
SP - 433
EP - 445
JO - IEEE Transactions on Knowledge and Data Engineering
JF - IEEE Transactions on Knowledge and Data Engineering
IS - 2
M1 - 7736107
ER -