LSDH: A Hashing Approach for Large-Scale Link Prediction in Microblogs
Liu, Dawei (Chinese Academy of Sciences) | Wang, Yuanzhuo (Chinese Academy of Sciences) | Jia, Yantao (Chinese Academy of Sciences) | Li, Jingyuan (Chinese Academy of Sciences) | Yu, Zhihua (Chinese Academy of Sciences)
One challenge of link prediction in online social networks is the large scale of many such networks. The measures used by existing work lack a computational consideration in the large scale setting. We propose the notion of social distance in a multi-dimensional form to measure the closeness among a group of people in Microblogs. We proposed a fast hashing approach called Locality-sensitive Social Distance Hashing (LSDH), which works in an unsupervised setup and performs approximate near neighbor search without high-dimensional distance computation. Experiments were applied over a Twitter dataset and the preliminary results testified the effectiveness of LSDH in predicting the likelihood of future associations between people.
Jul-14-2014
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- Communications > Social Media (0.61)
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