Corpus ID: 9530982

Learning User-Specific Latent Influence and Susceptibility from Information Cascades

  title={Learning User-Specific Latent Influence and Susceptibility from Information Cascades},
  author={Yongqing Wang and H. Shen and Shenghua Liu and X. Cheng},
  • Yongqing Wang, H. Shen, +1 author X. Cheng
  • Published in AAAI 2015
  • Computer Science, Physics
  • Predicting cascade dynamics has important implications for understanding information propagation and launching viral marketing. Previous works mainly adopt a pair-wise manner, modeling the propagation probability between pairs of users using n^2 independent parameters for n users. Consequently, these models suffer from severe overfitting problem, specially for pairs of users without direct interactions, limiting their prediction accuracy. Here we propose to model the cascade dynamics by… CONTINUE READING
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