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Lecture 2-6 Complexity for Computing Influence Spread
Ding-Zhu Du
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Section 9.1-2
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Definition
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Examples
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Turing Reduction
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Oracle DTM Query tape Query state
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Oracle DTM Query tape answer state Remark:
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#P-Complete
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Theorem (Chen et al., 2010) Proof
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1 2 3
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1 1 2 3 2 3 1 1 2 3 2 3
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1 1 2 3 2 3 1 1 2 3 2 3
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Theorem (Chen et al., 2010) Proof
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Disadvantage Lack of efficiency.
Computing σm(S) is # P-hard under both IC and LT models. Selecting a new vertex u that provides the largest marginal gain σm(S+u) - σm(S), which can only be approximated by Monte-Carlo simulations (10,000 trials). Assume a weighted social graph as input. How to learn influence probabilities from history? ( Step 3 of the Greedy algorithm above)
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References
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Thanks, end.
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