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Extra Form
Lecturer 정교민
Dept. KAIST
date Nov 01, 2012
Diffusion of information, rumors or epidemics via various social networks has been extensively studied for decades. In particular, Kempe, Kleinberg, and Tardos (KDD '03) proposed the general threshold model, a generalization of many mathematical models for diffusion on networks which is based on utility maximization of individuals in game theoretic consideration. Despite its importance, the analysis under the threshold model, however, has concentrated on special cases such as the submodular influence (by Mossel-Roch (STOC '07)), homogeneous thresholds (by Whitney(Phys. Rev. E. '10)), and locally tree-like networks (by Watts(PNAS '02)). We first consider the general threshold model with arbitrary threshold distribution on arbitrary networks. We prove that only if (essentially) all nodes have degrees \omega(log n), the final cascade size is highly concentrated around its mean with high probability for a large class of general threshold models including the linear threshold model, and the Katz-Shapiro pricing model. We also prove that in those cases, somewhat surprisingly, the expectation of the cascade size is asymptotically independent of the network structure if initial adopters are chosen by public advertisements, and provide a formula to compute the cascade size. Our formula allows us to compute when a phase transition for a large spreading (a tipping point) happens. We then provide a novel algorithm for influence maximization that integrates a new message passing based influence ranking and influence estimation methods in the independent cascade model.
Atachment
Attachment '1'
List of Articles
Category Subject Dept. Lecturer
BK21 FOUR Rookies Pitch 2023-1 Probabilistic Potential Theroy (강재훈) file BK21 강재훈
BK21 FOUR Rookies Pitch 2023-1 Number Theory (김민규) file 성균관대학교 김민규
BK21 FOUR Rookies Pitch 2023-1 Number Theory (김대준) file KIAS 김대준
BK21 FOUR Rookies Pitch 2023-1 Geometric Toplology (정홍택) file BK21 정홍택
BK21 FOUR Rookies Pitch 2023-1 Dynamics and Number Theory (이슬비) file IBS-CGP 이슬비
BK21 FOUR Rookies Pitch 2023-1 Algebraic Combinatorics (오재성) file KIAS 오재성
BK21 FOUR Rookies Pitch 2023-1 Algebraic Combinatorics (김동현) file BK21 김동현
BK21 FOUR Rookies Pitch 2022-2 Rookies Pitch: Representation Theory(허태혁) file QSMS 허태혁
BK21 FOUR Rookies Pitch 2022-2 Rookies Pitch: Representation Theory(이신명) file 수리과학부 이신명
BK21 FOUR Rookies Pitch 2022-2 Rookies Pitch: Probability Theory (이중경) file 수리과학부 이중경
BK21 FOUR Rookies Pitch 2022-2 Rookies Pitch: Probability Theory (변성수) file KIAS 변성수
BK21 FOUR Rookies Pitch 2022-2 Rookies Pitch: Harmonic Analysis (함세헌) file 수학연구소 함세헌
BK21 FOUR Rookies Pitch 2022-2 Rookies Pitch: Harmonic Analysis (오세욱) file 고등과학원 오세욱
BK21 FOUR Rookies Pitch 2022-2 Rookies Pitch: Geometric Topology (김승원) file 성균관대학교 김승원
BK21 FOUR Rookies Pitch 2022-2 Rookies Pitch: Algebraic Geometry (박현준) file KIAS 박현준
BK21 FOUR Rookies Pitch 2022-1 Rookies Pitch:Functional Analysis (정민구) file 고등과학원 정민구
BK21 FOUR Rookies Pitch 2022-1 Rookies Pitch: Symplectic/Algebraic Geometry (좌동욱) file 고등과학원 좌동욱
BK21 FOUR Rookies Pitch 2022-1 Rookies Pitch: Symplectic Topology (문지연) file 수학연구소 문지연
BK21 FOUR Rookies Pitch 2022-1 Rookies Pitch: Probability, PDE (Ramil Mouad) file 수학연구소 Ramil Mouad
BK21 FOUR Rookies Pitch 2022-1 Rookies Pitch: PDE, Emergent Dynamics (안현진) file 수학연구소 안현진
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