* Cantinho Satkeys

Refresh History
  • j.s.: dgtgtr a todos  49E09B4F
    18 de Janeiro de 2026, 16:02
  • FELISCUNHA: ghyt74   49E09B4F  e bom fim de semana  4tj97u<z
    17 de Janeiro de 2026, 11:18
  • JPratas: try65hytr Pessoal  2dgh8i k7y8j0 yu7gh8
    16 de Janeiro de 2026, 04:50
  • j.s.: try65hytr a todos  49E09B4F 49E09B4F
    15 de Janeiro de 2026, 19:29
  • FELISCUNHA: ghyt74  pessoal   49E09B4F
    15 de Janeiro de 2026, 11:51
  • j.s.: try65hytr a todos
    13 de Janeiro de 2026, 19:09
  • FELISCUNHA: ghyt74  pessoal  4tj97u<z
    13 de Janeiro de 2026, 10:48
  • cereal killa: 2dgh8i  1j6iv5
    12 de Janeiro de 2026, 20:15
  • cereal killa: try65hytr pessoal  2dgh8i  classic
    12 de Janeiro de 2026, 20:00
  • FELISCUNHA: dgtgtr   49E09B4F  e bom fim de semana  4tj97u<z
    10 de Janeiro de 2026, 12:21
  • asakzt: Managing database versions with Liquibase and Spring Boot
    10 de Janeiro de 2026, 11:35
  • tita: Musica Box Pop
    09 de Janeiro de 2026, 12:18
  • FELISCUNHA: ghyt74  pessoal   4tj97u<z
    08 de Janeiro de 2026, 11:01
  • j.s.: try65hytr a todos  49E09B4F
    07 de Janeiro de 2026, 20:37
  • TWT: Interaction Design Specialization
    07 de Janeiro de 2026, 07:38
  • FELISCUNHA: ghyt74  pessoal   4tj97u<z
    05 de Janeiro de 2026, 10:33
  • Alberto: The Alan Parsons Project
    05 de Janeiro de 2026, 05:29
  • Alberto: The Alan Parsons Project
    05 de Janeiro de 2026, 05:29
  • FELISCUNHA: dgtgtr   49E09B4F  e bom fim de semana  4tj97u<z
    03 de Janeiro de 2026, 12:26
  • JPratas: try65hytr Pessoal Continuação de
    02 de Janeiro de 2026, 19:42

Autor Tópico: Information and Influence Propagation in Social Networks  (Lida 177 vezes)

0 Membros e 1 Visitante estão a ver este tópico.

Offline oaxino

  • Moderador Global
  • ***
  • Mensagens: 49354
  • Karma: +0/-0
Information and Influence Propagation in Social Networks
« em: 12 de Dezembro de 2022, 14:03 »


English | PDF | 2013 | 179 Pages | ISBN : 1627051155 | 4 MB


Research on social networks has exploded over the last decade. To a large extent, this has been fueled by the spectacular growth of social media and online social networking sites, which continue growing at a very fast pace, as well as by the increasing availability of very large social network datasets for purposes of research. A rich body of this research has been devoted to the analysis of the propagation of information, influence, innovations, infections, practices and customs through networks. Can we build models to explain the way these propagations occur? How can we validate our models against any available real datasets consisting of a social network and propagation traces that occurred in the past? These are just some questions studied by researchers in this area. Information propagation models find applications in viral marketing, outbreak detection, finding key blog posts to read in order to catch important stories, finding leaders or trendsetters, information feed ranking, etc. A number of algorithmic problems arising in these applications have been abstracted and studied extensively by researchers under the garb of influence maximization.
This book starts with a detailed description of well-established diffusion models, including the independent cascade model and the linear threshold model, that have been successful at explaining propagation phenomena. We describe their properties as well as numerous extensions to them, introducing aspects such as competition, budget, and time-criticality, among many others. We delve deep into the key problem of influence maximization, which selects key individuals to activate in order to influence a large fraction of a network. Influence maximization in classic diffusion models including both the independent cascade and the linear threshold models is computationally intractable, more precisely #P-hard, and we describe several approximation algorithms and scalable heuristics that have been proposed in the literature. Finally, we also deal with key issues that need to be tackled in order to turn this research into practice, such as learning the strength with which individuals in a network influence each other, as well as the practical aspects of this research including the availability of datasets and software tools for facilitating research. We conclude with a discussion of various research problems that remain open, both from a technical perspective and from the viewpoint of transferring the results of research into industry strength applications.

DOWNLOAD

rapidgator.net:
Citar
https://rapidgator.net/file/c080a6b03bdd87b10e02cb6499f572af/geegt.Information.and.Influence.Propagation.in.Social.Networks.pdf.html

nitroflare.com:
Citar
https://nitroflare.com/view/2A059DAE2A377BB/geegt.Information.and.Influence.Propagation.in.Social.Networks.pdf