MPLEMENTATION AND COMPARISON OF SOCIAL INFLUENCE ANALYSIS ALGORITHMS ON SOCIAL NETWORK

Social Network is a social structure made of individuals or organizations that are linked by one or more specific types of interdependency. One form of social network is Q&A network which represents relationships between individuals who asks questions and individuals who answers those questio...

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Main Author: Ilyas, Girvandi
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/39664
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:39664
spelling id-itb.:396642019-06-27T13:22:41ZMPLEMENTATION AND COMPARISON OF SOCIAL INFLUENCE ANALYSIS ALGORITHMS ON SOCIAL NETWORK Ilyas, Girvandi Indonesia Final Project Q&A network, Influence maximization, expert finding, algoritme LDAG, algoritme NGIC, influence spread. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/39664 Social Network is a social structure made of individuals or organizations that are linked by one or more specific types of interdependency. One form of social network is Q&A network which represents relationships between individuals who asks questions and individuals who answers those questions in a certain network. The influence of these individuals to each other can be examined by using a method called social influence analysis. Social influence analysis algorithms can be used to solve influence maximization, which is a problem of finding a small subset of nodes (seed nodes) in a social network that could maximize the spread of influence. In context of Q&A network, influence maximization can be viewed as finding an expert inside a social network. To date, greedy algorithm under the linear threshold (LT) and independent cascade (IC) model achieved the best result. However, greedy algorithm has a very long computation time. To lower it, several algorithms that have been developed under the LT and IC model were LDAG and NewGreedyIC (NGIC) algorithm, respectively. In this final project, these two algorithms were implemented to solve influence maximization problem on Q&A network. To compare the two algorithms, experiments were conducted on several Q&A network. It turns out, that NGIC algorithm achieved better influence spread and faster computation time. In order to develop both algorithms, it is suggested to try implementing these algorithms in parallel to shorten the computation time. Other than that, the algorithms may be combined with another network analysis techniques such as clustering and community detection. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Social Network is a social structure made of individuals or organizations that are linked by one or more specific types of interdependency. One form of social network is Q&A network which represents relationships between individuals who asks questions and individuals who answers those questions in a certain network. The influence of these individuals to each other can be examined by using a method called social influence analysis. Social influence analysis algorithms can be used to solve influence maximization, which is a problem of finding a small subset of nodes (seed nodes) in a social network that could maximize the spread of influence. In context of Q&A network, influence maximization can be viewed as finding an expert inside a social network. To date, greedy algorithm under the linear threshold (LT) and independent cascade (IC) model achieved the best result. However, greedy algorithm has a very long computation time. To lower it, several algorithms that have been developed under the LT and IC model were LDAG and NewGreedyIC (NGIC) algorithm, respectively. In this final project, these two algorithms were implemented to solve influence maximization problem on Q&A network. To compare the two algorithms, experiments were conducted on several Q&A network. It turns out, that NGIC algorithm achieved better influence spread and faster computation time. In order to develop both algorithms, it is suggested to try implementing these algorithms in parallel to shorten the computation time. Other than that, the algorithms may be combined with another network analysis techniques such as clustering and community detection.
format Final Project
author Ilyas, Girvandi
spellingShingle Ilyas, Girvandi
MPLEMENTATION AND COMPARISON OF SOCIAL INFLUENCE ANALYSIS ALGORITHMS ON SOCIAL NETWORK
author_facet Ilyas, Girvandi
author_sort Ilyas, Girvandi
title MPLEMENTATION AND COMPARISON OF SOCIAL INFLUENCE ANALYSIS ALGORITHMS ON SOCIAL NETWORK
title_short MPLEMENTATION AND COMPARISON OF SOCIAL INFLUENCE ANALYSIS ALGORITHMS ON SOCIAL NETWORK
title_full MPLEMENTATION AND COMPARISON OF SOCIAL INFLUENCE ANALYSIS ALGORITHMS ON SOCIAL NETWORK
title_fullStr MPLEMENTATION AND COMPARISON OF SOCIAL INFLUENCE ANALYSIS ALGORITHMS ON SOCIAL NETWORK
title_full_unstemmed MPLEMENTATION AND COMPARISON OF SOCIAL INFLUENCE ANALYSIS ALGORITHMS ON SOCIAL NETWORK
title_sort mplementation and comparison of social influence analysis algorithms on social network
url https://digilib.itb.ac.id/gdl/view/39664
_version_ 1822925359909175296