COMMUNITY DETECTION ON SOCIAL NETWORKING META MODEL BASED DATA ( CASE STUDY : E-COMMERCE (AMAZON) AND ONLINE REFERENCE MEDIA (DBLP) )

<p align="justify">The enormous availability of data due to the impact of social media presence, ecommerce, and online reference media is inevitable. Facebook, Amazon, and dblp are the real examples of the three domains. The data generated from the three domains are often being used...

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Main Author: Yulian Pratama - NIM. 23216019 , Nano
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/29543
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:29543
spelling id-itb.:295432018-03-15T11:30:28ZCOMMUNITY DETECTION ON SOCIAL NETWORKING META MODEL BASED DATA ( CASE STUDY : E-COMMERCE (AMAZON) AND ONLINE REFERENCE MEDIA (DBLP) ) Yulian Pratama - NIM. 23216019 , Nano Indonesia Theses INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/29543 <p align="justify">The enormous availability of data due to the impact of social media presence, ecommerce, and online reference media is inevitable. Facebook, Amazon, and dblp are the real examples of the three domains. The data generated from the three domains are often being used by researchers and interested parties to be able to mine valuable information through analysis on related data that represented in a graph. The process of analyzing related entities through graph theory or network is known as Social Network Analysis (SNA). Before conducting an SNA, generally require a model that can be used as a guide to perform data collection and analysis to be performed. <br /> <br /> Having a data model that matches directly with the domain model to be analyzed will help in better understanding the data, communicate effectively, and avoid unnecessary work. Until now, in the case of dblp and Amazon there has been no research focusing on graph-based data modeling that can be used to support the needs of SNA. <br /> <br /> Social networking meta-model is a model which is designed based on the abstraction of Facebook to be used as a guidance in helping to build graph-based data model on other social networking such as LinkedIn, Youtube, Instagram, and Twitter. The resulting data model can be used to support the related analysis needs in each of the social networking. Therefore, this research tries to answer whether a meta-model of social networking can be implemented to the others domains than social media especially in Amazon and dblp. <br /> <br /> Based on the analysis and design conducted, the social networking meta-model can be used to generate graph data model from Amazon and dblp. Several test are also conducted on both graph data models that have been designed. Community detection analysis is used as a case study on submodels of graphs that have been produced on Amazon and dblp to demonstrate that the designed graph model can be used to support the SNA process. At the end of this research, it is concluded that the meta-model of social networking can be implemented to Amazon and dblp. The resulting model can be implemented to support community detection analysis.<p align="justify"> <br /> 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 <p align="justify">The enormous availability of data due to the impact of social media presence, ecommerce, and online reference media is inevitable. Facebook, Amazon, and dblp are the real examples of the three domains. The data generated from the three domains are often being used by researchers and interested parties to be able to mine valuable information through analysis on related data that represented in a graph. The process of analyzing related entities through graph theory or network is known as Social Network Analysis (SNA). Before conducting an SNA, generally require a model that can be used as a guide to perform data collection and analysis to be performed. <br /> <br /> Having a data model that matches directly with the domain model to be analyzed will help in better understanding the data, communicate effectively, and avoid unnecessary work. Until now, in the case of dblp and Amazon there has been no research focusing on graph-based data modeling that can be used to support the needs of SNA. <br /> <br /> Social networking meta-model is a model which is designed based on the abstraction of Facebook to be used as a guidance in helping to build graph-based data model on other social networking such as LinkedIn, Youtube, Instagram, and Twitter. The resulting data model can be used to support the related analysis needs in each of the social networking. Therefore, this research tries to answer whether a meta-model of social networking can be implemented to the others domains than social media especially in Amazon and dblp. <br /> <br /> Based on the analysis and design conducted, the social networking meta-model can be used to generate graph data model from Amazon and dblp. Several test are also conducted on both graph data models that have been designed. Community detection analysis is used as a case study on submodels of graphs that have been produced on Amazon and dblp to demonstrate that the designed graph model can be used to support the SNA process. At the end of this research, it is concluded that the meta-model of social networking can be implemented to Amazon and dblp. The resulting model can be implemented to support community detection analysis.<p align="justify"> <br />
format Theses
author Yulian Pratama - NIM. 23216019 , Nano
spellingShingle Yulian Pratama - NIM. 23216019 , Nano
COMMUNITY DETECTION ON SOCIAL NETWORKING META MODEL BASED DATA ( CASE STUDY : E-COMMERCE (AMAZON) AND ONLINE REFERENCE MEDIA (DBLP) )
author_facet Yulian Pratama - NIM. 23216019 , Nano
author_sort Yulian Pratama - NIM. 23216019 , Nano
title COMMUNITY DETECTION ON SOCIAL NETWORKING META MODEL BASED DATA ( CASE STUDY : E-COMMERCE (AMAZON) AND ONLINE REFERENCE MEDIA (DBLP) )
title_short COMMUNITY DETECTION ON SOCIAL NETWORKING META MODEL BASED DATA ( CASE STUDY : E-COMMERCE (AMAZON) AND ONLINE REFERENCE MEDIA (DBLP) )
title_full COMMUNITY DETECTION ON SOCIAL NETWORKING META MODEL BASED DATA ( CASE STUDY : E-COMMERCE (AMAZON) AND ONLINE REFERENCE MEDIA (DBLP) )
title_fullStr COMMUNITY DETECTION ON SOCIAL NETWORKING META MODEL BASED DATA ( CASE STUDY : E-COMMERCE (AMAZON) AND ONLINE REFERENCE MEDIA (DBLP) )
title_full_unstemmed COMMUNITY DETECTION ON SOCIAL NETWORKING META MODEL BASED DATA ( CASE STUDY : E-COMMERCE (AMAZON) AND ONLINE REFERENCE MEDIA (DBLP) )
title_sort community detection on social networking meta model based data ( case study : e-commerce (amazon) and online reference media (dblp) )
url https://digilib.itb.ac.id/gdl/view/29543
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