Social Community Maintenance based on Similarity Clustering

碩士 === 國立中央大學 === 資訊工程研究所 === 100 === Social network analysis utilizes the social messages and behaviors between users to analyze the relationships and characteristics of communities. We try to support recommending search engine system by discovering the hidden information to help increasing the pre...

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Main Authors: Yun-yuan Fu, 傅勻垣
Other Authors: Meng-feng Tsai
Format: Others
Language:zh-TW
Published: 2012
Online Access:http://ndltd.ncl.edu.tw/handle/62341130704313772289
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spelling ndltd-TW-100NCU053921072015-10-13T21:22:39Z http://ndltd.ncl.edu.tw/handle/62341130704313772289 Social Community Maintenance based on Similarity Clustering 基於相似度群集之社群維護 Yun-yuan Fu 傅勻垣 碩士 國立中央大學 資訊工程研究所 100 Social network analysis utilizes the social messages and behaviors between users to analyze the relationships and characteristics of communities. We try to support recommending search engine system by discovering the hidden information to help increasing the precision when searching specific subject related contents. Nevertheless the result analyzed in the past may not always provide a proper or correct information, new documents posted in the future would definitely influence the appearance and structure of communities, users themselves may even have to be assigned to another different community. In our research, we construct a special hybrid community structure which is assembled by several subject categories. With the documents shared by the users at the social network, we cluster similar categories with K-Means Clustering Algorithm according to the similarity (in our research we refer it as Fuzzy RT relation) between categories. With this clustering technique, we assign the users to the cluster which contains the subject category that they’re interested in. Considering the influence brought by the new documents in the future, we also employ an update scheme that is also based on K-Means clustering to adjust the structure if the communities. Meng-feng Tsai 蔡孟峰 2012 學位論文 ; thesis 42 zh-TW
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language zh-TW
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description 碩士 === 國立中央大學 === 資訊工程研究所 === 100 === Social network analysis utilizes the social messages and behaviors between users to analyze the relationships and characteristics of communities. We try to support recommending search engine system by discovering the hidden information to help increasing the precision when searching specific subject related contents. Nevertheless the result analyzed in the past may not always provide a proper or correct information, new documents posted in the future would definitely influence the appearance and structure of communities, users themselves may even have to be assigned to another different community. In our research, we construct a special hybrid community structure which is assembled by several subject categories. With the documents shared by the users at the social network, we cluster similar categories with K-Means Clustering Algorithm according to the similarity (in our research we refer it as Fuzzy RT relation) between categories. With this clustering technique, we assign the users to the cluster which contains the subject category that they’re interested in. Considering the influence brought by the new documents in the future, we also employ an update scheme that is also based on K-Means clustering to adjust the structure if the communities.
author2 Meng-feng Tsai
author_facet Meng-feng Tsai
Yun-yuan Fu
傅勻垣
author Yun-yuan Fu
傅勻垣
spellingShingle Yun-yuan Fu
傅勻垣
Social Community Maintenance based on Similarity Clustering
author_sort Yun-yuan Fu
title Social Community Maintenance based on Similarity Clustering
title_short Social Community Maintenance based on Similarity Clustering
title_full Social Community Maintenance based on Similarity Clustering
title_fullStr Social Community Maintenance based on Similarity Clustering
title_full_unstemmed Social Community Maintenance based on Similarity Clustering
title_sort social community maintenance based on similarity clustering
publishDate 2012
url http://ndltd.ncl.edu.tw/handle/62341130704313772289
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