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Dynamic Reputation Rating Mechanism for Social Content Curation Services


Affiliations
1 School of Computer Engineering, Dongyang Mirae University, Seoul 152 – 714, Korea, Republic of
2 Department of Digital Media, Soongeui Women’s College, Seoul 100 – 751, Korea, Republic of
 

Recently various social curation mechanisms have been developed to organize and suggest digital contents around one or more particular themes or topics for online users on Social Network Services (SNS). Collaborative filtering method can be used to improve efficiency of automated social curation systems, and so we have already applied this method to enhance credibility of curators in previous research, but these approaches have problem in extracting user preferences for users who have not evaluated many contents. In this study, we use dynamic curator groups which are automatically formed to recommend and organize domain specific contents. The group members have dynamic reputation value depending on their evaluation performance. Social curations over online digital contents are very effective to find relevant information in a specific domain. In addition, we show simulation results to evaluate the reliability enhancement of the proposed dynamic curator model for automated curation services of social content.

Keywords

Collaborative Filtering, Dynamic Curators, Expertise, Reputation Rating, Social Content, Social Curation
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  • Dynamic Reputation Rating Mechanism for Social Content Curation Services

Abstract Views: 175  |  PDF Views: 0

Authors

Jinhyung Cho
School of Computer Engineering, Dongyang Mirae University, Seoul 152 – 714, Korea, Republic of
Hwansoo Kang
School of Computer Engineering, Dongyang Mirae University, Seoul 152 – 714, Korea, Republic of
Seawoo Kim
Department of Digital Media, Soongeui Women’s College, Seoul 100 – 751, Korea, Republic of

Abstract


Recently various social curation mechanisms have been developed to organize and suggest digital contents around one or more particular themes or topics for online users on Social Network Services (SNS). Collaborative filtering method can be used to improve efficiency of automated social curation systems, and so we have already applied this method to enhance credibility of curators in previous research, but these approaches have problem in extracting user preferences for users who have not evaluated many contents. In this study, we use dynamic curator groups which are automatically formed to recommend and organize domain specific contents. The group members have dynamic reputation value depending on their evaluation performance. Social curations over online digital contents are very effective to find relevant information in a specific domain. In addition, we show simulation results to evaluate the reliability enhancement of the proposed dynamic curator model for automated curation services of social content.

Keywords


Collaborative Filtering, Dynamic Curators, Expertise, Reputation Rating, Social Content, Social Curation



DOI: https://doi.org/10.17485/ijst%2F2015%2Fv8i18%2F114869