Understanding Task-driven Information Flow in Collaborative Networks
Collaborative networks are a special type of social network formed by members who collectively achieve specific goals, such as fixing software bugs and resolving customers’ problems. In such networks, information flow among members is driven by the tasks assigned to the network, and by the expertise...
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2012
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sg-smu-ink.sis_research-25352012-07-17T13:28:26Z Understanding Task-driven Information Flow in Collaborative Networks MIAO, Gengxin TAO, Shu CHENG, Winnie Moulic, Randy Moser, Louise E. LO, David YAN, Xifeng Collaborative networks are a special type of social network formed by members who collectively achieve specific goals, such as fixing software bugs and resolving customers’ problems. In such networks, information flow among members is driven by the tasks assigned to the network, and by the expertise of its members to complete those tasks. In this work, we analyze real-life collaborative networks to understand their common characteristics and how information is routed in these networks. Our study shows that collaborative networks exhibit significantly different properties compared with other complex networks. Collaborative networks have truncated power-law node degree distributions and other organizational constraints. Furthermore, the number of steps along which information is routed follows a truncated power-law distribution. Based on these observations, we developed a network model that can generate synthetic collaborative networks subject to certain structure constraints. Moreover, we developed a routing model that emulates task-driven information routing conducted by human beings in a collaborative network. Together, these two models can be used to study the efficiency of information routing for different types of collaborative networks – a problem that is important in practice yet difficult to solve without the method proposed in this paper. 2012-04-01T07:00:00Z text https://ink.library.smu.edu.sg/sis_research/1536 info:doi/10.1145/2187836.2187951 http://www2012.wwwconference.org/proceedings/proceedings/p849.pdf Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Information Flow Collaborative Networks Social Routing Software Engineering |
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Information Flow Collaborative Networks Social Routing Software Engineering MIAO, Gengxin TAO, Shu CHENG, Winnie Moulic, Randy Moser, Louise E. LO, David YAN, Xifeng Understanding Task-driven Information Flow in Collaborative Networks |
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Collaborative networks are a special type of social network formed by members who collectively achieve specific goals, such as fixing software bugs and resolving customers’ problems. In such networks, information flow among members is driven by the tasks assigned to the network, and by the expertise of its members to complete those tasks. In this work, we analyze real-life collaborative networks to understand their common characteristics and how information is routed in these networks. Our study shows that collaborative networks exhibit significantly different properties compared with other complex networks. Collaborative networks have truncated power-law node degree distributions and other organizational constraints. Furthermore, the number of steps along which information is routed follows a truncated power-law distribution. Based on these observations, we developed a network model that can generate synthetic collaborative networks subject to certain structure constraints. Moreover, we developed a routing model that emulates task-driven information routing conducted by human beings in a collaborative network. Together, these two models can be used to study the efficiency of information routing for different types of collaborative networks – a problem that is important in practice yet difficult to solve without the method proposed in this paper. |
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MIAO, Gengxin TAO, Shu CHENG, Winnie Moulic, Randy Moser, Louise E. LO, David YAN, Xifeng |
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MIAO, Gengxin TAO, Shu CHENG, Winnie Moulic, Randy Moser, Louise E. LO, David YAN, Xifeng |
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MIAO, Gengxin |
title |
Understanding Task-driven Information Flow in Collaborative Networks |
title_short |
Understanding Task-driven Information Flow in Collaborative Networks |
title_full |
Understanding Task-driven Information Flow in Collaborative Networks |
title_fullStr |
Understanding Task-driven Information Flow in Collaborative Networks |
title_full_unstemmed |
Understanding Task-driven Information Flow in Collaborative Networks |
title_sort |
understanding task-driven information flow in collaborative networks |
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Institutional Knowledge at Singapore Management University |
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2012 |
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https://ink.library.smu.edu.sg/sis_research/1536 http://www2012.wwwconference.org/proceedings/proceedings/p849.pdf |
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1770571260720316416 |