How well-connected individuals help spread influences -- analyses based on preferential voter model
The spread of influence in a network is a fundamental issue in many complex systems. For instance, the word of-mouth effect in a social network is crucial to the emerging viral market. The process was previously analyzed with a voter model where an individual weighs the opinions of his acquaintances...
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sg-ntu-dr.10356-987962020-05-28T07:17:53Z How well-connected individuals help spread influences -- analyses based on preferential voter model Lee, Zhuo Qi Hsu, Wen-Jing Lin, Miao School of Computer Engineering International Conference on Advances in Social Networks Analysis and Mining (2012 : Istanbul, Turkey) DRNTU::Engineering::Computer science and engineering The spread of influence in a network is a fundamental issue in many complex systems. For instance, the word of-mouth effect in a social network is crucial to the emerging viral market. The process was previously analyzed with a voter model where an individual weighs the opinions of his acquaintances equally. However, one would expect that an individual's opinion is often more swayed by her/his better connected peers. As such, the influence of a node x on another node should be proportional to x's degree. This paper studies the spread of influence under the latter model - called Preferential Voter Model (PVM) for easier reference. We first present the exact form of the random walk stationary distribution for PVM, based on which, we show that the First Passage Time (FPT) of PVM follows an exponential decay. Furthermore, compared against the conventional (nonpreferential) voter model, we show that nodes with larger degrees exhibit faster decay rate and lower mean First Passage Time in PVM. These new results have applications to network-based complex systems. For instance, in the context of viral marketing in a social network, picking nodes of larger degrees as the starting nodes of a sales campaign not only maximizes the expected number of influenced nodes in the network, but also reduces the expected time to spread the influence. Thus, our result confirms analytically that well-connected individuals indeed exert faster and more effective influences in social networks under the preferential model. 2013-08-01T01:23:23Z 2019-12-06T19:59:45Z 2013-08-01T01:23:23Z 2019-12-06T19:59:45Z 2012 2012 Conference Paper Lee, Z. Q., Hsu, W. J.,& Lin, M. (2012). How Well-Connected Individuals Help Spread Influences -- Analyses Based on Preferential Voter Model. 2012 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining, 674-678. https://hdl.handle.net/10356/98796 http://hdl.handle.net/10220/12684 10.1109/ASONAM.2012.112 en |
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DRNTU::Engineering::Computer science and engineering Lee, Zhuo Qi Hsu, Wen-Jing Lin, Miao How well-connected individuals help spread influences -- analyses based on preferential voter model |
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The spread of influence in a network is a fundamental issue in many complex systems. For instance, the word of-mouth effect in a social network is crucial to the emerging viral market. The process was previously analyzed with a voter model where an individual weighs the opinions of his acquaintances equally. However, one would expect that an individual's opinion is often more swayed by her/his better connected peers. As such, the influence of a node x on another node should be proportional to x's degree. This paper studies the spread of influence under the latter model - called Preferential Voter Model (PVM) for easier reference. We first present the exact form of the random walk stationary distribution for PVM, based on which, we show that the First Passage Time (FPT) of PVM follows an exponential decay. Furthermore, compared against the conventional (nonpreferential) voter model, we show that nodes with larger degrees exhibit faster decay rate and lower mean First Passage Time in PVM. These new results have applications to network-based complex systems. For instance, in the context of viral marketing in a social network, picking nodes of larger degrees as the starting nodes of a sales campaign not only maximizes the expected number of influenced nodes in the network, but also reduces the expected time to spread the influence. Thus, our result confirms analytically that well-connected individuals indeed exert faster and more effective influences in social networks under the preferential model. |
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School of Computer Engineering |
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School of Computer Engineering Lee, Zhuo Qi Hsu, Wen-Jing Lin, Miao |
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Conference or Workshop Item |
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Lee, Zhuo Qi Hsu, Wen-Jing Lin, Miao |
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Lee, Zhuo Qi |
title |
How well-connected individuals help spread influences -- analyses based on preferential voter model |
title_short |
How well-connected individuals help spread influences -- analyses based on preferential voter model |
title_full |
How well-connected individuals help spread influences -- analyses based on preferential voter model |
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How well-connected individuals help spread influences -- analyses based on preferential voter model |
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How well-connected individuals help spread influences -- analyses based on preferential voter model |
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how well-connected individuals help spread influences -- analyses based on preferential voter model |
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2013 |
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https://hdl.handle.net/10356/98796 http://hdl.handle.net/10220/12684 |
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