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Team formation in social networks based on collective intelligence – an evolutionary approach

机译:基于集体智慧的社交网络团队形成-一种进化方法

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The tremendous growth of the social web has inspired research communities to discover social intelligence, which encompasses a wide spectrum of knowledge characterized by human interaction, communication and collaboration, thereby exploiting collective intelligence (CI) to support the successful existence of social communities on the Web. In this work, we address the team formation problem for generalized tasks where a set of experts is to be discovered from an expertise social network that can collaborate effectively to accomplish a given task. The concept of CI that emerges from these collaborations attempts to maximize the potential of the team of experts, rather than only aggregating individual potentials. Because the team formation problem is NP-hard, a genetic algorithm-based approach is applied to optimize computational collective intelligence in web-based social networks. To capture the essence of CI, a novel quantitative measure Collective Intelligence Index (CII) is proposed that takes two factors into account –the “enhanced expertise score” and the “trustbased collaboration score”. This measure relates to the social interactions among experts, reflecting various affiliations that form a network of experts that help to drive creativity by deepening engagements through collaboration and the exchange of ideas and expertise, thereby enriching and enhancing the knowledge base of experts. The presented model also captures the teams’ dynamics by considering trust, which is essential to effective interactions between the experts. The computational experiments are performed on a synthetic dataset that bears close resemblance to realworld expertise networks, and the results clearly establish the effectiveness of our proposed model.
机译:社交网络的巨大发展激发了研究社区发现社交情报的能力,该情报涵盖了以人类互动,交流和协作为特征的广泛知识,从而利用集体智慧(CI)来支持社交社区在网上的成功存在。 。在这项工作中,我们解决了针对一般任务的团队形成问题,即从可以有效协作完成给定任务的专业知识社交网络中寻找专家。这些合作中出现的CI概念旨在最大程度地发挥专家团队的潜力,而不是仅汇总单个的潜力。由于团队形成问题很难解决,因此基于遗传算法的方法可用于优化基于Web的社交网络中的计算集体智能。为了捕获CI的本质,提出了一种新颖的定量度量集体智能指数(CII),该指数考虑了两个因素–“增强的专业知识评分”和“基于信任的协作评分”。这项措施与专家之间的社会互动有关,反映出各种隶属关系,这些隶属关系形成了专家网络,通过协作和思想与专门知识的交流加深了参与,从而丰富和增强了专家的知识基础,从而有助于推动创造力。提出的模型还通过考虑信任来捕获团队的动态,这对于专家之间的有效交互至关重要。计算实验是在与真实世界专业知识网络极为相似的综合数据集上进行的,结果清楚地证明了我们提出的模型的有效性。

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