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Social structure optimization in team formation

机译:团队建设中的社会结构优化

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This paper presents a mathematical framework for treating the Team Formation Problem explicitly incorporating Social Structure (TFP-SS), the formulation of which relies on modern social network analysis theories and metrics. While recent research qualitatively establishes the dependence of team performance on team social structure, the presented framework introduces models that quantitatively exploit such dependence. Given a pool of individuals, the TFP-SS objective is to assign them to teams so as to achieve an optimal structure of individual attributes and social relations within the teams. The paper explores TFP-SS instances with measures based on such network structures as edges, full dyads, triplets, k-stars, etc., in undirected and directed networks. For an NP-Hard instance of TFP-SS, an integer program is presented, followed by a powerful Lin-Kernighan-TFP (LK-TFP) heuristic that performs variable-depth neighborhood search. The idea of such lambda-opt sequential search was first employed by Lin and Kernighan, and refined by Helsgaun, for successfully treating large Traveling Salesman Problem instances but has seen limited use in other applications. This paper describes LK-TFP as a tree search procedure and discusses the reasons of its effectiveness. Computational results for small, medium and large TFP-SS instances are reported using LK-TFP and compared with those of an exact algorithm (CPLEX) and a Standard Genetic Algorithm (SGA). Finally, the insights generated by the presented framework and directions for future research are discussed. (C) 2016 Elsevier Ltd. All rights reserved.
机译:本文提出了一种处理团队形成问题的数学框架,该框架明确地结合了社会结构(TFP-SS),其制定依赖于现代社会网络分析理论和指标。虽然最近的研究定性地建立了团队绩效对团队社会结构的依赖性,但本文提出的框架引入了定量利用这种依赖性的模型。在给定一群人的情况下,TFP-SS的目标是将他们分配给团队,以便在团队中实现个体属性和社会关系的最佳结构。本文探讨了在无向和有向网络中,基于边缘,完全对偶,三胞胎,k星形等网络结构的措施对TFP-SS实例的研究。对于TFP-SS的NP-Hard实例,将提供一个整数程序,然后是执行可变深度邻域搜索的强大的Lin-Kernighan-TFP(LK-TFP)启发式算法。这种lambda-opt顺序搜索的思想最初是由Lin和Kernighan所采用,并由Helsgaun进行了改进,以成功地处理大型Traveling Salesman Problem实例,但在其他应用程序中的使用却受到限制。本文将LK-TFP描述为树搜索过程,并讨论了其有效性的原因。使用LK-TFP报告了小型,中型和大型TFP-SS实例的计算结果,并将其与精确算法(CPLEX)和标准遗传算法(SGA)进行了比较。最后,讨论了所提出的框架所产生的见解以及未来研究的方向。 (C)2016 Elsevier Ltd.保留所有权利。

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