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A Machine Learning Approach to Combining Individual Strength and Team Features for Team Recommendation

机译:结合个人实力和团队特征进行团队推荐的机器学习方法

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In IT strategic outsourcing businesses, it is critical to have competent deal teams design competitive service solutions and swiftly respond to clients' requests for proposals. In this paper we present a general team recommendation framework for finding the best deal teams to pursue such engagement opportunities. Little previous work on team recommendations considers both individual and team-level features at the same time. Our proposed framework can take into account diverse individual and team features, and accommodate various cost or feature functions. We introduce a team quality metric based on a weighted linear combination of these features, the weights of which are learned using a machine learning approach by leveraging historical project outcomes. A combinatorial optimization algorithm is finally applied to search the possible solution space for the approximate best team. We report a preliminary evaluation of our framework by applying it to real-world data from strategic outsourcing businesses at a large IT service company. We also compare our approach with other existing work by using the public DBLP dataset for recommending teams in academic paper authoring.
机译:在IT战略外包业务中,至关重要的是要有称职的交易团队设计有竞争力的服务解决方案,并迅速响应客户的投标请求。在本文中,我们提出了一个通用的团队推荐框架,该框架可以找到最佳的交易团队来追求这种参与机会。以前很少有关于团队建议的工作会同时考虑个人和团队级别的功能。我们建议的框架可以考虑到不同的个人和团队功能,并可以容纳各种成本或功能。我们基于这些功能的加权线性组合引入了团队质量度量,使用机器学习方法通​​过利用历史项目的成果来学习其权重。最后,应用组合优化算法来搜索近似最佳团队的可能解空间。通过将其应用于大型IT服务公司的战略外包业务的真实数据,我们报告了对框架的初步评估。通过使用公共DBLP数据集来推荐学术论文撰写团队,我们还将我们的方法与其他现有工作进行了比较。

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