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SVM-Based Techniques for Predicting Cross-Functional Team Performance: Using Team Trust as a Predictor

机译:基于SVM的跨职能团队绩效预测技术:使用团队信任度作为预测因子

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摘要

Due to the characteristics of cross-functional teams, trust is crucial for cross-functional teams to enhance performance. However, as a significant factor, trust had been neglected in previous team performance models. In this paper, we investigate whether trust can be used as a predictor of cross-functional team performance by proposing a prediction model. The inputs of the model are both team structural and contextual (SC) factors, and project process (PP) factors, which are two major sources that form team trust. The output of the model is different levels of team performance, which consists of internal performance and external performance. The support vector machine techniques are used to establish the model. Results show that prediction accuracy is high (84.95%) when using both SC and PP factors as inputs, while PP factors have better prediction accuracy than SC factors on team performance and internal performance. It is suggested that team trust can be used as a good predictor of cross-functional team performance. In practice, this paper presents a better understanding of the relationship between trust and performance in cross-functional teams, and thus, enhances practitioners’ managerial skills. It also gives reference for managers to dynamically control and predict team performance during project period.
机译:由于跨职能团队的特征,信任对于跨职能团队提升绩效至关重要。但是,作为一个重要因素,以前的团队绩效模型中忽略了信任。在本文中,我们通过提出预测模型来研究信任是否可以用作跨职能团队绩效的预测因子。该模型的输入既是团队结构和上下文(SC)要素,也是项目过程(PP)要素,它们是形成团队信任的两个主要来源。该模型的输出是团队绩效的不同级别,包括内部绩效和外部绩效。支持向量机技术用于建立模型。结果表明,使用SC和PP因子作为输入时,预测准确性很高(84.95%),而PP因子在团队绩效和内部绩效方面比SC因子具有更好的预测准确性。建议团队信任可以作为跨职能团队绩效的良好预测指标。在实践中,本文更好地理解了跨职能团队中信任与绩效之间的关系,从而提高了从业人员的管理技能。它还为管理人员在项目期间动态控制和预测团队绩效提供参考。

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