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An analysis of design process and performance in distributed data science teams

机译:分布式数据科学团队的设计过程和性能分析

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Purpose - Often, it is assumed that teams are better at solving problems than individuals working independently. However, recent work in engineering, design and psychology contradicts this assumption. This study aims to examine the behavior of teams engaged in data science competitions. Crowdsourced competitions have seen increased use for software development and data science, and platforms often encourage teamwork between participants. Design/methodology/approach - We specifically examine the teams participating in data science competitions hosted by Kaggle. We analyze the data provided by Kaggle to compare the effect of team size and interaction frequency on team performance. We also contextualize these results through a semantic analysis. Findings - This work demonstrates that groups of individuals working independently may outperform interacting teams on average, but that small, interacting teams are more likely to win competitions. The semantic analysis revealed differences in forum participation, verb usage and pronoun usage when comparing top- and bottom-performing teams. Research limitations/implications - These results reveal a perplexing tension that must be explored further: true teams may experience better performance with higher cohesion, but nominal teams may perform even better on average with essentially no cohesion. Limitations of this research include not factoring in team member experience level and reliance on extant data. Originality/value - These results are potentially of use to designers of crowdsourced data science competitions as well as managers and contributors to distributed software development projects.
机译:目的-通常,人们认为团队比独立工作的个人更擅长解决问题。但是,最近在工程,设计和心理学方面的工作与此假设相矛盾。这项研究旨在检查参与数据科学竞赛的团队的行为。众包竞赛在软件开发和数据科学中的使用越来越多,并且平台通常鼓励参与者之间的团队合作。设计/方法/方法-我们专门研究由Kaggle主持的数据科学竞赛的团队。我们分析了Kaggle提供的数据,以比较团队规模和互动频率对团队绩效的影响。我们还通过语义分析将这些结果关联起来。调查结果-这项工作表明,独立工作的个人群体的平均表现可能优于互动团队,但互动的小型团队更有可能赢得比赛。语义分析显示,在比较表现最佳和表现最差的团队时,论坛参与,动词使用和代词使用方面存在差异。研究的局限性/含义-这些结果揭示了一个令人困惑的张力,必须进一步探索:真正的团队可能会在更高的凝聚力下表现更好,但是名义上的团队平均而言甚至在没有凝聚力的情况下甚至表现更好。这项研究的局限性包括不考虑团队成员的经验水平和对现有数据的依赖。原创性/价值-这些结果可能对众包数据科学竞赛的设计人员以及分布式软件开发项目的管理人员和贡献者有用。

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