Self-organization in online collaborative work settings

Ioanna Lykourentzou, F. Vinella, F. Ahmed, Costas Papastathis, Konstantinos Papangelis, Vassilis-Javed Khan, J. Masthoff
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引用次数: 2

Abstract

As the volume and complexity of distributed online work increases, collaboration among people who have never worked together in the past is becoming increasingly necessary. Recent research has proposed algorithms to maximize the performance of online collaborations by grouping workers in a top-down fashion and according to a set of predefined decision criteria. This approach often means that workers have little say in the collaboration formation process. Depriving users of control over whom they will work with can stifle creativity and initiative-taking, increase psychological discomfort, and, overall, result in less-than-optimal collaboration results—especially when the task concerned is open-ended, creative, and complex. In this work, we propose an alternative model, called Self-Organizing Pairs (SOPs), which relies on the crowd of online workers themselves to organize into effective work dyads. Supported but not guided by an algorithm, SOPs are a new human-centered computational structure, which enables participants to control, correct, and guide the output of their collaboration as a collective. Experimental results, comparing SOPs to two benchmarks that do not allow user agency, and on an iterative task of fictional story writing, reveal that participants in the SOPs condition produce creative outcomes of higher quality, and report higher satisfaction with their collaboration. Finally, we find that similarly to machine learning-based self-organization, human SOPs exhibit emergent collective properties, including the presence of an objective function and the tendency to form more distinct clusters of compatible collaborators.
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在线协作工作环境中的自组织
随着分布式在线工作的数量和复杂性的增加,过去从未一起工作过的人们之间的协作变得越来越必要。最近的研究提出了一种算法,通过自上而下的方式和根据一组预定义的决策标准对工作人员进行分组,从而最大化在线协作的性能。这种方法通常意味着员工在协作形成过程中几乎没有发言权。剥夺用户对与谁一起工作的控制权会扼杀创造力和主动性,增加心理不适,总的来说,会导致不太理想的协作结果——特别是当所涉及的任务是开放式的、创造性的和复杂的。在这项工作中,我们提出了一个替代模型,称为自组织对(sop),它依赖于在线工作者群体自己组织成有效的工作组合。sop是一种新的以人为中心的计算结构,支持但不受算法的指导,它使参与者能够以集体的形式控制、纠正和指导其协作的输出。实验结果,将标准操作程序与不允许用户代理的两个基准进行比较,并在虚构故事写作的迭代任务中,揭示了标准操作程序条件下的参与者产生更高质量的创造性成果,并对他们的合作报告更高的满意度。最后,我们发现与基于机器学习的自组织类似,人类标准操作程序表现出紧急的集体属性,包括目标函数的存在和形成更多不同的兼容合作者集群的趋势。
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