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The novel methodology presented here blends together qualitative and quantitative information as part of a wider analytics platform. The approach combines big data analytics with automatic scripting of scenarios that permits experts to assess risk indicators and business risks in focused tactical and strategic workshops. These workshops generate data that is used to construct Bayesian networks that map data from community risk drivers into statistical distributions that are feeding the platform risk management dashboard. A special feature of this model is that the dynamics of an open source community are tracked using social network metrics that capture the structure of unstructured chat data. The method is illustrated with a running example based on experience gained in implementing our approach in an academic smart environment setting including Mood bile, a Mobile Learning for Moodle (www.moodbile.org). 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引用次数: 15
摘要
自由开源软件(Free - Libre Open Source Software, FLOSS)已经成为软件开发中的一项战略性资产,而FLOSS背后的开源社区是该领域的关键参与者。对开源社区动态的分析是风险管理实践中的一项关键能力,该实践关注于在所有类型的组织中集成FLOSS。我们正在进行研究,开发用于管理在各种应用程序领域中采用和部署FLOSS的风险的方法。本文是关于系统地捕获、过滤、分析、推理和建立理论的能力,结合对潜在组织业务风险的专家意见的结构化引出。本文提出的新方法将定性和定量信息融合在一起,作为更广泛的分析平台的一部分。该方法将大数据分析与场景的自动脚本相结合,允许专家在集中的战术和战略研讨会上评估风险指标和业务风险。这些研讨会生成的数据用于构建贝叶斯网络,该网络将来自社区风险驱动因素的数据映射到提供给平台风险管理仪表板的统计分布中。该模型的一个特殊特性是,使用捕捉非结构化聊天数据结构的社会网络指标来跟踪开源社区的动态。该方法通过一个运行的示例来说明,该示例基于在学术智能环境设置中实现我们的方法所获得的经验,包括Mood胆汁,Moodle移动学习(www.moodbile.org)。这个例子是智能环境领域一系列计划经验中的第一个,其最终目标是推导出该领域的完整风险模型。
Adoption of Free Libre Open Source Software (FLOSS): A Risk Management Perspective
Free Libre Open Source Software (FLOSS) has become a strategic asset in software development, and open source communities behind FLOSS are a key player in the field. The analysis of open source community dynamics is a key capability in risk management practices focused on the integration of FLOSS in all types of organizations. We are conducting research in developing methodologies for managing risks of FLOSS adoption and deployment in various application domains. This paper is about the ability to systematically capture, filter, analyze, reason about, and build theories upon, the behavior of an open source community in combination with the structured elicitation of expert opinions on potential organizational business risk. The novel methodology presented here blends together qualitative and quantitative information as part of a wider analytics platform. The approach combines big data analytics with automatic scripting of scenarios that permits experts to assess risk indicators and business risks in focused tactical and strategic workshops. These workshops generate data that is used to construct Bayesian networks that map data from community risk drivers into statistical distributions that are feeding the platform risk management dashboard. A special feature of this model is that the dynamics of an open source community are tracked using social network metrics that capture the structure of unstructured chat data. The method is illustrated with a running example based on experience gained in implementing our approach in an academic smart environment setting including Mood bile, a Mobile Learning for Moodle (www.moodbile.org). This example is the first in a series of planned experiences in the domain of smart environments with the ultimate goal of deriving a complete risk model in that field.