Suwichak Fungprasertkul, Rami Bahsoon, Rick Kazman
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引用次数: 0
摘要
技术债务管理(TDM)可能存在不可预测性、沟通障碍和无法获取相关信息等问题,这 些问题阻碍了决策的有效性。这些问题可能源于决策者之间的分歧,这种分歧的根源在于不同决策者之间的决策后果不公平。一种缓解途径是 "游戏中的皮肤"(Skin in the Game)思维,它能在不确定情况下的集体决策过程中实现透明、公平和责任分担。本文阐述了在技术债务(TD)识别、衡量、优先排序和监控中需要 "游戏中的皮肤"(Skin in the Game)思维的特征。我们指出了技术债务监控中的关键问题,其根源在于不同决策者之间的信息不对称和回报不对称。为缓解上述问题,我们提出了一种系统的 TD 监控方法。该方法利用了复制器动力学和行为学习。该方法通过自动 TD 监测决策为决策者提供支持,并在需要人工干预时通知决策者。为了评估我们方法的应用情况,我们利用了两个公开的工业项目,这些项目具有数量不小的 TD 和时间戳。对我们的方法和基准的决策样本进行了 Mann-Whitney U 假设检验。统计结果表明,我们的方法可以产生具有成本效益且符合实际情况的 TD 监控决策。
Technical Debt Monitoring Decision Making with Skin in the Game
Technical Debt Management (TDM) can suffer from unpredictability, communication gaps and the inaccessibility of relevant information, which hamper the effectiveness of its decision making. These issues can stem from division among decision-makers which takes root in unfair consequences of decisions among different decision-makers. One mitigation route is Skin in the Game thinking, which enforces transparency, fairness and shared responsibility during collective decision-making under uncertainty. This paper illustrates characteristics which require Skin in the Game thinking in Technical Debt (TD) identification, measurement, prioritisation and monitoring. We point out crucial problems in TD monitoring rooted in asymmetric information and asymmetric payoff between different factions of decision-makers. A systematic TD monitoring method is presented to mitigate the said problems. The method leverages Replicator Dynamics and Behavioural Learning. The method supports decision-makers with automated TD monitoring decisions; it informs decision-makers when human interventions are required. Two publicly available industrial projects with a non-trivial number of TD and timestamps are utilised to evaluate the application of our method. Mann-Whitney U hypothesis tests are conducted on samples of decisions from our method and the baseline. The statistical evidence indicates that our method can produce cost-effective and contextual TD monitoring decisions.
期刊介绍:
Designing and building a large, complex software system is a tremendous challenge. ACM Transactions on Software Engineering and Methodology (TOSEM) publishes papers on all aspects of that challenge: specification, design, development and maintenance. It covers tools and methodologies, languages, data structures, and algorithms. TOSEM also reports on successful efforts, noting practical lessons that can be scaled and transferred to other projects, and often looks at applications of innovative technologies. The tone is scholarly but readable; the content is worthy of study; the presentation is effective.