Lessons learned (LL) records constitute the software organization memory of successes and failures. LL are recorded within the organization repository for future reference to optimize planning, gain experience, and elevate market competitiveness. However, manually searching this repository is a daunting task, so it is often disregarded. This can lead to the repetition of previous mistakes or even missing potential opportunities. This, in turn, can negatively affect the profitability and competitiveness of organizations. We aim to present a novel solution that provides an automatic process to recall relevant LL and to push those LL to project managers. This will dramatically save the time and effort of manually searching the unstructured LL repositories and thus encourage the LL exploitation. We exploit existing project artifacts to build the LL search queries on-the-fly in order to bypass the tedious manual searching. An empirical case study is conducted to build the automatic LL recall solution and evaluate its effectiveness. The study employs three of the most popular information retrieval models to construct the solution. Furthermore, a real-world dataset of 212 LL records from 30 different software projects is used for validation. Top-k and MAP well-known accuracy metrics are used as well. Our case study results confirm the effectiveness of the automatic LL recall solution. Also, the results prove the success of using existing project artifacts to dynamically build the search query string. This is supported by a discerning accuracy of about 70% achieved in the case of top-k. The automatic LL recall solution is valid with high accuracy. It will eliminate the effort needed to manually search the LL repository. Therefore, this will positively encourage project managers to reuse the available LL knowledge, which will avoid old pitfalls and unleash hidden business opportunities.
翻译:学到的教训(LL)记录是软件组织对成败的记忆。LLL记录记录在组织储存库中,以便今后参考优化规划、获得经验和提高市场竞争力。然而,人工搜索这个储存库是一项艰巨的任务,因此往往被忽略。这可能导致重复以往的错误,甚至失去潜在的机会。这反过来又会对各组织的利润和竞争力产生不利影响。我们的目标是提出一个新的解决办法,提供一个自动过程,以提醒相关的LLL,并将LL记录推给项目管理员。这将极大地节省人工搜索非结构LL储存库的时间和努力,从而鼓励LLL利用。我们利用现有的项目艺术品在飞行上建立LL搜索查询查询,以绕过冗长的手动搜索。进行一项经验性案例研究,以建立自动LLR回顾解决方案,并评价其有效性。研究使用三种最受欢迎的信息检索模型来构建解决方案。此外,30个不同软件项目的212 LLR记录的真实世界数据集将被用于验证。顶端和MAP众所周知的准确度度度指标将被很好地用于使用。我们的案例研究结果将肯定自动检索的准确性。我们的案例研究的结果将肯定地用来确定自动检索的70LLLLLLLR的正确性。我们所实现的成绩。通过现有的LLRLRLO的正确性研究结果。通过现有的的正确性研究结果来证明的正确性研究结果。通过现有的的正确性研究将证明,从而证明现有的LLLLRLV的正确性研究将使得的正确性研究将使得获得现有的正确性研究的正确性能的正确性研究。