迈向基于智能机器学习的商业方法

Mohamed Nazih Omri, Wafa Mribah
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引用次数: 3

摘要

在整个产品生命周期中,随着干系人引发的数据不断增加,企业倾向于依赖项目管理工具进行指导。面向项目的商业智能方法将帮助团队更好地沟通,计划他们的下一步,对当前项目状态进行概述,并在提供预测之前采取具体行动。敏捷工作思维的传播使这些工具变得更加有用。它设置了对项目应该如何运行的基本理解,以便实现易于跟踪和使用。在本文中,我们提供了一个模型,可以从不同的软件开发工具和不同的数据源访问项目管理。我们的模型提供项目数据分析,以改善以下方面:(i)协作,包括团队沟通,团队仪表板。它还优化了文件共享、截止日期和状态更新。(ii)规划:允许使用软件描述的任务并使其可见。它还将包括跟踪任务时间,以显示某些成员可能面临的工作障碍,而不报告这些障碍。(iii)预测:根据行为数据预测未来的结果,以便采取具体措施。文件包括总结所有有关项目信息的报告,例如在任务上花费的时间和研究项目状况的图表。通过对我们的模型的各种数据收集和文献中我们研究的主要模型进行实验研究,并对我们得到的结果进行分析,清楚地显示了这些研究模型的局限性,并证实了我们的模型在精度、召回率和鲁棒性方面的性能和效率。
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Towards an Intelligent Machine Learning-based Business Approach
With the constant increase of data induced by stakeholders throughout a product life cycle, companies tend to rely on project management tools for guidance. Business intelligence approaches that are project-oriented will help the team communicate better, plan their next steps, have an overview of the current project state and take concrete actions prior to the provided forecasts. The spread of agile working mindsets are making these tools even more useful. It sets a basic understanding of how the project should be running so that the implementation is easy to follow on and easy to use. In this paper, we offer a model that makes project management accessible from different software development tools and different data sources. Our model provide project data analysis to improve aspects: (i) collaboration which includes team communication, team dashboard. It also optimizes document sharing, deadlines and status updates. (ii) planning: allows the tasks described by the software to be used and made visible. It will also involve tracking task time to display any barriers to work that some members might be facing without reporting them. (iii) forecasting to predict future results from behavioral data, which will allow concrete measures to be taken. And (iv) Documentation to involve reports that summarize all relevant project information, such as time spent on tasks and charts that study the status of the project. The experimental study carried out on the various data collections on our model and on the main models that we have studied in the literature, as well as the analysis of the results, which we obtained, clearly show the limits of these studied models and confirms the performance of our model as well as efficiency in terms of precision, recall and robustness.
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来源期刊
International Journal of Intelligent Systems and Applications in Engineering
International Journal of Intelligent Systems and Applications in Engineering Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
1.30
自引率
0.00%
发文量
18
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