数据驱动路线图化挑战为机遇

Ummaraporn Pora, N. Thawesaengskulthai, N. Gerdsri, Sipat Triukose
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引用次数: 4

摘要

许多组织都在努力实现路线图。虽然一些公司成功地实现了它,但许多公司无法有效地将路线图应用于其战略运营。保持最新的路线图以反映业务环境的变化被认为是该领域的主要挑战。本探索性研究的主要重点是扩展对路线图实施的理解,并通过说明来自私营和公共部门的四个案例研究来解决未来研究的机遇和挑战。对高层管理人员进行了半结构化访谈,以获得共同的关键成分。这项研究的结果强调并证实了在保持道路绘图过程中所涉及的主要挑战,正如以前的研究所代表的那样。案例研究的结果反映了整合大数据和将现有流程转变为数据驱动的路线图所面临的挑战和机遇。本文提出了一个系统的概念设计,以帮助保持路线图的活动-准确地反映当前的经济和商业状况,基于从各种信息源流不断获得的见解。对现有数据的全面分析有助于发现正在发生的变化,并指出经济、社会和技术趋势。有监督学习、无监督学习、时间序列和文本挖掘是从大量数据中提供有用的见解和实质性信息的建议技术。这种方法可以集成到决策支持系统中,基于算法,半自动评估路线图状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven Roadmapping Turning Challenges into Opportunities
A number of organizations are struggling with roadmap implementation. While some companies implement it successfully, many cannot effectively apply the roadmap to their strategic operations. Keeping an up-to-date roadmap to reflect changes in the business environment is considered a major challenge in the field. The main focus of this explorative study extends the understanding of roadmap implementation and addresses the opportunities and challenges for future research by illustrating four case studies from both the private and public sectors. Semi-structured interviews with top management were conducted to obtain common critical components. The findings from this study highlight and confirm the major challenges involved in keeping the roadmapping process alive, as represented in previous studies. The results of case studies reflect the challenges and opportunities with integrating big data and transforming existing processes into data-driven roadmapping. This paper proposes a conceptual design for a system to help keep the roadmap alive—accurately reflecting current economic and business conditions, based on insights constantly obtained from various streams of information sources. Comprehensive analyses of existing data could help to detect the ongoing changes and indicate economic, social, and technological tendencies. Supervised learning, unsupervised learning, time series, and text mining are suggested techniques for providing useful insight and substantial information from the multitude of data. This approach can be integrated into the decision support system, based on an algorithmic, semi-automatic evaluation of roadmap status.
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