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Ontology-driven approach for KPI meta-modelling, selection and reasoning

机译:kPI元建模,选择和推理的本体驱动方法

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摘要

A key challenge in current Business Analytics (BA) is the selection of suitable indicators for business objectives. This requires the exploration of business data through data-driven approaches, while modelling business strategies together with domain experts in order to represent domain knowledge. In particular, Key Performance Indicators (KPIs) allow human experts to properly model ambiguous enterprise goals by means of quantitative variables with numeric ranges and clear thresholds. Besides business-related domains, the usefulness of KPIs has been shown in multiple domains, such as: Education, Healthcare and Agriculture. However, finding accurate KPIs for a given strategic goal still remains a complex task, specially due to the discrepancy between domain assumptions and data facts. In this regard, the semantic web emerges as a powerful technology for knowledge representation and data modeling through explicit representation formats and standards such as RDF(S) and OWL. By using this technology, the semantic annotation of indicators of business objectives would enrich the strategic model obtained. With this motivation, an ontology-driven approach is proposed to formally conceptualize essential elements of indicators, covering: performance, results, measures, goals and relationships of a given business strategy. In this way, all the data involved in the selection and analysis of KPIs are then integrated and stored in common repositories, hence enabling sophisticated querying and reasoning for semantic validation. The proposed semantic model is evaluated on a real-world case study on water management. A series of data analysis and reasoning tasks are conducted to show how the ontological model is able to detect semantic conflicts in actual correlations of selected indicators.
机译:当前业务分析(BA)中的一个关键挑战是选择合适的业务目标指标。这需要通过数据驱动方法探索业务数据,同时将业务策略与域专家建模,以表示领域知识。特别是,关键绩效指标(KPI)允许人类专家通过具有数字范围和清晰阈值的定量变量来适当地模拟模拟含糊的企业目标。除了与业务相关的领域,KPI的有用性已经显示在多个域中,例如:教育,医疗保健和农业。然而,为给定的战略目标寻找准确的KPI仍然是一个复杂的任务,特别是由于域假设和数据事实之间的差异。在这方面,语义Web是通过显式表示格式和标准的知识表示和数据建模的强大技术,例如RDF(S)和猫头鹰。通过使用这项技术,业务目标指标的语义注释将丰富获得的战略模型。通过这种动机,提出了一种本体驱动的方法,以正式概念指标的基本要素,涵盖:特定业务战略的性能,结果,措施,目标和关系。通过这种方式,然后将涉及KPI的选择和分析中涉及的所有数据都集成并存储在常见的存储库中,因此可以实现复杂的查询和原理进行语义验证。拟议的语义模型是对水管理的真实案例研究评估。进行了一系列数据分析和推理任务,以展示本体主义模型如何在所选指标实际相关性中检测语义冲突。

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