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Modeling and Analysis of Data Dependencies in Business Process for Data-Intensive Services 被引量:1
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作者 yuze huang jiwei huang +1 位作者 budan wu junliang chen 《China Communications》 SCIE CSCD 2017年第10期151-163,共13页
With the growing popularity of data-intensive services on the Internet, the traditional process-centric model for business process meets challenges due to the lack of abilities to describe data semantics and dependenc... With the growing popularity of data-intensive services on the Internet, the traditional process-centric model for business process meets challenges due to the lack of abilities to describe data semantics and dependencies, resulting in the inflexibility of the design and implement for the processes. This paper proposes a novel data-aware business process model which is able to describe both explicit control flow and implicit data flow. Data model with dependencies which are formulated by Linear-time Temporal Logic(LTL) is presented, and their satisfiability is validated by an automaton-based model checking algorithm. Data dependencies are fully considered in modeling phase, which helps to improve the efficiency and reliability of programming during developing phase. Finally, a prototype system based on j BPM for data-aware workflow is designed using such model, and has been deployed to Beijing Kingfore heating management system to validate the flexibility, efficacy and convenience of our approach for massive coding and large-scale system management in reality. 展开更多
关键词 data-aware business process data-intensive services data dependency linear-time temporal logic(LTL) services computing
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Data Warehousing and SAP BW
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作者 Yuanjin Ren Derong Zeng 《Chinese Business Review》 2005年第3期75-78,共4页
Enterprises in today's fast-paced business environment are always puzzled with billions of bytes of data flowing into their computers. In this paper, the new technology to solve this problem called "data warehousing... Enterprises in today's fast-paced business environment are always puzzled with billions of bytes of data flowing into their computers. In this paper, the new technology to solve this problem called "data warehousing" is introduced. Benefits which can be achieved from this technology for enterprises are also discussed. In addition, this paper describes "SAP Business Information Warehouse" (SAP BW), especially its characteristics, which is the data warehousing solution from SAP. Finally, advantages and shortcomings of SAP BW are given. 展开更多
关键词 data warehouse data warehousing (DW) SAP business Information Warehouse (SAP BW)
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智慧广电数据治理建设升级方案研究
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作者 刘康 王祎 《广播与电视技术》 2022年第2期36-39,共4页
本文属于智慧广电建设升级方案研究中的一篇,前文已经介绍智慧广电体系主要由智慧内容生产、智慧内容传播、智慧服务供给、智慧监测监管、智慧生态、智慧引擎和智慧安全保障等七大板块构成。其中,智慧引擎板块包括数据治理和智慧算法两... 本文属于智慧广电建设升级方案研究中的一篇,前文已经介绍智慧广电体系主要由智慧内容生产、智慧内容传播、智慧服务供给、智慧监测监管、智慧生态、智慧引擎和智慧安全保障等七大板块构成。其中,智慧引擎板块包括数据治理和智慧算法两大部分,在研究过程中,项目组认为是否具有充分运用数据和算法的能力,实现相关流程的智慧化,是智慧广电和传统广电的显著区别。本文将对智慧引擎中数据治理部分,提出数据治理体系架构和目标,为实现智慧广电数据治理的目标从数据业务化和业务数据化两方面提出能力要求,最后给出六点提升能力的建设升级实施方案纲要建议。 展开更多
关键词 智慧广电 业务数据化 数据业务化 数据治理
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Classification of territory risk by generalized linear and generalized linear mixed models
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作者 Shengkun Xie Chong Gan 《Journal of Management Analytics》 EI 2023年第2期223-246,共24页
Territory risk analysis has played an important role in the decision-making of auto insurance rate regulation.Due to the optimality of insurance loss data groupings,clustering methods become the natural choice for suc... Territory risk analysis has played an important role in the decision-making of auto insurance rate regulation.Due to the optimality of insurance loss data groupings,clustering methods become the natural choice for such territory risk classification.In this work,spatially constrained clustering is first applied to insurance loss data to form rating territories.The generalized linear model(GLM)and generalized linear mixed model(GLMM)are then proposed to derive the risk relativities of obtained clusters.Each basic rating unit within the same cluster,namely Forward Sortation Area(FSA),takes the same risk relativity value as its cluster.The obtained risk relativities from GLM or GLMM are used to calculate the performance metrics,including RMSE,MAD,and Gini coefficients.The spatially constrained clustering and the risk relativity estimate help obtain a set of territory risk benchmarks used in rate filings to guide the rate regulation process. 展开更多
关键词 generalized linear mixed models territory risk analysis rate-making insurance rate regulation business data analytics
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