集成数据管理:管理控制的新视角

IF 2.1 Q3 MANAGEMENT
A. Paolini
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引用次数: 1

摘要

本期特刊的目的是促进关于改进管理控制系统的公司数据管理新方法的国际辩论。这个主题包含了管理控制的跨学科关系,以及它与其他学科越来越多地应该具有的会计功能。这些关系渗透着定量和定性的方法。定量模型包括通过数据科学创建的模型,以及涉及数学、统计学和信息技术的模型。此外,结合定性和定量方法的企业数据管理模型在学科领域内进行了探索和讨论,这些学科领域由于其统一的历史,接近管理控制:例如法律、社会学、历史和其他人文领域。这个主题不仅包括业务数据管理,也包括知识管理;它不仅涉及内部(会计和非会计)数据,还涉及统计、经济和社会性质的外部数据,这些数据从不同学科的角度对会计数据和大数据的综合管理感兴趣。随着“物联网”等新技术的发展,以及区块链、社交网络和移动设备日益广泛的应用,组织正在以比过去快得多的速度生成大量不同格式的数据。从这个意义上说,大数据分析技术为改进战略和运营性质的决策过程提供了机会,因为它们能够从数据中提取知识,促进问题的解决,并有利于对业务现象的预测和规范方法。从组织的角度来看,分析大数据对会计和管理控制流程中典型参与者的专业概况的影响是很重要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrated data management: New perspectives for management control
The purpose of this special issue is to contribute to the international debate on novel approaches to corporate data management for the improvement of man-agement control systems. The theme embraces the interdisciplinary relationships that management controls and the accounting function that it, increasingly, should have with other disciplines. These relationships are permeated by both quantitative and qualitative approaches. Quantitative models include those created through data science and those that refer to mathematics, statistics, and information tech-nology. Moreover, corporate data management models combining qualitative and quantitative approaches are explored and discussed within disciplinary areas that, due to their consolidated history, are close to management control: e.g., legal, soci-ological, historical and other humanities areas. This theme embraces not only business data management but also knowledge management; it is not only about internal (accounting and non-accounting) data, but also about external data of a statistical, economic, and social nature, which are of interest from different disci-plinary perspectives concerning the integrated management of accounting data and Big Data. With the development of new technologies, such as the ‘Internet of Things', and the increasingly extensive applications of blockchain, social net-works, and mobile devices, organizations are generating huge volumes of data in different formats much faster than in the past. In this sense, big data analytics techniques present opportunities to improve decision-making processes of both a strategic and an operational nature, due to their ability to extract knowledge from data, to facilitate problem solving, and to favor predictive and prescriptive ap-proaches to business phenomena. From an organizational point of view, it is im-portant to analyze the impact of Big Data on the professional profiles of actors typically involved in accounting and management control processes.
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来源期刊
CiteScore
5.60
自引率
15.20%
发文量
17
期刊介绍: Journal of Management Control (JoMaC) is an international journal concerned with the formal, information-based routines and procedures managers use to maintain or alter patterns in organizational activities. Particular emphasis is placed on operational and strategic planning and control systems and the processes and techniques.  JoMaC was founded in 1990 as a German journal and has a strong reputation as a dedicated academic journal open to high-quality research on all aspects of management control.  The journal covers such topics as: the role of management control systems in the management of companies and non-profit organizations; the design and use of planning systems for production, marketing, logistics and other fields of use; the interaction between strategic and operational aspects of management control; the role of management accountants and other internal and external service providers, such as financial accountants, auditors and consultants; change and the sustainability of management control systems.   Journal of Management Control especially welcomes empirical and analytical papers reflecting both methodological rigor and practical relevance that make a significant contribution to literature. The journal is interested in literature reviews and meta-analyses showcasing and promoting current academic research. Additional materials relating to papers of interest to scholars (e.g. coding sheets, questionnaires, data, etc.) can be downloaded from our website in order to stimulate future research.Officially cited as: J Manag Control
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