计算机科学 ›› 2016, Vol. 43 ›› Issue (1): 8-13.doi: 10.11896/j.issn.1002-137X.2016.01.002

• 目次 • 上一篇    下一篇

大数据环境下的电子数据审计:机遇、挑战与方法

陈伟,SMIELIAUSKAS Wally   

  1. 南京审计大学管理科学与工程学院 南京211815,多伦多大学罗特曼管理学院 多伦多M5S 3E6
  • 出版日期:2018-12-01 发布日期:2018-12-01
  • 基金资助:
    本文受国家自然科学基金(71572080),教育部人文社会科学研究规划基金(14YJAZH006),江苏省社会科学基金(13GLC016),江苏省“六大人才高峰”高层次人才项目(2014-XXRJ-015)资助

Opportunities,Challenges and Methods of Electric Data Auditing in Big Data Environments

CHEN Wei and SMIELIAUSKAS Wally   

  • Online:2018-12-01 Published:2018-12-01

摘要: 电子数据审计的研究与应用是近年来审计领域的热点问题。大数据时代的到来给电子数据审计带来了机遇与挑战。首先阐述了研究大数据环境下电子数据审计的重要性;然后分析了电子数据审计的内涵及原理;在此基础上,重点研究了大数据环境下电子数据审计面临的机遇与挑战,并结合大数据的特点以及目前已有的大数据分析技术与工具,探讨了大数据环境下开展电子数据审计的方法;最后给出了大数据环境下开展电子数据审计的相关建议。研究结果为今后大数据环境下开展电子数据审计提供了理论基础。

关键词: 电子数据审计,数据密集型科学,大数据,云计算,计算机辅助审计技术

Abstract: The research and application of electronic data auditing are a hot topic in audit area.The arrival of the era of big data is creating opportunities and challenges for electric data auditing practice and research.However,there are few studies on this issue.In this paper,the importance of researching electric data auditing in big data environments was ana-lyzed firstly.Then,the concept and principle of electric data auditing were analyzed.Then,opportunities and challenges of electric data auditing in big data environments were studied.With the characteristics of big data existing and big data analysis technologies and tools,methods of electric data auditing in big data environments were discussed.Finally,advices for implementing electric data auditing in big data environments were given.Research results in this paper can provide theory for implementing electric data auditing in big data environments.

Key words: Electric data auditing,Data-intensive science,Big data,Cloud computing,Computer assisted audit technologies

[1] 国家863计划审计署课题组.计算机审计数据采集与处理技术研究报告[R].北京:清华大学出版社,2006
[2] Chen W,Liu S F,Smieliauskas W,et al.Influence factors analysis of online auditing performance assessment:a combined use between AHP and GIA[J].Kybernetes:The International Journal of Cybernetics,Systems and Management Sciences,2012,41(5/6):587-598
[3] 陈伟.联网审计技术方法与绩效评价[M].北京:清华大学出版社,2012
[4] Lambrechts A J,Lourens J E,Millar P B,et al.Global technology audit guide (GTAG):Data analysis technologies[M].The Institute of Internal Auditors,2011
[5] State Auditing Administration.http://www.audit.gov.cn.24(in Chinese)国家审计署.http://www.audit.gov.cn
[6] Chen Wei.A Performance Assessment Method of Online Auditing Based on APP[J].Journal of Audit & Economics,2011,6(5):47-52 陈伟.一种基于AHP的联网审计绩效评价方法[J].审计与经济研究,2011,26(5):47-52
[7] IIA.Global technology audit guide (GTAG):Information tech-nology risk and controls(2nd Edition)[M].The Institute of Internal Auditors,2012
[8] Chou C L,Du T,Lai V S.Continuous auditing with a multi-agent system[J].Decision Support Systems,2007,42(4):2274-2292
[9] CICA/AICPA.Continuous auditing research report[R].TheCanadian Institute of Chartered Accountants,Toronto,Ontario,1999
[10] Alali A F,Pan F.Use of audit software:review and survey[J].Internal Auditing,2011,26(5):29-36
[11] Marco A,Giuseppe D,Rob M,et al.What’s next for internal auditing? [R].The Institute of Internal Auditors,2011
[12] Vasarhelyi M,Alles M,Kuenkaikaew S,et al.The acceptance and adoption of continuous auditing by internal auditors:A micro analysis [J].International Journal of Accounting Information Systems,2012,13(3):267-281
[13] Alles M G,Kogan A,Vasarhelyi M A.Collaborative design research:Lessons from continuous auditing[J].International Journal of Accounting Information Systems,2013,14(2):104-112
[14] Gonzalez G C,Sharma P N,Galletta D F.The antecedents of the use of continuous auditing in the internal auditing context [J].International Journal of Accounting Information Systems,2012,13(3):248-262
[15] Rutgers Accounting Web.2014.http://raw.rutgers.edu
[16] Overpeck J T,Meehl G A,Beny S,et al.Dealing with data [J].Science,2011,331(6018):639-806
[17] Gartner E S.10 Critical Tech Trends for the Next Five Years [EB/OL].http://www.forbes.com/sites/ericsavitz/ 2012/10/22/gartner-10-critical-tech-trends-for-the-next-five-years
[18] Gong Xue-qing,Jin Che-qing,Wang Xiao-ling,et al.Data-Intensive Science and Engineering:Requirements and Challenges[J].Chinese Journal of Computers,2012,5(8):1563-1578(in Chinese)宫学庆,金澈清,王晓玲,等.数据密集型科学与工程:需求和挑战[J].计算机学报,2012,35(8):1563-1578
[19] Chen C L P,Zhang C Y.Data-intensive applications,challenges,techniques and technologies A survey on Big Data[J].Information Sciences,2014,275:314-347
[20] Manyika J,Chui M,Brown B,et al.Big data:The Next Frontierfor Innovation,Competition,and Productivity[R].McKinsey Global Institute,2011
[21] Kelly J.Apache drill brings sql-like,ad hoc query capabilities to big data[EB/OL].http://wikibon.org/ wiki/v/Apache-Drill-Brings-SQL-Like-Ad-Hoc-Query- Capabilities-to-Big-Data
[22] Melnik S,Gubarev A,Long J J,et al.Dremel:interactive analysis of webscale datasets[J].Proceeding of the 36th International Conference on Very Large Data Bases,2010,3(1):330-339
[23] Gulisano V,Ricardo J P,Marta P M,et al.Streamcloud:an elastic and scalable data streaming system[J].IEEE Transactions on Parallel and Distributed Systems,2012,23(12):2351-2365
[24] Sqlstream.http://www.sqlstream.com/products/server
[25] Bell G,Hey T,Szalay A.Beyond the data deluge[J].Science,2009,323 (5919):1297-1298
[26] Hey T,Tansley S,Tolle K.The fourth paradigm:data-intensive scientific discovery[R].Microsoft Research,2009
[27] James P A,Bruce H,Gabrielle L,et al.Data-intensive science in the us doe:case studies and future challenges[J].Computing in Science and Engineering,2011,13(6):14-24
[28] Lynch C.Big data:how do your data grow? [J].Nature,2008,455(7209):28-29
[29] Divyakant A,Philip B,Elisa B,et al.Challenges and Opportunities with Big Data[R].Cyber Center Technical Reports,Purdue University,2011
[30] Deam J,Ghemawat S.Mapreduce:simplified data processing on large clusters[J].Communications of the ACM,2008,51(1):107-113
[31] Tabealu.http://www.tableausoftware.com,2014
[32] CCF大数据专家委员会.中国大数据技术与产业发展白皮书[R].http://www.ccf.org.cn,2013
[33] Chen Wei,Zhang Jin-cheng,Qiu R.A Survey on Computer-assisted Audit Techniques(CAATs)[J].Computer Science,2007,4(10):290-294(in Chinese)陈伟,张金城,Qiu R.计算机辅助审计技术(CAATs)研究综述[J].计算机科学,2007,34(10):290-294
[34] Simeon S,Michael H B,Arturas M.Visual Data Mining:Theory,Techniques and Tools for Visual Analytics[M].Springer,2008
[35] Geng B,Li Y,Tao D C,et al.Parallel lasso for large-scale video concept detection[J].IEEE Transactions on Multimedia,2012,14(1):55-65
[36] Heer J,Mackinlay J D,Stolte C,et al.Graphical histories for visualization:supporting analysis,communication,and evaluation[J].IEEE Transactions on Visualization and Computer Graphi-cs,2008,14(6):1189-1196
[37] Thompson D,Levine J A,Bennett J C,et al.Analysis of large-scale scalar data using hixels[C]∥IEEE Symposium on Large Data Analysis and Visualization (LDAV).2011:23-30
[38] Chen Wei,Smieliauskas W.Study on Online Auditing Methods in Cloud Computing Environments[J].Audit Research,2012(3):37-44(in Chinese)陈伟,Smieliauskas W.云计算环境下的联网审计实现方法探析[J].审计研究,2012(3):37-44
[39] Armbrust M,Fox A,Griffith R,et al.A view of cloud computing[J].Communications of the ACM,2010,53(4):50-58
[40] Sakr S,Liu A,Batista D M,et al.A survey of large scale datamanagement approaches in cloud environments[J].IEEE Communications Surveys & Tutorials,2011,13(3):311-336
[41] Lee G.Using in-memory analytics to quickly crunch big data[J].IEEE Computer Society,2012,45(10):16-18
[42] Nathan M,James W.Big data:principles and best practices of scalable realtime data systems[M].Manning,2012

No related articles found!
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
No Suggested Reading articles found!