Expression #1 of SELECT list is not in GROUP BY clause and contains nonaggregated column 'n.id' which is not functionally dependent on columns in GROUP BY clause; this is incompatible with sql_mode=only_full_group_by
Expression #1 of SELECT list is not in GROUP BY clause and contains nonaggregated column 'n.id' which is not functionally dependent on columns in GROUP BY clause; this is incompatible with sql_mode=only_full_group_by PROSPECTS OF THE APPLICATION OF BIG DATA IN ELECTRONIC GOVERNMENT - İTP Jurnalı
AZERBAIJAN NATIONAL ACADEMY OF SCIENCES
PROSPECTS OF THE APPLICATION OF BIG DATA IN ELECTRONIC GOVERNMENT
Rena T. Gasımova

The use of Big Data in the era of digital technologies may help to analyze some important data for solution of state and municipal problems and to increase the accuracy of future forecasts. The article explores the characteristics, advantages and opportunities of Big Data for the improvement of e-government services through more efficient use of communication and information technology. At the same time, it provides a number of recommendations on the use of Big Data in e-government (pp.83-89). 

Keywords:information society, information technology, Big Data, Big Data analytics, e-government, open data, open government, public administration.
DOI : 10.25045/jpis.v08.i2.10
References
  • Alguliyev R.M., Yusifov F.F. Some actual scientific-theoretical problems and prospects for the formation of an electronic state // Problems of Information Society, 2014, No2, pp. 3-13.
  • European court of auditors, Special Report No 9, http://www.eca.europa.eu
  • European Court of Human Rights, http://www.echr.coe.int/echr
  • Alhomod S.M. and Shafi M.M. Best Practices in E government: A review of Some Innovative Models Proposed in Different Countries // International Journal of Electrical & Computer Sciences, 2012, Vol. 12, No 01, pp. 1–6.
  • Clifford L. Big data: How do your data grow? // Nature, 2008, vol.455, pp. 28–29.
  • Alguliyev R.M., Hacirahimova M.Sh. Big data phenomenon: problems and opportunities // Problems of Information Technology, 2014, No2, pp. 3–16.
  • Imamverdiyev Y.N. Big perspectives and problems of Big Data technologies // Problems of Information society, 2016, No1, pp. 23-34.
  • Gasimova R.T. Big data analytics: existing approaches, problems and solutions // Problems of Information Technology, 2016, No1, pp. 75–93.
  • Alguliyev R.M., Gasimova R.T., Abbaslı R.N. // The Obstacles in Big Data Process, International Journal of Modern Education and Computer Science (IJMECS), 2017, vol. 9, No. 3, p. 28–35.
  • Price R. Volume, velocity and variety: key challenges for mining large volumes of multimedia information / Proceedings of the 7th Australasian Data Mining Conference (AusDM '08), Australia, 2008, vol.87, pp.17–23.
  • Wu X., Zhu X., Wu G., Ding W. Data Mining with Big Data // Journal IEEE Transactions on Knowledge and Data Engineering, 2014, vol.26, no.1, pp. 97–107.
  • InfoSphere Platform: Big Data Analytics, 2013, http://www-01.ibm.com/software
  • Jacobs A. The pathologies of big data // Communications of the ACM. 2009, vol.52. no.8, рp. 36–44.
  • Babu S., Herodotou H. Massively Parallel Databases and MapReduce Systems // Foundations and Trends in Databases, 2013, vol.5, no.1, pp.1–104.
  • Prajapati V. Big Data Analytics with R and Hadoop, Publisher: Packt Publishing Ltd, 2013, pp. 238.
  • Shang W., Jiang Z.M., Hemmati H., Adams B., Hassan A.E. Patrick Martin. Assisting developers of big data analytics applications when deploying on hadoop clouds / Proceedings of the 2013 International Conference on Software Engineering (ICSE '13), NJ, USA, 2013, pp. 402–411.
  • Assunção M.D., Rodrigo N., Bianchi S., Netto Marco A.S., Buyya R. Big Data computing and clouds // Journal of Parallel and Distributed Computing, 2015, vol.79, pp.3–15.
  • Bulgakova E.V., Bulgakov V.G., Akimov V.S. Use of the Big Data in the PublicAdministration System: Perspective, Opportunities, Perspectives // Journal of Juridical Sciences and Practice: The Bulletin of the Nizhny Novgorod MIA, Russia, 2015, No 3 (31), pp. 10–15.
  • Pavlyutenkova M.Yu. Electronic state of Russia - a virtual reality or a new concept of public administration? // Political management and public policy of the XXI century: the State, society and political elites. - M., RAPS; ROSSPEN, 2008, pp. 365–373.
  • Koh C.E., Prybutok V.R., Zhang X., Measuring e-government readiness, Information & Management, vol.45, No 8, 2008, pp. 540–546.
  • Potnis D. D. Measuring e-Governance as an innovation in the public sector, Government Information Quarterly, vol. 27, No 1, 2010, pp. 41–48.
  • Bertot J.C., Choi H. Big data and e-government: issues, policies, and recommendations
    / Proceedings of the 14th Annual International Conference on Digital Government Research (dg.o '13), NY, USA, 2013, p. 1–10.
  • Harrison T.M. Using big data for digital government research / Proceedings of the 15th Annual International Conference on Digital Government Research (dg.o '14), 2014, NY, USA, p. 309–310.
  • Chen Y.-C., Hsieh T.-C. Big Data for Digital Government: Opportunities, Challenges, and Strategies // International Journal of Public Administration in the Digital Age (IJPADA) 2014, p. 1–14.
  • What is big data? - Bringing big data to the enterprise, 2013, http://www-01.ibm.com
  • The digital universe in 2020: Big Data, Bigger Digital Shadows, and Biggest Growth in the
    Far East. Study report, IDC, December 2012.
    http://www.emc.com/leadership/digital-universe
  • Roy J. Cloud Computing and Gov 2.0: Traditionalism or Transformation across the Canadian Public Sector? // International Journal of Public Administration in the Digital Age (IJPADA)1, No 1, 2014, p. 74–90.
  • Ojo , Mergel I., Janssen M. Open data to solve societal issues: workshop / Proceedings of the 16th Annual International Conference on Digital Government Research (dg.o '15), NY, USA, 2015, p. 345–347.