Improving E-government services for advanced search

  • Goran P. Šimić University of Defence in Belgrade, National Defense Shool, Department for Simulations and Distance Learning, Belgrade
Keywords: text search, text similarity, speach recognition, metadata exploitation,

Abstract


The E-government services depend on many archived documents mostly scanned and partially described to be machine searchable in order to be found fast and to offer appropriate responses to citizens and to the government personnel as well. In order to improve the existing state, the hybrid solution based on the previous research results is presented. This paper presents an in-depth view of the Web solution that combines different technologies on both the client and the server side thus improving regular search services amd making them accessible to people with dissabilities (e.g. blindness).

Author Biography

Goran P. Šimić, University of Defence in Belgrade, National Defense Shool, Department for Simulations and Distance Learning, Belgrade

Odsek za simulacije i učenje na daljinu

Doktor nauka

References

Asili, H., & Tanrıover, O.O. 2014. Comparison of Document Management Systems by Meta Modeling and Workforce Centric Tuning Measures. International Journal of Computer Science, Engineering and Information Technology, 4(1), pp.57-67. Available at: https://doi.org/10.5121/ijcseit.2014.4106.

Bird, S., Klein, E., & Loper, E. 2009. Natural Language Processing with Python.O'Reilly Media.

Mattmann, C., & Zitting, J. 2012. Tika in Action.Greenwich, USA: Manning Publications.

Owen, S., Anil, R., Dunning, T., & Friedman, E. 2011. Mahout in Action.Greenwich, CT, USA: Manning Publications Co.

Sammer, E. 2012. Hadoop Operations.O'Reilly Media.

Stanković, R., Krstev, C., Vitas, V., Vulović, N., & Kitanović, O. 2016. Keyword-Based Search on Bilingual Digital Libraries. LNCS, 10151, pp.112-123.

Svyatkovsky, A., Imai, K., Kroeger, M., & Shiraito, Y. 2016. Large Scale Text Processing Pipeline with Apache Spark. In Big NLP Workshop, IEEE Big Data conference.

Šimić, G. 2015. E-Government Documents and Data Clustering. In Z. Mahmood, Ć. Dolićanin, E. Kajan, D. Randjelović, & B. Stojanović Eds., Handbook of Research on Democratic Strategies and Citizen-Centered E-Government Services.IGI Global, pp.164-191. Available at: https://doi.org/10.4018/978-1-4666-7266-6.ch010.

Watson, M. 2009. Scripting Intelligence: Web 3.0 Information Gathering and Processing.Apress, pp.29-32.

Yang, Y., & Chute, C.G. 1994. An example-based mapping method for text categorization and retrieval. ACM Transactions on Information Systems, 12(3), pp.252-277. Available at: https://doi.org/10.1145/183422.183424.

Published
2019/03/24
Section
Original Scientific Papers