Enhanced E-recruitment using Semantic Retrieval of Modeled Serialized Documents

Автор: Alaba T. Owoseni, Olatunbosun Olabode, B. A. Ojokoh

Журнал: International Journal of Mathematical Sciences and Computing(IJMSC) @ijmsc

Статья в выпуске: 1 vol.3, 2017 года.

Бесплатный доступ

Retrieval in existing e-recruitment system is on exact match between applicants' stored profiles and inquirer's request. These profiles are captured through online forms whose fields are tailored by recruiters and hence, applicants sometimes do not have privilege to present details of their worth that are not captured by the tailored fields thereby, leading to their disqualification. This paper presents a 3-tier system that models serialized documents of the applicants' worth and they are analyzed using document retrieval and natural language processing techniques for a human-like assessment. Its presentation tier was developed using java server pages and middle tier functionalities using web service technology. The data tier models résumés that have been tokenized and tagged using Brill Algorithm with my sequel. Within the middle tier, indexing was achieved using an inverted index whose terms are noun phrases extracted from résumés that have been tokenized and tagged using Brill Algorithm.

Еще

Electronic recruitment, semantic retrieval, cosine similarity measure, serialized document, document retrieval system, noun phrase extraction

Короткий адрес: https://sciup.org/15014254

IDR: 15014254

Список литературы Enhanced E-recruitment using Semantic Retrieval of Modeled Serialized Documents

  • Taylor, M. S. And Collins, C. J. Oganizational recruitment: Enhancing the intersection of theory and practice. In C. L. Cooper & E. A. Locke (Eds), Industrial Organizational Pyschology: Linking Theory and Practice, 2000, 304-334. Oxford UK: Blackwell.
  • Hogler, R. L., Henle, C. And Bemus, C. Internet recruiting and emloyment discrimination: A legal perspective. Human Resources Management Review, 1998, 8(2), pp. 149-164.
  • Stone, D. L., Lukaszewski, K., & Isenhour, L. C. (2005). E-Recruiting: Online strategies for Attracting Talent, In H. Gueutal & D. L. Stone (Eds.), The Brave New World of EHR: Human Resources in the Digital Age (Pages 22−53). New York: John Wiley & Sons
  • Lee, I. Evaluation of fortune 100 companies' career web sites, 2005. Human Systems Management, 24, 175-182.
  • Smith, N. Click and seek:Headhunting 2000, 1999. Management, 46(9), pp 40-44.
  • Jose, R. P., Miriam, L. And Ines, S. Internet recruitment power:opportunities and effectiveness. International Research Center on Organization (IRCO) 2001, Research Division IESE, University of Navarra, AV. Pearson, 21, 08034 Barcelona-Spain.
  • Umberto, S., Eufemia, T., Simona, C., Tommaso, D. N. and Eugenio, D. S. A System for retrieving Top-k Candidates to Job Positions, 2007. Retrieved from http://www.ceurws.org/1376489178/paper_7.pdf. Downloaded on 14/05/2014.
  • Camelo, M. E-Recruiting: the importance, processes and requirements for the further development of the Simultan Software, 2009. Retrieved from http://www.fhnw.ch/602481895/camelo20MayBachelor2oThesis.pdf. Downloaded on 23/12/2013.
  • Brill, E. Transformation-Based Error-Driven Learning and Natural Language Processing: A Case Study in Part of Speech Tagging, Computational Linguistics, 1995. Retrieved from http://www,aclweb.org/110194179/J95-4004.pdf. Downloaded on 19/02/2013.
  • Whitney, S. Noun phrase extraction: An evaluation and description of current techniques. Departmental Honors Thesis, 2008, Department of Computer Science, The University of Tennessee, Chattanooga.
  • Christopher, D. M. Prabhakar R. And Hinrich S. Introduction to information retrieval, Cambridge University Press New York, NY, USA, 2008.
  • Witten, I. H., Paynter, G. W., Frank, E., Gutwin, C. and Nevill-Manning, C.G. KEA: Practical automatic Keyphrase Extraction. In Proceedings of Digital Libraries '99: the Fourth ACM Conference on Digital Libraries, 1999, Pages 254-255.
  • Baeza-Yates, R. & Ribeiro-Neto, B. Modern Information Retrieval. New York: ACM Press, 1999.
  • Belkin, N.J. & Croft, W. B. Information filtering and Information retrieval: Two Sides of the Coin?, 1992, 35 (12), Pages 29-38.
Еще
Статья научная