Machine Learning as a New Search Engine Interface: An Overview

Authors

  • Taposh Kumar Neogy IBA (National University), Rajshahi
  • Harish Paruchuri University of Houston-Clear Lake

DOI:

https://doi.org/10.18034/ei.v2i2.539

Keywords:

Machine Learning, Search Engine Interface, Search Technology

Abstract

The essence of a web page is an inherently predisposed issue, one that is built on behaviors, interests, and intelligence. There are relatively a ton of reasons web pages are critical to the new world, as the matter cannot be overemphasized. The meteoric growth of the internet is one of the most potent factors making it hard for search engines to provide actionable results. With classified directories, search engines store web pages. To store these pages, some of the engines rely on the expertise of real people. Most of them are enabled and classified using automated means but the human factor is dominant in their success. From experimental results, we can deduce that the most effective and critical way to automate web pages for search engines is via the integration of machine learning.

 

Downloads

Download data is not yet available.

Author Biographies

Taposh Kumar Neogy, IBA (National University), Rajshahi

Assistant Professor (Accounting), Institute of Business Administration (IBA), National University, Rajshahi, BANGLADESH

Harish Paruchuri, University of Houston-Clear Lake

Department of Computing Sciences, University of Houston-Clear Lake, 2700 Bay Area Blvd, Houston, TX 77058, USA

References

Bollacker, K. D.; Lawrence, S.; and Giles, C. L. (1998). CiteSeer: An autonomous web agent for automatic re- trieval and identification of interesting publications. In Agents '98, 116{123.

Boyan, J.; Freitag, D.; and Joachims, T. (1996). A machine learning architecture for optimizing web search engines. In AAAI workshop on Internet-Based Information Systems.

Cho, J.; Garcia-Molina, H.; and Page, L. (1998). Efficient crawling through URL ordering. In WWW7.

Cohen, W., and Fan, W. (1999). Learning page-independent heuristics for extracting data from web pages. In AAAI Spring Symposium on Intelligent Agents in Cyberspace.

Donepudi, P. K. (2014). Voice Search Technology: An Overview. Engineering International, 2(2), 91-102. https://doi.org/10.18034/ei.v2i2.502

Kaelbling, L. P.; Littman, M. L.; and Moore, A. W. (1996). Reinforcement learning: A survey. Journal of Artificial Intelligence Research 237(285).

Lakshmi Narayana S., Suneetha Devi J., Bhargav Reddy I., Harish Paruchuri. (2012). Optimizing Voice Recognition using Various Techniques. CiiT International Journal of Digital Signal Processing, 4(4), 135-141

Menczer, F. (1997). ARACHNID: Adaptive retrieval agents choosing heuristic neighborhoods for information discov- ery. In ICML '97.

Movva, L., Kurra, C., Koteswara Rao, G., Battula, R. B., Sridhar, M., & Harish, P. (2012). Underwater Acoustic Sensor Networks: A Survey on MAC and Routing Protocols. International Journal of Computer Technology and Applications, 3(3).

Riedmiller, M. (2005). Neural fitted Q iteration–first experiences with a data efficient neural reinforcement learning method.

Torgo, L., and Gama, J. (1997). Regression using classification algorithms. Intelligent Data Analysis 1(4).

Ujwala, D., Ram Kiran, D. S., Jyothi, B., Fathima, S. S., Paruchuri, H., Koushik, Y. M. S. R. (2012). A Parametric Study on Impedance Matching of A CPW Fed T-shaped UWB Antenna. International Journal of Soft Computing and Engineering, 2(2), 433-436.

Wilson, R. F.; Pettijohn, J. B. (2006). Search engine optimisation: A primer on keyword strategies. J. Direct Data Digit.

Witten, I. H.; Nevill-Manning, C.; McNab, R.; and Cunnningham, S. J. (1998). A public digital library based on full-text retrieval: Collections and experience. Communications of the ACM 41(4):71{75.

--0--

Downloads

Published

2014-12-31

How to Cite

Neogy, T. K. ., & Paruchuri, H. (2014). Machine Learning as a New Search Engine Interface: An Overview. Engineering International, 2(2), 103–112. https://doi.org/10.18034/ei.v2i2.539

Issue

Section

Peer Reviewed Articles