Identification of Spam Message by Using AI & ML

Authors

  • Bhaludra R Nadh Singh Professor of CSE & Head, Department of Computer Science and Engineering, Bhoj Reddy Engineering College for Women, Vinay Nagar, Hyderabad. Telangana, India Author

Keywords:

Spam Messages, Classification, Spam Filtering, Comparison

Abstract

We use some communication means to convey messages digitally. Digital tools allow two or more persons to coordinate with each other. This communication can be textual, visual, audio, and written. Smart devices including cell phones are the major sources of communication these days. Intensive communication through SMSs is causing spamming as well. Unwanted text messages define as junk information that we received in gadgets. Most of the companies promote their products or services by sending spam texts which are unwelcome. In general, most of the time spam emails more in numbers than Actual messages. In this paper, we have used text classification techniques to define SMS and spam filtering in a short view, which segregates the messages accordingly. In this paper, we apply some classification methods along with “machine learning algorithms” to identify how many SMS are spam or not. For that reason, we compared different classified methods on dataset collection on which work done by using the Weka tool.

Downloads

Download data is not yet available.

References

J. Han, M. Kamber. Data Mining Concepts and Techniques. by Elsevier inc., Ed: 2nd, 2006

A. Tiago, Almeida , José María GómezAkebo Yamakami. Contributions to the Study of SMS Spam Filtering. University of Campinas, Sao Paulo, Brazil.

M. Bilal Junaid, Muddassar Farooq. Using Evolutionary Learning Classifiers To Do Mobile Spam (SMS) Filtering. National University of Computer & Emerging Sciences (NUCES) Islamabad, Pakistan.

Inwhee Joe and Hyetaek Shim, "An SMS Spam Filtering System Using Support Vector Machine," Division of Computer Science and Engineering, Hanyang University, Seoul, 133-791 South Korea.

Xu, Qian, Evan Wei Xiang, Qiang Yang, Jiachun Du, and Jieping Zhong. "Sms spam detection using noncontent features." IEEE Intelligent Systems 27, no. 6 (2012): 44-51.

Yadav, K., Kumaraguru, P., Goyal, A., Gupta, A., and Naik, V. "SMSAssassin: Crowdsourcing driven mobile-based system for SMS spam filtering," Proceedings of the 12th Workshop on Mobile Computing Systems and Applications, ACM, 2011, pp. 1-6.

Duan, L., Li, N., & Huang, L. (2009). “A new spam short message classification” 2009 First International Workshop on Education Technology and Computer Science, 168-171.

Weka The University of Waikato, Weka 3: Data Mining Software in Java, viewed on 2011 September 14.

Mccallum, A., & Nigam, K. (1998). “A comparison of event models for naive Bayes text classification”. AAAI-98 Workshop on 'Learning for Text Categorization'

Bayesian Network Classifiers in Weka, viewed on 2011 September 14.

Llora, Xavier, and Josep M. Garrell (2001) Evolution of decision trees, edn., Forth Catalan Conference on Artificial Intelligence (CCIA2001).

B. G. Becker. Visualizing Decision Table Classifiers. Pages 102- 105, IEEE (1998). A. Bantukul and P. J. Marsico, ‘‘Methods, systems, and computer program products for short message service (SMS) spam filtering using E-mail spam filtering resources,’’ U.S. Patent 7 751 836 B2, Jul. 6, 2010.

H.-Y. Chou and N.-H. Lien, ‘‘Effects of SMS teaser ads on product curiosity,’’ Int. J. Mobile Commun., vol. 12, no. 4, pp. 328–345, Jul. 2014.

N. Jindal and B. Liu, ‘‘Review spam detection,’’ in Proc. 16th Int. Conf. World Wide Web, 2007, pp. 1189–1190.

M. Jiang, P. Cui, and C. Faloutsos, ‘‘Suspicious behavior detection: Current trends and future directions,’’ IEEE Intell. Syst., vol. 31, no. 1, pp. 31–39, Jan./Feb. 2016.

C. Wang et al., ‘‘A behavior-based SMS antispam system,’’ IBM J. Res. Develop., vol. 54, no. 6, p. 3:1–3:16, Nov./Dec. 2010.

Downloads

Published

11-04-2024

Issue

Section

Research Articles

How to Cite

[1]
Bhaludra R Nadh Singh, “Identification of Spam Message by Using AI & ML”, Int J Sci Res Sci Eng Technol, vol. 11, no. 2, pp. 552–559, Apr. 2024, Accessed: Nov. 07, 2024. [Online]. Available: https://ijsrset.com/index.php/home/article/view/IJSRSET2411597

Similar Articles

1-10 of 29

You may also start an advanced similarity search for this article.