A Hybrid Model with New Word Weighting for Fast Filtering Spam Short Texts

Author:

Xia Tian1ORCID,Chen Xuemin2ORCID,Wang Jiacun3ORCID,Qiu Feng4

Affiliation:

1. School of Computer and Information Engineering, Shanghai Polytechnic University, Shanghai 201209, China

2. Department of Engineering, Texas Southern University, Houston, TX 77004, USA

3. Department of Computer Science and Software Engineering, Monmouth University, West Long Branch, NJ 07764, USA

4. Institute of Artificial Intelligence on Education, Shanghai Normal University, Shanghai 200234, China

Abstract

Short message services (SMS), microblogging tools, instant message apps, and commercial websites produce numerous short text messages every day. These short text messages are usually guaranteed to reach mass audience with low cost. Spammers take advantage of short texts by sending bulk malicious or unwanted messages. Short texts are difficult to classify because of their shortness, sparsity, rapidness, and informal writing. The effectiveness of the hidden Markov model (HMM) for short text classification has been illustrated in our previous study. However, the HMM has limited capability to handle new words, which are mostly generated by informal writing. In this paper, a hybrid model is proposed to address the informal writing issue by weighting new words for fast short text filtering with high accuracy. The hybrid model consists of an artificial neural network (ANN) and an HMM, which are used for new word weighting and spam filtering, respectively. The weight of a new word is calculated based on the weights of its neighbor, along with the spam and ham (i.e., not spam) probabilities of short text message predicted by the ANN. Performance evaluations on benchmark datasets, including the SMS message data maintained by University of California, Irvine; the movie reviews, and the customer reviews are conducted. The hybrid model operates at a significantly higher speed than deep learning models. The experiment results show that the proposed hybrid model outperforms other prominent machine learning algorithms, achieving a good balance between filtering throughput and accuracy.

Funder

Shanghai Engineering Research Center of Intelligent Education and Bigdata

Research Base of Online Education for Shanghai Middle and Primary Schools

Lab for Educational Big Data and Policymaking

Ministry of Education, China

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference38 articles.

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3. Review of short-text classification;Alsmadi;Int. J. Web Inf. Syst.,2019

4. Gao, Z., Li, Z., Luo, J., and Li, X. (2022). Short text aspect-based sentiment analysis based on CNN+ BiGRU. Appl. Sci., 12.

5. Spam detection on social networks using deep contextualized word representation;Ghanem;Multimed. Tools Appl.,2023

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