SMS Spam Detection and Classification to Combat Abuse in Telephone Networks Using Natural Language Processing
Dare Azeez Oyeyemi, Adebola K. Ojo

TL;DR
This paper presents a novel SMS spam detection method using NLP and machine learning, especially BERT, achieving high accuracy and low false positives to improve user privacy and security.
Contribution
It introduces a BERT-based NLP approach combined with various classifiers for more effective SMS spam detection, outperforming existing techniques.
Findings
Naive Bayes + BERT achieves 97.31% accuracy
The model has a detection time of 0.3 seconds
The approach reduces false positives significantly
Abstract
In the modern era, mobile phones have become ubiquitous, and Short Message Service (SMS) has grown to become a multi-million-dollar service due to the widespread adoption of mobile devices and the millions of people who use SMS daily. However, SMS spam has also become a pervasive problem that endangers users' privacy and security through phishing and fraud. Despite numerous spam filtering techniques, there is still a need for a more effective solution to address this problem [1]. This research addresses the pervasive issue of SMS spam, which poses threats to users' privacy and security. Despite existing spam filtering techniques, the high false-positive rate persists as a challenge. The study introduces a novel approach utilizing Natural Language Processing (NLP) and machine learning models, particularly BERT (Bidirectional Encoder Representations from Transformers), for SMS spam…
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Taxonomy
MethodsRefunds@Expedia|||How do I get a full refund from Expedia? · travel james · Attention Is All You Need · WordPiece · Linear Warmup With Linear Decay · Adam · Attention Dropout · Weight Decay · Linear Layer · Multi-Head Attention
