
@Article{csse.2023.040159,
AUTHOR = {Jebran Khan, Kashif Ahmad, Kyung-Ah Sohn},
TITLE = {An Efficient Character-Level Adversarial Attack Inspired by Textual Variations in Online Social Media Platforms},
JOURNAL = {Computer Systems Science and Engineering},
VOLUME = {47},
YEAR = {2023},
NUMBER = {3},
PAGES = {2869--2894},
URL = {http://www.techscience.com/csse/v47n3/54586},
ISSN = {},
ABSTRACT = {In recent years, the growing popularity of social media platforms has led to several interesting natural language
processing (NLP) applications. However, these social media-based NLP applications are subject to different types
of adversarial attacks due to the vulnerabilities of machine learning (ML) and NLP techniques. This work presents
a new low-level adversarial attack recipe inspired by textual variations in online social media communication.
These variations are generated to convey the message using out-of-vocabulary words based on visual and phonetic
similarities of characters and words in the shortest possible form. The intuition of the proposed scheme is to
generate adversarial examples influenced by human cognition in text generation on social media platforms while
preserving human robustness in text understanding with the fewest possible perturbations. The intentional textual
variations introduced by users in online communication motivate us to replicate such trends in attacking text to
see the effects of such widely used textual variations on the deep learning classifiers. In this work, the four most
commonly used textual variations are chosen to generate adversarial examples. Moreover, this article introduced a
word importance ranking-based beam search algorithm as a searching method for the best possible perturbation
selection. The effectiveness of the proposed adversarial attacks has been demonstrated on four benchmark datasets
in an extensive experimental setup.},
DOI = {10.32604/csse.2023.040159}
}



