2 research outputs found
Backdoor Learning for NLP: Recent Advances, Challenges, and Future Research Directions
Although backdoor learning is an active research topic in the NLP domain, the
literature lacks studies that systematically categorize and summarize backdoor
attacks and defenses. To bridge the gap, we present a comprehensive and
unifying study of backdoor learning for NLP by summarizing the literature in a
systematic manner. We first present and motivate the importance of backdoor
learning for building robust NLP systems. Next, we provide a thorough account
of backdoor attack techniques, their applications, defenses against backdoor
attacks, and various mitigation techniques to remove backdoor attacks. We then
provide a detailed review and analysis of evaluation metrics, benchmark
datasets, threat models, and challenges related to backdoor learning in NLP.
Ultimately, our work aims to crystallize and contextualize the landscape of
existing literature in backdoor learning for the text domain and motivate
further research in the field. To this end, we identify troubling gaps in the
literature and offer insights and ideas into open challenges and future
research directions. Finally, we provide a GitHub repository with a list of
backdoor learning papers that will be continuously updated at
https://github.com/marwanomar1/Backdoor-Learning-for-NLP