Language Agnostic Code Embeddings
Saiteja Utpala, Alex Gu, et al.
NAACL 2024
More and more investors and machine learning models rely on social media (e.g., Twitter and Reddit) to gather information and predict movements stock prices. Although text-based models are known to be vulnerable to adversarial attacks, whether stock prediction models have similar vulnerability given necessary constraints is underexplored. In this paper, we experiment with a variety of adversarial attack configurations to fool three stock prediction victim models. We address the task of adversarial generation by solving combinatorial optimization problems with semantics and budget constraints. Our results show that the proposed attack method can achieve consistent success rates and cause significant monetary loss in trading simulation by simply concatenating a perturbed but semantically similar tweet.
Saiteja Utpala, Alex Gu, et al.
NAACL 2024
Megh Thakkar, Quentin Fournier, et al.
ACL 2024
Gururaj Saileshwar, Prashant J. Nair, et al.
HPCA 2018
Kristjan Greenewald, Yuancheng Yu, et al.
NeurIPS 2024