""" Seq2Sick ================================================ (Seq2Sick: Evaluating the Robustness of Sequence-to-Sequence Models with Adversarial Examples) """ from textattack import Attack from textattack.constraints.overlap import LevenshteinEditDistance from textattack.constraints.pre_transformation import ( RepeatModification, StopwordModification, ) from textattack.goal_functions import NonOverlappingOutput from textattack.search_methods import GreedyWordSwapWIR from textattack.transformations import WordSwapEmbedding from .attack_recipe import AttackRecipe class Seq2SickCheng2018BlackBox(AttackRecipe): """Cheng, Minhao, et al. Seq2Sick: Evaluating the Robustness of Sequence-to-Sequence Models with Adversarial Examples https://arxiv.org/abs/1803.01128 This is a greedy re-implementation of the seq2sick attack method. It does not use gradient descent. """ @staticmethod def build(model_wrapper, goal_function="non_overlapping"): # # Goal is non-overlapping output. # goal_function = NonOverlappingOutput(model_wrapper) transformation = WordSwapEmbedding(max_candidates=50) # # Don't modify the same word twice or stopwords # constraints = [RepeatModification(), StopwordModification()] # # In these experiments, we hold the maximum difference # on edit distance (ϵ) to a constant 30 for each sample. # constraints.append(LevenshteinEditDistance(30)) # # Greedily swap words with "Word Importance Ranking". # search_method = GreedyWordSwapWIR(wir_method="unk") return Attack(goal_function, constraints, transformation, search_method)