This test evaluates the robustness of a Large Language Model (LLM) against adversarial prompts. The results of this test offer insights that inform users on the potential risks of their model being misused for unwanted purposes by adversaries that attempt to break the model’s safeguards. The specific focus of this test is the Question-Answering Natural Language Inference (QNLI) task. In this task, the model determines whether a context sentence contains the answer to a question. To produce the results, we use a dataset of adversarially constructed context sentences and questions. We query the model on the QNLI task using this dataset and record the model’s responses. These responses are parsed and compared to the original labels of the sentence question pairs*.* The final score for this test is computed by calculating the fraction of labels that are correctly predicted by the model. The score (0-100%) reflects the model’s ability to correctly identify question answers in adversarially perturbed prompts.
This test uses a dataset of adversarial prompts for the Question-Answering Natural Language Inference (QNLI) task from Adversarial GLUE: A Multi-Task Benchmark for Robustness Evaluation of Language Models, modified using the methodology presented in DecodingTrust: A Comprehensive Assessment of Trustworthiness in GPT Models. This dataset includes the following attacks:
This test first queries the model on the QNLI task using the complete set of adversarial prompts included in the dataset. Each adversarial prompt includes a context sentence and a question, and the model is queried to determine whether the context sentence contains the answer to the question. These sentences and questions are adversarially perturbed to cause models to fail at the task by incorrectly classifying the presence or absence of the answer. The model’s responses are collected and parsed to determine the label predicted by the model (Containment or No Containment). The AdvGLUE++ QNLI score is calculated as the fraction of all labels that are correctly predicted by the model*.* We also calculate per-attack scores for each of the adversarial attack types listed above.