From text to multimodal: a survey of adversarial example generation in question answering systems
Gulsum Yigit,
Mehmet Fatih Amasyali
Abstract:Integrating adversarial machine learning with question answering (QA) systems has emerged as a critical area for understanding the vulnerabilities and robustness of these systems. This article aims to review adversarial example-generation techniques in the QA field, including textual and multimodal contexts. We examine the techniques employed through systematic categorization, providing a structured review. Beginning with an overview of traditional QA models, we traverse the adversarial example generation by e… Show more
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