Robust Neural Information Retrieval: An Adversarial and Out-of-distribution Perspective
Yu-An Liu, Ruqing Zhang, Jiafeng Guo, Maarten de Rijke, Yixing Fan,, Xueqi Cheng

TL;DR
This paper provides the first comprehensive survey on the robustness of neural information retrieval models, focusing on adversarial and out-of-distribution challenges, and introduces a new benchmark for evaluation.
Contribution
It consolidates existing methods, datasets, and metrics for robust neural IR, and introduces the BestIR benchmark for evaluating robustness in IR models.
Findings
First survey on neural IR robustness
Introduction of the BestIR benchmark
Discussion of challenges and future directions
Abstract
Recent advances in neural information retrieval (IR) models have significantly enhanced their effectiveness over various IR tasks. The robustness of these models, essential for ensuring their reliability in practice, has also garnered significant attention. With a wide array of research on robust IR being proposed, we believe it is the opportune moment to consolidate the current status, glean insights from existing methodologies, and lay the groundwork for future development. We view the robustness of IR to be a multifaceted concept, emphasizing its necessity against adversarial attacks, out-of-distribution (OOD) scenarios and performance variance. With a focus on adversarial and OOD robustness, we dissect robustness solutions for dense retrieval models (DRMs) and neural ranking models (NRMs), respectively, recognizing them as pivotal components of the neural IR pipeline. We provide an…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Neural Networks and Applications · Machine Learning and Algorithms
MethodsFocus
