Debias the Black-box: A Fair Ranking Framework via Knowledge Distillation

WISE Pub Date : 2022-08-24 DOI:10.48550/arXiv.2208.11628
Z. Zhu, Shijing Si, Jianzong Wang, Yaodong Yang, Jing Xiao
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引用次数: 1

Abstract

. Deep neural networks can capture the intricate interaction history information between queries and documents, because of their many complicated nonlinear units, allowing them to provide correct search recommendations. However, service providers frequently face more complex obstacles in real-world circumstances, such as deployment cost constraints and fairness requirements. Knowledge distillation, which transfers the knowledge of a well-trained complex model (teacher) to a simple model (student), has been proposed to alleviate the former concern, but the best current distillation methods focus only on how to make the student model imitate the predictions of the teacher model. To better facilitate the application of deep models, we propose a fair information retrieval framework based on knowledge distillation. This framework can improve the exposure based fairness of models while considerably de-creasing model size. Our extensive experiments on three huge datasets show that our proposed framework can reduce the model size to a minimum of 1% of its original size while maintaining its black-box state. It also improves fairness performance by 15%~46% while keeping a high level of recommendation effectiveness.
去除黑盒子:一个基于知识蒸馏的公平排名框架
. 深度神经网络可以捕获查询和文档之间复杂的交互历史信息,因为它们有许多复杂的非线性单元,允许它们提供正确的搜索建议。然而,服务提供者在实际环境中经常面临更复杂的障碍,例如部署成本限制和公平性要求。知识蒸馏是一种将训练有素的复杂模型(教师)的知识转移到简单模型(学生)的方法,这种方法已经被提出来缓解前者的担忧,但是目前最好的蒸馏方法只关注如何使学生模型模仿教师模型的预测。为了更好地促进深度模型的应用,我们提出了一种基于知识蒸馏的公平信息检索框架。该框架可以提高基于曝光的模型公平性,同时大大减小模型尺寸。我们在三个大型数据集上的大量实验表明,我们提出的框架可以将模型大小减少到原始大小的至少1%,同时保持其黑盒状态。在保持高推荐效率的同时,公平性性能也提高了15%~46%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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