基于神经公平协同过滤的职业推荐去偏

Rashidul Islam, Kamrun Keya, Ziqian Zeng, Shimei Pan, James R. Foulds
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引用次数: 46

摘要

越来越多的人际互动在社交媒体平台上被数字化,并受到算法决策的影响,确保这些算法的公平对待变得越来越重要。在这项工作中,我们研究了在社交媒体数据上训练的协同过滤推荐系统中的性别偏见。我们开发了神经公平协同过滤(NFCF),这是一个实用的框架,用于在推荐与职业相关的敏感项目(例如工作,学术集中或学习课程)时减轻性别偏见,使用神经协同过滤的预训练和微调方法,并辅以偏见校正技术。我们分别在MovieLens数据集和Facebook数据集上展示了我们的方法在性别去偏见的职业和大学专业推荐方面的效用,并获得了比几个最先进的模型更好的性能和更公平的行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Debiasing Career Recommendations with Neural Fair Collaborative Filtering
A growing proportion of human interactions are digitized on social media platforms and subjected to algorithmic decision-making, and it has become increasingly important to ensure fair treatment from these algorithms. In this work, we investigate gender bias in collaborative-filtering recommender systems trained on social media data. We develop neural fair collaborative filtering (NFCF), a practical framework for mitigating gender bias in recommending career-related sensitive items (e.g. jobs, academic concentrations, or courses of study) using a pre-training and fine-tuning approach to neural collaborative filtering, augmented with bias correction techniques. We show the utility of our methods for gender de-biased career and college major recommendations on the MovieLens dataset and a Facebook dataset, respectively, and achieve better performance and fairer behavior than several state-of-the-art models.
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