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Bias-Aware Hierarchical Clustering for detecting the discriminated groups of users in recommendation systems

机译:偏差感知分层群集,用于检测推荐系统中的判别用户组

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摘要

One challenge for the modem recommendation systems is the Tyranny of Majority - the generated recommendations are often optimized for the mainstream trends so that the minority preference groups remain discriminated. Moreover, most modem recommendation techniques are characterized as black-box systems. Given a lack of understanding of the dataset characteristics and insufficient diversity of represented individuals, such approaches inevitably lead to amplifying hidden data biases and existing disparities. In this research, we address this problem by proposing a novel approach to detecting and describing potentially discriminated user groups for a given recommendation algorithm. We propose a Bias-Aware Hierarchical Clustering algorithm that identifies user clusters based on latent embeddings constructed by a black-box recommender to identify users whose needs are not met by the given recommendation method. Next, a post-hoc explainer model is applied to reveal the most important descriptive features that characterize these user segments. Our method is model-agnostic and does not require any a priori information about existing disparities and sensitive attributes. An experimental evaluation on a synthetic dataset and two real-world datasets from different domains shows that, compared with other clustering methods and arbitrarily selected user groups, our method is capable of identifying underperforming segments for different recommendation algorithms, and detect more severe disparities.
机译:调制解调器推荐系统的一个挑战是大多数的暴政 - 产生的建议通常针对主流趋势进行了优化,以便少数偏好群体仍然受到歧视。此外,大多数调制解调器推荐技术的特征在于黑盒系统。鉴于对数据集特征缺乏了解和代表个人的多样性,这种方法不可避免地导致放大隐藏数据偏差和现有的差异。在本研究中,我们通过提出一种用于检测和描述给定推荐算法的潜在区分的用户组的新方法来解决这个问题。我们提出了一种偏见感知的分层聚类算法,其基于由黑盒推荐器构成的潜在嵌入来识别用户群集,以识别给定的推荐方法不满足其需求的用户。接下来,应用后HOC解释器模型来揭示表征这些用户段的最重要的描述性功能。我们的方法是模型不可知的,并且不需要有关现有差异和敏感属性的先验信息。上的合成数据集,并从不同的域显示了两个现实世界的数据集,与其他聚类方法和任意选择的用户组相比,我们的方法能够鉴定表现不佳的段不同的推荐算法,并检测更严重的差距的实验评估。

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