Data Coverage for Detecting Representation Bias in Image Datasets: A Crowdsourcing Approach

Melika Mousavi, N. Shahbazi, Abolfazl Asudeh
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Abstract

Existing machine learning models have proven to fail when it comes to their performance for minority groups, mainly due to biases in data. In particular, datasets, especially social data, are often not representative of minorities. In this paper, we consider the problem of representation bias identification on image datasets without explicit attribute values. Using the notion of data coverage for detecting a lack of representation, we develop multiple crowdsourcing approaches. Our core approach, at a high level, is a divide and conquer algorithm that applies a search space pruning strategy to efficiently identify if a dataset misses proper coverage for a given group. We provide a different theoretical analysis of our algorithm, including a tight upper bound on its performance which guarantees its near-optimality. Using this algorithm as the core, we propose multiple heuristics to reduce the coverage detection cost across different cases with multiple intersectional/non-intersectional groups. We demonstrate how the pre-trained predictors are not reliable and hence not sufficient for detecting representation bias in the data. Finally, we adjust our core algorithm to utilize existing models for predicting image group(s) to minimize the coverage identification cost. We conduct extensive experiments, including live experiments on Amazon Mechanical Turk to validate our problem and evaluate our algorithms' performance.
用于检测图像数据集中表示偏差的数据覆盖:一种众包方法
事实证明,现有的机器学习模型在少数群体中的表现是失败的,这主要是由于数据中的偏见。特别是,数据集,尤其是社会数据,往往不能代表少数群体。在本文中,我们考虑了在没有显式属性值的图像数据集上的表示偏差识别问题。利用数据覆盖的概念来检测缺乏代表性,我们开发了多种众包方法。在高层次上,我们的核心方法是一种分而治之的算法,它应用搜索空间修剪策略来有效地识别数据集是否错过了给定组的适当覆盖。我们对我们的算法进行了不同的理论分析,包括其性能的严格上界,以保证其接近最优性。以该算法为核心,提出了多种启发式算法,以降低多个相交/非相交组在不同情况下的覆盖检测成本。我们证明了预训练的预测器是如何不可靠的,因此不足以检测数据中的表示偏差。最后,我们调整了我们的核心算法,利用现有的模型来预测图像组,以最小化覆盖识别成本。我们进行了大量的实验,包括在Amazon Mechanical Turk上进行的现场实验,以验证我们的问题并评估我们的算法性能。
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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