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Exploring the Linear Subspace Hypothesis in Gender Bias Mitigation

机译:在性别偏见减缓中探索线性子空间假设

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Bolukbasi et al. (2016) presents one of the first gender bias mitigation techniques for word embeddings. Their method takes pre-trained word embeddings as input and attempts to isolate a linear subspace that captures most of the gender bias in the embeddings. As judged by an analogical evaluation task, their method virtually eliminates gender bias in the embeddings. However, an implicit and untested assumption of their method is that the bias subspace is actually linear. In this work, we generalize their method to a kernelized, non-linear version. We take inspiration from kernel principal component analysis and derive a nonlinear bias isolation technique. We discuss and overcome some of the practical drawbacks of our method for non-linear gender bias mitigation in word embeddings and analyze empirically whether the bias subspace is actually linear. Our analysis shows that gender bias is in fact well captured by a linear subspace, justifying the assumption of Bolukbasi et al. (2016).
机译:Bolukbasi等人。 (2016)呈现出词嵌入词的第一个性别偏置减缓技术之一。它们的方法采用预先训练的单词嵌入式作为输入,并尝试隔离捕获嵌入中大多数性别偏差的线性子空间。如通过模拟评估任务判断,它们的方法几乎消除了嵌入中的性别偏差。但是,隐式和未经测试的方法假设是偏置子空间实际上是线性的。在这项工作中,我们将其方法概括为括号,非线性版本。我们从内核主成分分析中获取灵感,并导出了非线性偏置隔离技术。我们讨论并克服我们在Word Embeddings中的非线性性别偏差缓解方法的一些实际缺点,并对偏置子空间实际上是线性的,以证明偏离偏差。我们的分析表明,性别偏见实际上是由线性子空间捕获的,证明Bolukbasi等人的假设是良好的。 (2016)。

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