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Contrastive inverse regression for dimension reduction

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arxiv 2305.12287 v1 pith:F7UJ7EC2 submitted 2023-05-20 stat.ML cs.LGstat.APstat.ME

Contrastive inverse regression for dimension reduction

classification stat.ML cs.LGstat.APstat.ME
keywords contrastivereductiondimensionbeencovariatesdatafunctionalgroup
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Supervised dimension reduction (SDR) has been a topic of growing interest in data science, as it enables the reduction of high-dimensional covariates while preserving the functional relation with certain response variables of interest. However, existing SDR methods are not suitable for analyzing datasets collected from case-control studies. In this setting, the goal is to learn and exploit the low-dimensional structure unique to or enriched by the case group, also known as the foreground group. While some unsupervised techniques such as the contrastive latent variable model and its variants have been developed for this purpose, they fail to preserve the functional relationship between the dimension-reduced covariates and the response variable. In this paper, we propose a supervised dimension reduction method called contrastive inverse regression (CIR) specifically designed for the contrastive setting. CIR introduces an optimization problem defined on the Stiefel manifold with a non-standard loss function. We prove the convergence of CIR to a local optimum using a gradient descent-based algorithm, and our numerical study empirically demonstrates the improved performance over competing methods for high-dimensional data.

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