MLLGApr 25, 2025

Representation Learning for Distributional Perturbation Extrapolation

arXiv:2504.18522v11 citationsh-index: 45
Originality Incremental advance
AI Analysis

This work addresses a domain-specific challenge in computational biology for predicting perturbation effects, with incremental contributions in identifiability and method design.

The paper tackles the problem of predicting the distribution of low-level measurements for unseen perturbations like gene knockdowns or drug combinations, by proposing a latent variable model where perturbations act additively in an embedding space, and it shows that PDAE compares favorably to existing methods in empirical evaluations.

We consider the problem of modelling the effects of unseen perturbations such as gene knockdowns or drug combinations on low-level measurements such as RNA sequencing data. Specifically, given data collected under some perturbations, we aim to predict the distribution of measurements for new perturbations. To address this challenging extrapolation task, we posit that perturbations act additively in a suitable, unknown embedding space. More precisely, we formulate the generative process underlying the observed data as a latent variable model, in which perturbations amount to mean shifts in latent space and can be combined additively. Unlike previous work, we prove that, given sufficiently diverse training perturbations, the representation and perturbation effects are identifiable up to affine transformation, and use this to characterize the class of unseen perturbations for which we obtain extrapolation guarantees. To estimate the model from data, we propose a new method, the perturbation distribution autoencoder (PDAE), which is trained by maximising the distributional similarity between true and predicted perturbation distributions. The trained model can then be used to predict previously unseen perturbation distributions. Empirical evidence suggests that PDAE compares favourably to existing methods and baselines at predicting the effects of unseen perturbations.

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