Inverse Design for Conditional Distribution Matching
Ori Meidler, Shaul Tolkovsky, Or Zuk

TL;DR
This paper introduces Conditional Distribution Matching (CDM), a new inverse design framework that aligns the conditional distribution of generated outputs with a target distribution, using a novel inference algorithm that combines pretrained diffusion and sampler models.
Contribution
It formalizes the CDM problem, proposes two variants (CDMS and CDMO), and introduces MLGD-F, a plug-and-play inference method that efficiently matches conditional distributions without additional training.
Findings
MLGD-F effectively matches diverse target distributions in synthetic and real-world tasks.
The method enables computationally efficient and memory-light conditional distribution estimation.
Experimental results demonstrate reliable recovery of inputs for complex distributional targets.
Abstract
Generative models are powerful tools for sampling from a learned distribution , and inverse-design methods invert this map to find an input that produces a desired point output . However, many design goals are naturally distributional rather than pointwise, incorporating the inherent uncertainty of and targeting a specific form for it, a task not addressed by standard inverse design. To address this issue we introduce Conditional Distribution Matching (CDM), a new inverse-design problem class in generative modeling: given a joint distribution and a target distribution , find an input whose induced conditional distribution matches . We formally define two variants: Conditional Distribution Matching Sampling (CDMS) and Conditional Distribution Matching Optimization…
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