Multi-objective Deep Data Generation with Correlated Property Control
Abstract
Developing deep generative models has been an emerging field due to the ability to model and generate complex data for various purposes, such as image synthesis and molecular design. However, the advancement of deep generative models is limited by challenges to generate objects that possess multiple desired properties: 1) the existence of complex correlation among real-world properties is common but hard to identify; 2) controlling individual property enforces an implicit partially control of its correlated properties, which is difficult to model; 3) controlling multiple properties under various manners simultaneously is hard and under-explored. We address these challenges by proposing a novel deep generative framework that recovers semantics and the correlation of properties through disentangled latent vectors. The correlation is handled via an explainable mask pooling layer, and properties are precisely retained by generated objects via the mutual dependence between latent vectors and properties. Our generative model preserves properties of interest while handling correlation and conflicts of properties under a multi-objective optimization framework. The experiments demonstrate our model's superior performance in generating data with desired properties.
Cite
@article{arxiv.2210.01796,
title = {Multi-objective Deep Data Generation with Correlated Property Control},
author = {Shiyu Wang and Xiaojie Guo and Xuanyang Lin and Bo Pan and Yuanqi Du and Yinkai Wang and Yanfang Ye and Ashley Ann Petersen and Austin Leitgeb and Saleh AlKhalifa and Kevin Minbiole and William Wuest and Amarda Shehu and Liang Zhao},
journal= {arXiv preprint arXiv:2210.01796},
year = {2022}
}
Comments
This paper has been accepted by NeurIPS 2022