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Constrained Bayesian optimization for automatic chemical design using variational autoencoders

机译:使用变分自动化器约束贝叶斯优化对自动化学设计的影响

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Automatic Chemical Design is a framework for generating novel molecules with optimized properties. The original scheme, featuring Bayesian optimization over the latent space of a variational autoencoder, suffers from the pathology that it tends to produce invalid molecular structures. First, we demonstrate empirically that this pathology arises when the Bayesian optimization scheme queries latent space points far away from the data on which the variational autoencoder has been trained. Secondly, by reformulating the search procedure as a constrained Bayesian optimization problem, we show that the effects of this pathology can be mitigated, yielding marked improvements in the validity of the generated molecules. We posit that constrained Bayesian optimization is a good approach for solving this kind of training set mismatch in many generative tasks involving Bayesian optimization over the latent space of a variational autoencoder.
机译:自动化学设计是一种用于产生具有优化性能的新型分子的框架。原始方案,具有贝叶斯优化在变形自身额外的潜在空间上,遭受其往往产生无效分子结构的病理学。首先,我们经验证明这种病理学在贝叶斯优化方案查询远离变分性AutiCoder已经训练的数据远离的潜在空间点时出现这种情况。其次,通过将搜索程序的重新制定为受限制的贝叶斯优化问题,我们表明可以减轻该病理学的效果,从而产生产生的分子的有效性。我们对受限制的贝叶斯优化进行了一个良好的方法,可以解决这种培训设置错配的许多生成任务,涉及在变形自身叠层的潜在空间上的贝叶斯优化。

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