首页> 外文会议>Conference on Neural Information Processing Systems >Discrete Object Generation with Reversible Inductive Construction
【24h】

Discrete Object Generation with Reversible Inductive Construction

机译:具有可逆电感施工的离散对象生成

获取原文

摘要

The success of generative modeling in continuous domains has led to a surge of interest in generating discrete data such as molecules, source code, and graphs. However, construction histories for these discrete objects are typically not unique and so generative models must reason about intractably large spaces in order to learn. Additionally, structured discrete domains are often characterized by strict constraints on what constitutes a valid object and generative models must respect these requirements in order to produce useful novel samples. Here, we present a generative model for discrete objects employing a Markov chain where transitions are restricted to a set of local operations that preserve validity. Building off of generative interpretations of denoising autoencoders, the Markov chain alternates between producing 1) a sequence of corrupted objects that are valid but not from the data distribution, and 2) a learned reconstruction distribution that attempts to fix the corruptions while also preserving validity. This approach constrains the generative model to only produce valid objects, requires the learner to only discover local modifications to the objects, and avoids marginalization over an unknown and potentially large space of construction histories. We evaluate the proposed approach on two highly structured discrete domains, molecules and Laman graphs, and find that it compares favorably to alternative methods at capturing distributional statistics for a host of semantically relevant metrics.
机译:在连续域中的生成建模的成功导致对生成分子,源代码和图形等离散数据的感兴趣的兴趣。然而,这些离散物体的施工历史通常不是独特的,因此生成模型必须推理涉及大型空间以便学习。此外,结构的离散域通常是严格限制构成有效对象的严格限制,并且生成模型必须尊重这些要求以产生有用的新型样本。这里,我们为采用马尔可夫链的离散对象提供了一种生成模型,其中转换被限制为保护有效性的一组本地操作。建立了去噪的生成解释,Markov链在制作1)之间交替,其中一系列损坏的物体序列,无效,但不是来自数据分布,而2)试图解决损坏的学习重建分布,同时保留有效期。该方法限制了生成模型仅生成有效对象,要求学习者只发现对象的本地修改,并避免对施工历史的未知和潜在的大空间的边缘化。我们在两个高度结构的离散域,分子和Laman图上评估了所提出的方法,并发现它可以比较捕获了一系列语义相关度量的分布统计的替代方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号