In nature, the process of cellular growth and differentiation has lead to an amazing diversity of organisms -- algae, starfish, giant sequoia, tardigrades, and orcas are all created by the same generative process. Inspired by the incredible diversity of this biological generative process, we propose a generative model, the Variational Neural Cellular Automata (VNCA), which is loosely inspired by the biological processes of cellular growth and differentiation. Unlike previous related works, the VNCA is a proper probabilistic generative model, and we evaluate it according to best practices. We find that the VNCA learns to reconstruct samples well and that despite its relatively few parameters and simple local-only communication, the VNCA can learn to generate a large variety of output from information encoded in a common vector format. While there is a significant gap to the current state-of-the-art in terms of generative modeling performance, we show that the VNCA can learn a purely self-organizing generative process of data. Additionally, we show that the VNCA can learn a distribution of stable attractors that can recover from significant damage.
翻译:在自然界,细胞生长和分化过程导致生物的惊人多样性 -- -- 藻类、海星、巨型尾鱼、沥青和虎鲸,它们都是由同一基因过程创造出来的。在这种生物基因化过程令人难以置信的多样性的启发下,我们提出了一个基因模型,即变形神经细胞自动模型(VNCA),这个模型不受细胞生长和分化的生物过程的启发。与以前的有关工程不同,VNCA是一个适当的概率基因化模型,我们根据最佳做法对它进行评估。我们发现VNCA学会了如何重建样品,尽管其参数相对较少,而且只在当地进行简单的交流,但VNCA学会了从一种共同病媒格式编码的信息中产生大量产出。虽然在基因化模型性能方面与目前最先进的工艺有很大差距,但我们表明VNCA可以学习一个纯粹自我组织的基因化的基因化过程。此外,我们证明VNCA可以学会从重大损坏中恢复稳定吸引器的分布。