Torchtree: flexible phylogenetic model development and inference using PyTorch

Mathieu Fourment, Matthew Macaulay, Christiaan J Swanepoel, Xiang Ji, Marc A Suchard, Frederick A Matsen IV
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Abstract

Bayesian inference has predominantly relied on the Markov chain Monte Carlo (MCMC) algorithm for many years. However, MCMC is computationally laborious, especially for complex phylogenetic models of time trees. This bottleneck has led to the search for alternatives, such as variational Bayes, which can scale better to large datasets. In this paper, we introduce torchtree, a framework written in Python that allows developers to easily implement rich phylogenetic models and algorithms using a fixed tree topology. One can either use automatic differentiation, or leverage torchtree's plug-in system to compute gradients analytically for model components for which automatic differentiation is slow. We demonstrate that the torchtree variational inference framework performs similarly to BEAST in terms of speed and approximation accuracy. Furthermore, we explore the use of the forward KL divergence as an optimizing criterion for variational inference, which can handle discontinuous and non-differentiable models. Our experiments show that inference using the forward KL divergence tends to be faster per iteration compared to the evidence lower bound (ELBO) criterion, although the ELBO-based inference may converge faster in some cases. Overall, torchtree provides a flexible and efficient framework for phylogenetic model development and inference using PyTorch.
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Torchtree:使用 PyTorch 进行灵活的系统发生模型开发和推断
多年来,贝叶斯推断主要依赖于马尔科夫链蒙特卡罗(MCMC)算法。然而,MCMC 计算起来非常费力,尤其是对于复杂的时间树系统发育模型。这一瓶颈导致人们开始寻找能更好地扩展到大型数据集的替代算法,如变异贝叶斯算法。在本文中,我们介绍了 torchtree,这是一个用 Python 编写的框架,允许开发人员使用固定的树拓扑结构轻松实现丰富的系统发育模型和算法。我们证明了 torchtree 变分推理框架在速度和近似精度方面的表现与 BEAST 相似。此外,我们还探索了使用前向 KL 发散作为变量推理的优化准则,它可以处理不连续和不可微分模型。我们的实验表明,与证据下限(ELBO)准则相比,使用前向 KL 发散进行推理的每次迭代速度更快,尽管基于 ELBO 的推理在某些情况下收敛得更快。
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