基于扩散的离散潜在代码生成神经活动

Jonathan D. McCart, Andrew R. Sedler, Christopher Versteeg, Domenick Mifsud, Mattia Rigotti-Thompson, Chethan Pandarinath
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引用次数: 0

摘要

记录技术的最新进展使神经科学家能够同时监测数千个神经元的活动。潜变量模型对于将这些记录提炼成紧凑、可解释的表征越来越有价值。在这里,我们提出了一种新的神经数据分析方法,利用条件生成模型的进步,在无监督的情况下从记录的神经活动中推断出分离的行为变量。我们的方法建立在信息扩散(InfoDiffusion)的基础上,它通过一组捕捉数据中重要变化因素的潜在变量来增强扩散模型。我们将这个名为 "以高信息编码为条件生成神经观测值(GNOCCHI)"的模型应用于时序神经数据,并测试了它在伸手过程中神经活动的合成和生物记录中的应用。与基于 VAE 的序列自动编码器相比,GNOCCHI 能学习到更高质量的潜在空间,这些空间结构更清晰,与关键行为变量的关系更分散。通过简单地线性遍历 GNOCCHI 生成的潜空间,这些特性可以准确生成新样本(未见过的行为条件)。我们的工作证明了基于信息的无监督模型在从神经数据中发现可解释的潜在空间方面的潜力,使研究人员能够从未曾见过的条件中生成高质量的样本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diffusion-Based Generation of Neural Activity from Disentangled Latent Codes
Recent advances in recording technology have allowed neuroscientists to monitor activity from thousands of neurons simultaneously. Latent variable models are increasingly valuable for distilling these recordings into compact and interpretable representations. Here we propose a new approach to neural data analysis that leverages advances in conditional generative modeling to enable the unsupervised inference of disentangled behavioral variables from recorded neural activity. Our approach builds on InfoDiffusion, which augments diffusion models with a set of latent variables that capture important factors of variation in the data. We apply our model, called Generating Neural Observations Conditioned on Codes with High Information (GNOCCHI), to time series neural data and test its application to synthetic and biological recordings of neural activity during reaching. In comparison to a VAE-based sequential autoencoder, GNOCCHI learns higher-quality latent spaces that are more clearly structured and more disentangled with respect to key behavioral variables. These properties enable accurate generation of novel samples (unseen behavioral conditions) through simple linear traversal of the latent spaces produced by GNOCCHI. Our work demonstrates the potential of unsupervised, information-based models for the discovery of interpretable latent spaces from neural data, enabling researchers to generate high-quality samples from unseen conditions.
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