Seeing the forest and the tree: Building representations of both individual and collective dynamics with transformers.

Ran Liu, Mehdi Azabou, Max Dabagia, Jingyun Xiao, Eva L Dyer
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Abstract

Complex time-varying systems are often studied by abstracting away from the dynamics of individual components to build a model of the population-level dynamics from the start. However, when building a population-level description, it can be easy to lose sight of each individual and how they contribute to the larger picture. In this paper, we present a novel transformer architecture for learning from time-varying data that builds descriptions of both the individual as well as the collective population dynamics. Rather than combining all of our data into our model at the onset, we develop a separable architecture that operates on individual time-series first before passing them forward; this induces a permutation-invariance property and can be used to transfer across systems of different size and order. After demonstrating that our model can be applied to successfully recover complex interactions and dynamics in many-body systems, we apply our approach to populations of neurons in the nervous system. On neural activity datasets, we show that our model not only yields robust decoding performance, but also provides impressive performance in transfer across recordings of different animals without any neuron-level correspondence. By enabling flexible pre-training that can be transferred to neural recordings of different size and order, our work provides a first step towards creating a foundation model for neural decoding.

看到森林和树木:用变压器建立个人和集体动态的表示。
研究复杂的时变系统时,通常从单个组成部分的动态抽象出来,从一开始就建立一个群体水平的动态模型。然而,当建立一个人口水平的描述时,很容易忽略每个个体以及他们如何对更大的图景做出贡献。在本文中,我们提出了一种新的变压器架构,用于从时变数据中学习,该架构可以构建个体和集体种群动态的描述。我们不是一开始就把所有的数据合并到我们的模型中,而是开发了一个可分离的架构,在传递它们之前先对单个时间序列进行操作;这就产生了一种置换不变性,可以用于在不同大小和顺序的系统之间进行传输。在证明我们的模型可以成功地应用于恢复多体系统中复杂的相互作用和动力学之后,我们将我们的方法应用于神经系统中的神经元种群。在神经活动数据集上,我们表明我们的模型不仅产生了强大的解码性能,而且在没有任何神经元级别对应的情况下,在不同动物的记录之间传输也提供了令人印象深刻的性能。通过实现灵活的预训练,可以转移到不同大小和顺序的神经记录,我们的工作为创建神经解码的基础模型提供了第一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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