Algebraic Dynamical Systems in Machine Learning

IF 0.6 4区 数学 Q3 MATHEMATICS
Iolo Jones, Jerry Swan, Jeffrey Giansiracusa
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引用次数: 0

Abstract

We introduce an algebraic analogue of dynamical systems, based on term rewriting. We show that a recursive function applied to the output of an iterated rewriting system defines a formal class of models into which all the main architectures for dynamic machine learning models (including recurrent neural networks, graph neural networks, and diffusion models) can be embedded. Considered in category theory, we also show that these algebraic models are a natural language for describing the compositionality of dynamic models. Furthermore, we propose that these models provide a template for the generalisation of the above dynamic models to learning problems on structured or non-numerical data, including ‘hybrid symbolic-numeric’ models.

机器学习中的代数动态系统
摘要 我们介绍了基于术语重写的动态系统代数类似物。我们证明,应用于迭代重写系统输出的递归函数定义了一类正式的模型,所有主要的动态机器学习模型架构(包括递归神经网络、图神经网络和扩散模型)都可以嵌入其中。考虑到范畴理论,我们还证明这些代数模型是描述动态模型组成性的自然语言。此外,我们还提出,这些模型为上述动态模型推广到结构化或非数值数据的学习问题(包括 "符号-数值混合 "模型)提供了模板。
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来源期刊
CiteScore
1.30
自引率
16.70%
发文量
29
审稿时长
>12 weeks
期刊介绍: Applied Categorical Structures focuses on applications of results, techniques and ideas from category theory to mathematics, physics and computer science. These include the study of topological and algebraic categories, representation theory, algebraic geometry, homological and homotopical algebra, derived and triangulated categories, categorification of (geometric) invariants, categorical investigations in mathematical physics, higher category theory and applications, categorical investigations in functional analysis, in continuous order theory and in theoretical computer science. In addition, the journal also follows the development of emerging fields in which the application of categorical methods proves to be relevant. Applied Categorical Structures publishes both carefully refereed research papers and survey papers. It promotes communication and increases the dissemination of new results and ideas among mathematicians and computer scientists who use categorical methods in their research.
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