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Main Authors: Claypoole, Jared, Gong, Yunye, Yanofsky, Noson S., Divakaran, Ajay
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.21553
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author Claypoole, Jared
Gong, Yunye
Yanofsky, Noson S.
Divakaran, Ajay
author_facet Claypoole, Jared
Gong, Yunye
Yanofsky, Noson S.
Divakaran, Ajay
contents We apply category theory to extract multimodal document structure which leads us to develop information theoretic measures, content summarization and extension, and self-supervised improvement of large pretrained models. We first develop a mathematical representation of a document as a category of question-answer pairs. Second, we develop an orthogonalization procedure to divide the information contained in one or more documents into non-overlapping pieces. The structures extracted in the first and second steps lead us to develop methods to measure and enumerate the information contained in a document. We also build on those steps to develop new summarization techniques, as well as to develop a solution to a new problem viz. exegesis resulting in an extension of the original document. Our question-answer pair methodology enables a novel rate distortion analysis of summarization techniques. We implement our techniques using large pretrained models, and we propose a multimodal extension of our overall mathematical framework. Finally, we develop a novel self-supervised method using RLVR to improve large pretrained models using consistency constraints such as composability and closure under certain operations that stem naturally from our category theoretic framework.
format Preprint
id arxiv_https___arxiv_org_abs_2510_21553
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Document Understanding, Measurement, and Manipulation Using Category Theory
Claypoole, Jared
Gong, Yunye
Yanofsky, Noson S.
Divakaran, Ajay
Computation and Language
Machine Learning
We apply category theory to extract multimodal document structure which leads us to develop information theoretic measures, content summarization and extension, and self-supervised improvement of large pretrained models. We first develop a mathematical representation of a document as a category of question-answer pairs. Second, we develop an orthogonalization procedure to divide the information contained in one or more documents into non-overlapping pieces. The structures extracted in the first and second steps lead us to develop methods to measure and enumerate the information contained in a document. We also build on those steps to develop new summarization techniques, as well as to develop a solution to a new problem viz. exegesis resulting in an extension of the original document. Our question-answer pair methodology enables a novel rate distortion analysis of summarization techniques. We implement our techniques using large pretrained models, and we propose a multimodal extension of our overall mathematical framework. Finally, we develop a novel self-supervised method using RLVR to improve large pretrained models using consistency constraints such as composability and closure under certain operations that stem naturally from our category theoretic framework.
title Document Understanding, Measurement, and Manipulation Using Category Theory
topic Computation and Language
Machine Learning
url https://arxiv.org/abs/2510.21553