GAGPT and Its Application to the Interactive Learning of Geometric Algebra

IF 1.2 2区 数学 Q2 MATHEMATICS, APPLIED
Jian Wang, Pei Du, Zhuo Zhao, Wen Luo, Zhaoyuan Yu, Linwang Yuan
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引用次数: 0

Abstract

To address the challenges of high specialization and fragmented learning resources in Geometric Algebra (GA), this paper introduces a multi-task Geometric Algebraic Large Language Model (GAGPT), which is built upon a GA vector base, a GA knowledge graph, and a GA multi-tasking agent. Additionally, to facilitate interactive GA teaching, the paper proposes the development of two specialized agents: a GA knowledge Q&A agent and a GA interactive exercises agent. The GAGPT is equipped with comprehensive GA contextual background information by constructing a GA vector base from an extensively curated GA corpus. A GA Knowledge Graph is developed from the selected corpus to provide the model with the necessary GA rules. In the GA knowledge Q&A experiment, the accuracy of both formula-based and concept-based quizzes was improved by 46% and 42%, respectively, when compared to GPT-4o. Moreover, in the experiment involving the gradual generation of GA exercises, GAGPT demonstrated superior performance, while GPT-4o, despite utilizing the appropriate GA calculation formulas, made computational errors that led to incorrect results.

Abstract Image

GAGPT及其在几何代数交互式学习中的应用
为了解决几何代数(GA)中高度专业化和学习资源碎片化的挑战,本文引入了一种基于GA向量库、GA知识图和GA多任务代理的多任务几何代数大语言模型(GAGPT)。此外,为了便于交互式遗传算法教学,本文提出开发两个专门的智能体:遗传算法知识问答智能体和遗传算法交互练习智能体。GAGPT通过从广泛策划的GA语料库中构建GA向量库,配备了全面的GA上下文背景信息。从选择的语料库中生成遗传算法知识图,为模型提供所需的遗传算法规则。在GA知识问答A实验中,与gpt - 40相比,基于公式和基于概念的测验的准确性分别提高了46%和42%。此外,在逐步生成遗传算法习题的实验中,GAGPT表现出了优越的性能,而gpt - 40虽然使用了合适的遗传算法计算公式,但存在计算误差,导致结果不正确。
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来源期刊
Advances in Applied Clifford Algebras
Advances in Applied Clifford Algebras 数学-物理:数学物理
CiteScore
2.20
自引率
13.30%
发文量
56
审稿时长
3 months
期刊介绍: Advances in Applied Clifford Algebras (AACA) publishes high-quality peer-reviewed research papers as well as expository and survey articles in the area of Clifford algebras and their applications to other branches of mathematics, physics, engineering, and related fields. The journal ensures rapid publication and is organized in six sections: Analysis, Differential Geometry and Dirac Operators, Mathematical Structures, Theoretical and Mathematical Physics, Applications, and Book Reviews.
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