计算机使用前概念模式解释知识表示:基于 BERT 和 Llama 2-Chat 模型的方法

IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Big Data and Cognitive Computing Pub Date : 2023-12-14 DOI:10.3390/bdcc7040182
Jesus Insuasti, Felipe Roa, C. M. Zapata-Jaramillo
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引用次数: 0

摘要

前概念图式是使用受控语言表示知识的一种直接方法,不受上下文的影响。尽管人类使用前概念图式有很多好处,但在由计算机解释时却面临着挑战。我们提出了一种方法,让计算机能够解释人类的基本前概念图式。为此,需要构建一个语言语料库,以便与大型语言模型--LLM 协同工作。该语言语料库主要使用纳里尼奥大学数字资料库中的硕士和博士论文,为重新训练 BERT 模型提供训练数据集;此外,我们还使用自然语言处理领域最先进的大型语言模型之一,对前概念图式中的三元组句子进行解释,以此作为补充:此外,我们还利用自然语言处理领域最前沿的大型语言模型之一:Meta AI 公司的 Llama 2-Chat,来解释前概念图式中的三元组句子。这些论文所涉及的不同主题使我们能够扩大 BERT 模型的语言使用范围,并利用经过微调的 Llama 2-Chat 模型和建议的解决方案增强生成能力。因此,我们建立了第一个版本的计算解决方案,以使用基于 BERT 和 Llama 2-Chat 的语言模型,从而由计算机通过自然语言处理自动解释预概念模式,同时增加生成能力。计算解决方案的验证分两个阶段进行:第一阶段是检测句子,并与形式语言和自动机理论课程(纳里尼奥大学图马科校区系统工程本科课程的第七学期)的学生就前概念模式进行互动。第二阶段是探索基于前概念模式的生成能力;第二阶段是与面向对象设计课程(纳里尼奥大学图马科校区系统工程本科课程的第二学期)的学生一起进行。在使用 BERT 和 Llama 2-Chat 模型进行自然语言处理的过程中,这一验证取得了良好的结果。通过这种方式,为今后与该研究课题相关的发展奠定了一些基础。
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Computers’ Interpretations of Knowledge Representation Using Pre-Conceptual Schemas: An Approach Based on the BERT and Llama 2-Chat Models
Pre-conceptual schemas are a straightforward way to represent knowledge using controlled language regardless of context. Despite the benefits of using pre-conceptual schemas by humans, they present challenges when interpreted by computers. We propose an approach to making computers able to interpret the basic pre-conceptual schemas made by humans. To do that, the construction of a linguistic corpus is required to work with large language models—LLM. The linguistic corpus was mainly fed using Master’s and doctoral theses from the digital repository of the University of Nariño to produce a training dataset for re-training the BERT model; in addition, we complement this by explaining the elicited sentences in triads from the pre-conceptual schemas using one of the cutting-edge large language models in natural language processing: Llama 2-Chat by Meta AI. The diverse topics covered in these theses allowed us to expand the spectrum of linguistic use in the BERT model and empower the generative capabilities using the fine-tuned Llama 2-Chat model and the proposed solution. As a result, the first version of a computational solution was built to consume the language models based on BERT and Llama 2-Chat and thus automatically interpret pre-conceptual schemas by computers via natural language processing, adding, at the same time, generative capabilities. The validation of the computational solution was performed in two phases: the first one for detecting sentences and interacting with pre-conceptual schemas with students in the Formal Languages and Automata Theory course—the seventh semester of the systems engineering undergraduate program at the University of Nariño’s Tumaco campus. The second phase was for exploring the generative capabilities based on pre-conceptual schemas; this second phase was performed with students in the Object-oriented Design course—the second semester of the systems engineering undergraduate program at the University of Nariño’s Tumaco campus. This validation yielded favorable results in implementing natural language processing using the BERT and Llama 2-Chat models. In this way, some bases were laid for future developments related to this research topic.
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来源期刊
Big Data and Cognitive Computing
Big Data and Cognitive Computing Business, Management and Accounting-Management Information Systems
CiteScore
7.10
自引率
8.10%
发文量
128
审稿时长
11 weeks
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