CLAINov 27, 2023

Optimizing and Fine-tuning Large Language Model for Urban Renewal

arXiv:2311.15490v110 citationsh-index: 24
Originality Synthesis-oriented
AI Analysis

It addresses the need for specialized AI tools in urban renewal planning, though it is incremental as it builds on existing fine-tuning techniques.

This study tackled the problem of adapting large language models for urban renewal knowledge question-answering by proposing a joint fine-tuning method using Prefix and LoRA on ChatGLM, resulting in improvements of about 5% over LoRA alone and 15%-20% over the base model on Bleu and Rouge metrics.

This study aims to innovatively explore adaptive applications of large language models (LLM) in urban renewal. It also aims to improve its performance and text generation quality for knowledge question-answering (QA) tasks. Based on the ChatGLM, we automatically generate QA datasets using urban renewal scientific literature corpora in a self-instruct manner and then conduct joint fine-tuning training on the model using the Prefix and LoRA fine-tuning methods to create an LLM for urban renewal. By guiding the LLM to automatically generate QA data based on prompt words and given text, it is possible to quickly obtain datasets in the urban renewal field and provide data support for the fine-tuning training of LLMs. The experimental results show that the joint fine-tuning training method proposed in this study can significantly improve the performance of LLM on the QA tasks. Compared with LoRA fine-tuning, the method improves the Bleu and Rouge metrics on the test by about 5%; compared with the model before fine-tuning, the method improves the Bleu and Rouge metrics by about 15%-20%. This study demonstrates the effectiveness and superiority of the joint fine-tuning method using Prefix and LoRA for ChatGLM in the urban renewal knowledge QA tasks. It provides a new approach for fine-tuning LLMs on urban renewal-related tasks.

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