Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Can Graph Descriptive Order Affect Solving Graph Problems with LLMs?

View through CrossRef
Large language models (LLMs) have achieved significant success in reasoning tasks, including mathematical reasoning and logical deduction. Among these reasoning tasks, graph problems stand out due to their complexity and unique structural characteristics, attracting considerable attention from researchers. Previous studies have explored LLMs' graph reasoning abilities through various techniques, such as different encoding methods for graph structures and the use of carefully designed prompts. However, a critical factor has been mostly overlooked: the prompt sequential order in which graph descriptions are presented to the models. In this study, we present the first comprehensive analysis of how the order of graph descriptions impacts LLM performance. Specifically, we comprehensively evaluate four graph description orders across six graph problems using six mainstream LLMs. The results reveal that: (1) ordered graph descriptions significantly improve LLMs' comprehension of graph structures; (2) the robustness of LLMs to graph description order varies across different tasks; and (3) the impact of graph order on performance is closely related to the inherent characteristics of tasks. This study provides a critical advancement in the application of LLMs for solving graph-related problems, paving the way for future research to optimize model performance through strategic graph description ordering.
Title: Can Graph Descriptive Order Affect Solving Graph Problems with LLMs?
Description:
Large language models (LLMs) have achieved significant success in reasoning tasks, including mathematical reasoning and logical deduction.
Among these reasoning tasks, graph problems stand out due to their complexity and unique structural characteristics, attracting considerable attention from researchers.
Previous studies have explored LLMs' graph reasoning abilities through various techniques, such as different encoding methods for graph structures and the use of carefully designed prompts.
However, a critical factor has been mostly overlooked: the prompt sequential order in which graph descriptions are presented to the models.
In this study, we present the first comprehensive analysis of how the order of graph descriptions impacts LLM performance.
Specifically, we comprehensively evaluate four graph description orders across six graph problems using six mainstream LLMs.
The results reveal that: (1) ordered graph descriptions significantly improve LLMs' comprehension of graph structures; (2) the robustness of LLMs to graph description order varies across different tasks; and (3) the impact of graph order on performance is closely related to the inherent characteristics of tasks.
This study provides a critical advancement in the application of LLMs for solving graph-related problems, paving the way for future research to optimize model performance through strategic graph description ordering.

Related Results

Exploring Large Language Models Integration in the Histopathologic Diagnosis of Skin Diseases: A Comparative Study
Exploring Large Language Models Integration in the Histopathologic Diagnosis of Skin Diseases: A Comparative Study
Abstract Introduction The exact manner in which large language models (LLMs) will be integrated into pathology is not yet fully comprehended. This study examines the accuracy, bene...
Perspectives and Experiences With Large Language Models in Health Care: Survey Study (Preprint)
Perspectives and Experiences With Large Language Models in Health Care: Survey Study (Preprint)
BACKGROUND Large language models (LLMs) are transforming how data is used, including within the health care sector. However, frameworks including the Unifie...
Perspectives and Experiences With Large Language Models in Health Care: Survey Study
Perspectives and Experiences With Large Language Models in Health Care: Survey Study
Background Large language models (LLMs) are transforming how data is used, including within the health care sector. However, frameworks including the Unified Th...
GraphICL: Unlocking Graph Learning Potential in LLMs through Structured Prompt Design
GraphICL: Unlocking Graph Learning Potential in LLMs through Structured Prompt Design
The growing importance of textual and relational systems has driven interest in enhancing large language models (LLMs) for graph-structured data, particularly Text-Attributed Graph...
A Systematic Review of ChatGPT and Other Conversational Large Language Models in Healthcare
A Systematic Review of ChatGPT and Other Conversational Large Language Models in Healthcare
Abstract Background The launch of the Chat Generative Pre-trained Transformer (ChatGPT) in November 2022 has attracted public a...
RingChains Graph-based Summarizer and Enhanced Large Language Models for Summarizing Long Documents
RingChains Graph-based Summarizer and Enhanced Large Language Models for Summarizing Long Documents
Large language models (LLMs) have influenced real-world applications after ChatGPT appeared. Although powerful LLMs produce high quality summaries, it remains challenging for LLMs ...
LLMs and AI: Understanding Its Reach and Impact
LLMs and AI: Understanding Its Reach and Impact
Large Language Models (LLMs) have revolutionized the field of Artificial Intelligence with their ability to understand and generate natural language discourse. This has led to the ...
Analisis Kebutuhan Modul Matematika untuk Meningkatkan Kemampuan Pemecahan Masalah Siswa SMP N 4 Batang
Analisis Kebutuhan Modul Matematika untuk Meningkatkan Kemampuan Pemecahan Masalah Siswa SMP N 4 Batang
Pemecahan masalah merupakan suatu usaha untuk menyelesaikan masalah matematika menggunakan pemahaman yang telah dimilikinya. Siswa yang mempunyai kemampuan pemecahan masalah rendah...

Back to Top