TL;DR
This paper systematically reviews how graph structures can enhance AI agents by improving data organization, reasoning, and interaction capabilities, highlighting current progress and future research directions.
Contribution
It provides the first comprehensive survey of integrating graph techniques with AI agents, emphasizing applications and future opportunities in this emerging area.
Findings
Graphs effectively organize complex data for AI agents.
Graph-based methods improve agent reasoning and interaction.
The survey identifies promising future research directions.
Abstract
AI agents have experienced a paradigm shift, from early dominance by reinforcement learning (RL) to the rise of agents powered by large language models (LLMs), and now further advancing towards a synergistic fusion of RL and LLM capabilities. This progression has endowed AI agents with increasingly strong abilities. Despite these advances, to accomplish complex real-world tasks, agents are required to plan and execute effectively, maintain reliable memory, and coordinate smoothly with other agents. Achieving these capabilities involves contending with ever-present intricate information, operations, and interactions. In light of this challenge, data structurization can play a promising role by transforming intricate and disorganized data into well-structured forms that agents can more effectively understand and process. In this context, graphs, with their natural advantage in organizing,…
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