Linking Heterogeneous Data with Coordinated Agent Flows for Social Media Analysis
- URL: http://arxiv.org/abs/2510.26172v1
- Date: Thu, 30 Oct 2025 06:22:49 GMT
- Title: Linking Heterogeneous Data with Coordinated Agent Flows for Social Media Analysis
- Authors: Shifu Chen, Dazhen Deng, Zhihong Xu, Sijia Xu, Tai-Quan Peng, Yingcai Wu,
- Abstract summary: Social media platforms generate massive volumes of heterogeneous data.<n>We present SIA (Social Insight Agents), an agent system that links heterogeneous multi-modal data.<n>We show that SIA effectively discovers diverse and meaningful insights from social media.
- Score: 24.70488591952602
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Social media platforms generate massive volumes of heterogeneous data, capturing user behaviors, textual content, temporal dynamics, and network structures. Analyzing such data is crucial for understanding phenomena such as opinion dynamics, community formation, and information diffusion. However, discovering insights from this complex landscape is exploratory, conceptually challenging, and requires expertise in social media mining and visualization. Existing automated approaches, though increasingly leveraging large language models (LLMs), remain largely confined to structured tabular data and cannot adequately address the heterogeneity of social media analysis. We present SIA (Social Insight Agents), an LLM agent system that links heterogeneous multi-modal data -- including raw inputs (e.g., text, network, and behavioral data), intermediate outputs, mined analytical results, and visualization artifacts -- through coordinated agent flows. Guided by a bottom-up taxonomy that connects insight types with suitable mining and visualization techniques, SIA enables agents to plan and execute coherent analysis strategies. To ensure multi-modal integration, it incorporates a data coordinator that unifies tabular, textual, and network data into a consistent flow. Its interactive interface provides a transparent workflow where users can trace, validate, and refine the agent's reasoning, supporting both adaptability and trustworthiness. Through expert-centered case studies and quantitative evaluation, we show that SIA effectively discovers diverse and meaningful insights from social media while supporting human-agent collaboration in complex analytical tasks.
Related papers
- DataCross: A Unified Benchmark and Agent Framework for Cross-Modal Heterogeneous Data Analysis [8.171937411588015]
We introduce DataCross, a novel benchmark and collaborative agent framework for unified, insight-driven analysis.<n>DataCrossBench comprises 200 end-to-end analysis tasks across finance, healthcare, and other domains.<n>We also propose the DataCrossAgent framework, inspired by the "divide-and-synthesis" workflow of human analysts.
arXiv Detail & Related papers (2026-01-29T08:40:45Z) - CoDA: Agentic Systems for Collaborative Data Visualization [57.270599188947294]
Deep research has revolutionized data analysis, yet data scientists still devote substantial time to manually crafting visualizations.<n>Existing approaches, including simple single- or multi-agent systems, often oversimplify the task.<n>We introduce CoDA, a multi-agent system that employs specialized LLM agents for metadata analysis, task planning, code generation, and self-reflection.
arXiv Detail & Related papers (2025-10-03T17:30:16Z) - Autonomous Data Agents: A New Opportunity for Smart Data [50.02229219403014]
Report argues that DataAgents represent a paradigm shift toward autonomous data-to-knowledge systems.<n>DataAgents transform complex and unstructured data into coherent and actionable knowledge.<n>We first examine why the convergence of agentic AI and data-to-knowledge systems has emerged as a critical trend.
arXiv Detail & Related papers (2025-09-23T06:46:41Z) - Multi-Agent Data Visualization and Narrative Generation [1.935127147843886]
We present a lightweight multi-agent system that automates the data analysis workflow.<n>Our approach combines a hybrid multi-agent architecture with deterministic components, strategically externalizing critical logic.<n>The system delivers granular, modular outputs that enable surgical modifications without full regeneration.
arXiv Detail & Related papers (2025-08-30T12:39:55Z) - Deep Research Agents: A Systematic Examination And Roadmap [109.53237992384872]
Deep Research (DR) agents are designed to tackle complex, multi-turn informational research tasks.<n>In this paper, we conduct a detailed analysis of the foundational technologies and architectural components that constitute DR agents.
arXiv Detail & Related papers (2025-06-22T16:52:48Z) - Graphs Meet AI Agents: Taxonomy, Progress, and Future Opportunities [117.49715661395294]
Data structurization can play a promising role by transforming intricate and disorganized data into well-structured forms.<n>This survey presents a first systematic review of how graphs can empower AI agents.
arXiv Detail & Related papers (2025-06-22T12:59:12Z) - Collaborative Perception Datasets for Autonomous Driving: A Review [9.498615656347264]
Collaborative perception has attracted growing interest from academia and industry due to its potential to enhance perception accuracy, safety, and robustness in autonomous driving.<n>Numerous collaborative perception datasets have emerged, varying in cooperation paradigms, sensor configurations, data sources, and application scenarios.<n>As the first comprehensive review focused on collaborative perception datasets, this work reviews and compares existing resources from a multi-dimensional perspective.
arXiv Detail & Related papers (2025-04-17T06:49:21Z) - DISCOVER: A Data-driven Interactive System for Comprehensive Observation, Visualization, and ExploRation of Human Behaviour [6.716560115378451]
We introduce a modular, flexible, yet user-friendly software framework specifically developed to streamline computational-driven data exploration for human behavior analysis.
Our primary objective is to democratize access to advanced computational methodologies, thereby enabling researchers across disciplines to engage in detailed behavioral analysis without the need for extensive technical proficiency.
arXiv Detail & Related papers (2024-07-18T11:28:52Z) - CityGPT: Towards Urban IoT Learning, Analysis and Interaction with Multi-Agent System [4.612237040042468]
CityGPT employs three agents to accomplish thetemporal analysis of IoT data.
We have agnentized the framework, facilitated by a large language model (LLM), to increase the data comprehensibility.
Our evaluation results on real-world data with different time show that the CityGPT framework can guarantee robust performance in computing.
arXiv Detail & Related papers (2024-05-23T15:27:18Z) - Multi-Agent Dynamic Relational Reasoning for Social Robot Navigation [50.01551945190676]
Social robot navigation can be helpful in various contexts of daily life but requires safe human-robot interactions and efficient trajectory planning.
We propose a systematic relational reasoning approach with explicit inference of the underlying dynamically evolving relational structures.
We demonstrate its effectiveness for multi-agent trajectory prediction and social robot navigation.
arXiv Detail & Related papers (2024-01-22T18:58:22Z) - Co-Located Human-Human Interaction Analysis using Nonverbal Cues: A
Survey [71.43956423427397]
We aim to identify the nonverbal cues and computational methodologies resulting in effective performance.
This survey differs from its counterparts by involving the widest spectrum of social phenomena and interaction settings.
Some major observations are: the most often used nonverbal cue, computational method, interaction environment, and sensing approach are speaking activity, support vector machines, and meetings composed of 3-4 persons equipped with microphones and cameras, respectively.
arXiv Detail & Related papers (2022-07-20T13:37:57Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.