A Multi-Agent Rhizomatic Pipeline for Non-Linear Literature Analysis
arXiv cs.AI / 3/31/2026
💬 OpinionIdeas & Deep AnalysisTools & Practical UsageModels & Research
Key Points
- The paper argues that traditional, hierarchical (arborescent) systematic literature reviews in the social sciences miss lateral links, disruptions, and emergent patterns present in complex research landscapes.
- It introduces the Rhizomatic Research Agent (V3), a multi-agent, seven-phase pipeline that operationalizes six “rhizome” principles for non-linear literature analysis.
- The system uses LLM orchestration with dual-source corpus ingestion from OpenAlex and arXiv, SciBERT for semantic mapping, and dynamic “rupture” detection to identify cross-disciplinary convergences and research gaps.
- The authors report preliminary deployments that suggest the pipeline can uncover structural gaps overlooked by conventional review methods.
- The pipeline is released as open-source and is designed to be extensible to other domains requiring non-linear knowledge mapping.
Related Articles

Black Hat USA
AI Business

Black Hat Asia
AI Business

Anthropic's Accidental Release of Claude Code's Source Code: Irretrievable and Publicly Accessible
Dev.to

Salesforce announces an AI-heavy makeover for Slack, with 30 new features
TechCrunch

Claude Code's Compaction Engine: What the Source Code Actually Reveals
Dev.to