A Multi-Agent Rhizomatic Pipeline for Non-Linear Literature Analysis

arXiv cs.AI / 3/31/2026

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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.

Abstract

Systematic literature reviews in the social sciences overwhelmingly follow arborescent logics -- hierarchical keyword filtering, linear screening, and taxonomic classification -- that suppress the lateral connections, ruptures, and emergent patterns characteristic of complex research landscapes. This research note presents the Rhizomatic Research Agent (V3), a multi-agent computational pipeline grounded in Deleuzian process-relational ontology, designed to conduct non-linear literature analysis through 12 specialized agents operating across a seven-phase architecture. The system was developed in response to the methodological groundwork established by (Narayan2023), who employed rhizomatic inquiry in her doctoral research on sustainable energy transitions but relied on manual, researcher-driven exploration. The Rhizomatic Research Agent operationalizes the six principles of the rhizome -- connection, heterogeneity, multiplicity, asignifying rupture, cartography, and decalcomania -- into an automated pipeline integrating large language model (LLM) orchestration, dual-source corpus ingestion from OpenAlex and arXiv, SciBERT semantic topography, and dynamic rupture detection protocols. Preliminary deployment demonstrates the system's capacity to surface cross-disciplinary convergences and structural research gaps that conventional review methods systematically overlook. The pipeline is open-source and extensible to any phenomenon zone where non-linear knowledge mapping is required.