Causal mapping teams globally (last 15 years: 2011-2026)#
Inclusion rule used here: records from 2011 onward that are clearly causal-mapping work (or close adjacent approaches used to build causal maps), starting from zotero-bib and then filtering out obvious noise.
| Date of most recent publication | Team members | Location / institution | Papers (title, year, citekey) | What they call the approach | Key methods / fit to categorisation / AI use | Primary evidence source mode | Multi-source handling style | Maturity / status | Tooling stack |
|---|---|---|---|---|---|---|---|---|---|
| 2026 | Vanessa Hammond; Joseph Lea (plus collaborators) | City of Casey, Melbourne (Australia) context; institution not explicit in record | Where to Start? Participatory Systems Mapping for Place-Based Service Integration in the City of Casey (2026) Hammond et al. (2026) |
Participatory Systems Mapping (PSM) | Group co-production of causal loop maps; strong fit with group map-building and complexity-aware analysis; uses network metrics + Action Scales; no direct AI in method | Group workshops | Aggregated group map with facilitated consensus | Preprint | Workshop facilitation + network analysis |
| 2025 | Steve Powell; Gabriele Caldas Cabral; Fiona Remnant; James Copestake; Heather Britt; Rebekah Avard; co-authors | Causal Map / Causal Pathways ecosystem; some records do not specify formal affiliations | AI-assisted Causal Mapping: A Validation Study (2025) Powell & Caldas Cabral (2025); Qualitative Causal Mapping in Evaluations (2025) Remnant et al. (2025); Strengthening Outcome Harvesting with AI-assisted Causal Mapping (2025) Britt et al. (2025); Causal Mapping for Evaluators (2024) Powell et al. (2024); An M&E Time Machine (2024) Powell et al. (2024); Does Our Theory Match Your Theory? (2023) Powell et al. (2023); Measuring the Women’s Economic Empowerment... testing QuIP (2022) Avard et al. (2022); Chapter 1 Overview | Guide to Causal Mapping (2022) Powell et al. (2022); Guide to Causal Mapping (2021) Powell & Ltd. (2021); From Narrative Text to Causal Maps (2021) Remnant (2021) |
Causal mapping; AI-assisted causal mapping; causal QDA; QuIP evidence synthesis | Strong fit with document/interview coding, open elicitation, provenance-explicit multi-source synthesis; explicit separation of evidence assembly vs evaluative judgement; substantial AI support for low-level coding/extraction | Narrative interviews, documents, mixed | Explicit provenance and source-thread logic; map-as-evidence-repository approach | Peer-reviewed + chapter + guidance + report + preprint | Causal Map software + LLM-assisted coding/extraction |
| 2025 | Jordan White; Pete Barbrook-Johnson | Institute for New Economic Thinking (University of Oxford); CECAN / University of Surrey | Guidance on Using Large Language Models to Extract Cause-and-Effect Pairs from Texts for Systems Mapping (2025) White & Barbrook-Johnson (n.d.) |
Systems mapping with LLM extraction | Fit with document coding + semi-automation; uses LLM prompts to extract cause-effect pairs then build preliminary maps for later human refinement | Documents/text corpora | Aggregated extraction over multiple texts; human validation step | Report/guidance | GPT-based extraction + external mapping tools (e.g., PRSM) |
| 2024 | Fran Ackermann; Colin Eden; James Alexander; Eunice Maytorena-Sanchez | Project studies / management lineage; institutions not explicit in these records | Overlooked and Underused? (2024) Ackermann & Maytorena-Sanchez (2024); Researching Complex Projects (2016) Ackermann & Alexander (2016); Using Causal Mapping to Support Information Systems Development (2011) Ackermann & Eden (2011) |
Causal mapping for projects and IS development | Fit with individual/group elicitation, document-supported mapping, and idiographic systemic analysis; strong continuity from 2011 to 2024; AI not central | Interviews, workshops, documents | Comparative and synthetic use across sources | Peer-reviewed articles | Decision Explorer / Group Explorer + manual coding |
| 2023 | Rory Hooper; Nihit Goyal; Kornelis Blok; Lisa Scholten | Institution not explicit in record (policy evidence synthesis context) | A Semi-Automated Approach to Policy-Relevant Evidence Synthesis (2023) Hooper (2023) |
Semi-automated causal mapping for policy evidence synthesis | Hybrid NLP + causal mapping + graph analytics; fit with document coding and multi-source synthesis; AI used directly for extraction pipeline | Policy/research documents | Aggregated multi-document synthesis | Preprint | NLP pipeline + graph analytics + causal-map post-processing |
| 2025 | Philippe Giabbanelli; Tyler Gandee; Ameeta Agrawal; Niyousha Hosseinichimeh | Applied ontology / systems mapping | Benchmarking and Assessing Transformations Between Text and Causal Maps via Large Language Models (2025) Giabbanelli et al. (2025) |
Text-to-map and map-to-text for causal maps | Benchmarking and evaluation datasets for LLM transformation between prose and causal maps; AI core method | Documents and causal-map corpora | Multi-dataset benchmark aggregation | Peer-reviewed article | LLMs + benchmark notebooks/metrics |
| 2025 | Melissa Valdivia Cabrera; Michael Johnstone; Joshua Hayward; Kristy Bolton; Douglas Creighton | Community health systems modelling | Integration of Large-Scale Community-Developed Causal Loop Diagrams... NLP Approach (2025) Valdivia Cabrera et al. (2025); foundational merge workflow in Hayward et al. (2020) |
NLP-assisted CLD factor merging | Semantic similarity / NLP used to merge community-generated CLD factors at scale; strong fit with multi-source map integration | Participatory CLDs + associated text labels | Aggregated map integration across communities | Peer-reviewed articles | NLP semantic matching + network analysis/DEMATEL |
| 2024 | Raquel Buzogany; Birgit Kopainsky; Paulo Goncalves | System Dynamics Review / policy narrative analysis | Developing Theoretically Grounded Causal Maps to Examine and Improve Policy Narratives (2024) Buzogany et al. (2024) |
Theoretically grounded causal maps / CLDs | Grounded-theory coding from qualitative corpora into CLDs; fit with document coding and policy narrative synthesis | Policy and academic texts | Aggregated cross-domain causal synthesis | Peer-reviewed article | Qualitative coding + CLD modelling |
| 2024 | Mohammad S. Jalali; Ali Akhavan | System Dynamics Review | Integrating AI Language Models in Qualitative Research (2024) Jalali & Akhavan (2024) |
AI-assisted replication of interview analysis | ChatGPT-assisted replication of interview-to-CLD analysis; AI used as augmentative analyst | Interview transcripts | Replication against prior coded analyses | Peer-reviewed article | ChatGPT-assisted qualitative coding |
| 2023 | Charlotte Matthews; Will Airey; Fiona Remnant; Aurelie Charles | University of Bath / local SDG evaluation context | The Dynamics of the UN Voluntary Local Review Using Causal Mapping... (2023) Matthews et al. (2023) |
Causal mapping for SDG VLR analysis | Cross-SDG causal mapping to identify leverage points and stakeholders in local policy; fit with document + stakeholder synthesis | VLR documents + stakeholder evidence | Within-goal and across-goal map synthesis | Applied report | Causal Map workflow + policy analysis |
| 2022 | Pete Barbrook-Johnson; Alexandra Penn; Helen Wilkinson; Dione Hills (overlapping collaborators) | UK policy/evaluation systems-mapping community (institutions not always explicit in these records) | Participatory Systems Mapping for Complex Energy Policy Evaluation (2021) Barbrook-Johnson & Penn (2021); Building a System-Based Theory of Change Using Participatory Systems Mapping (2021) Wilkinson et al. (2021); Participatory Systems Mapping (2022) Barbrook-Johnson & Penn (2022); Running Systems Mapping Workshops (2022) Barbrook-Johnson & Penn (2022); Participatory Systems Mapping in Action (2020) Mapping & Incentive (2020) |
Participatory systems mapping; system-based ToC | Strong fit with group map-building, open elicitation, and translation from cyclic systems maps to evaluable ToC submaps; AI generally not central in core 2021-2022 method papers | Group workshops (plus some supporting docs) | Consensus-built maps with subgroup/submap analysis | Peer-reviewed + handbook chapters + practice case | Workshop facilitation + network/submap analysis |
| 2022 | Jie Yang; Soyeon Caren Han; Josiah Poon | AI-NLP causality extraction community | A Survey on Extraction of Causal Relations from Natural Language Text (2022) Yang et al. (2022) |
Causal relation extraction from text | Survey of knowledge-based, ML, and deep-learning pipelines for extracting cause-effect links; strong document coding / text-to-causal-link relevance | Text corpora | Cross-dataset method synthesis | Peer-reviewed article | NLP extraction pipelines |
| 2020 | Luke Craven (method lineage) | Systems/evaluation research | System Effects: A Hybrid Methodology for Exploring the Determinants of Food In/Security (2017) Craven (2017); Improving the Health, Wellbeing... (2020) Craven (2020) |
System Effects (hybrid SSM + FCM + graph analysis) | Fit with participant-derived maps + aggregate structural analysis across cases; no direct AI core component | Interviews/workshops + synthesis | Aggregated comparative map structures | Peer-reviewed + applied report | FCM + graph-theoretic analysis |
| 2020 | Steven E. Wallis (plus prior collaborators in IPA lineage) | Institution not explicit in record | Integrative Propositional Analysis for Developing Capacity... (2020) Wallis (2020) |
Integrative Propositional Analysis (IPA) | Causal propositions mapped and scored structurally (breadth/systemicity); fits analysis-heavy map evaluation rather than pure elicitation; AI not central | Strategic documents/propositions | Integrated conceptual synthesis | Peer-reviewed article | Manual proposition extraction + structural metrics |
| 2020 | Sasha Strelnikoff; Aruna Jammalamadaka; Dana Warmsley | Institution not explicit in record | Causal Maps for Multi-Document Summarization (2020) Strelnikoff et al. (2020) |
Causal maps for multi-document summarization | Fully unsupervised NLP pipeline for cause-effect extraction and clustering; fits document coding at scale with explicit AI/NLP core | Multi-document corpora | Aggregated large-scale document synthesis | Peer-reviewed conference paper | DeepCx + embeddings + mixture model + graph pruning |
| 2018 | Igor Pyrko; Viktor Dorfler | Management/organization research context | Using Causal Mapping in the Analysis of Semi-structured Interviews (2018) Pyrko & Dorfler (2018) |
Eden/Ackermann-style causal mapping for interview analysis | Strong fit with interview coding, map merging across respondents, and feedback-chain analysis; AI not central | Semi-structured interviews | Merged intersubjective maps from individual interview maps | Conference proceedings paper | Manual coding + map-merging analysis |
| 2018 | Ricardo Wilson-Grau; Heather Britt | Outcome Harvesting practice community | Outcome Harvesting Principles in Practice (2018) Wilson-Grau (2018); Outcome Harvesting (2012) Wilson-Grau & Britt (2012) |
Outcome Harvesting (adjacent causal-claim approach) | Adjacent method for harvesting causal contribution claims from narrative evidence; fits multi-source evidence assembly; typically no AI core | Narrative outcomes/interviews/documents | Multi-source claim harvesting | Guidance/practice documents | Manual harvesting/coding |
| 2017 | Gerard Hodgkinson; Kristian Sund; Robert Galavan | Managerial and organizational cognition community | Chapter 1: Exploring Methods in Managerial and Organizational Cognition (2017) Hodgkinson et al. (2017) |
Causal/cognitive mapping methods in MOC | Methodological synthesis of causal mapping in management cognition; mainly interview/document elicitation + map analysis tradition; AI not central | Interviews/documents (methodological review) | Comparative methodological synthesis | Book chapter | Method framework synthesis |
| 2016 | Mauri Laukkanen; Mingde Wang; Päivi Eriksson | Comparative causal mapping lineage (management/organization) | Comparative Causal Mapping: The CMAP3 Method (2016) Laukkanen & Wang (2016); New Designs and Software for Cognitive Causal Mapping (2013) Laukkanen & Eriksson (2013); Comparative Causal Mapping and CMAP3 Software in Qualitative Studies (2012) Laukkanen (2012) |
Comparative Causal Mapping (CCM), CMAP3 | Core comparative/aggregative map methodology, including standardized concept pools and software-supported cross-case comparison; AI not central | Interviews/documents (structured to low-structured variants) | Comparative aggregation across multiple respondents/cases | Book + peer-reviewed articles | CMAP3 + manual standardization |
| 2014 | Michal Sedlacko; Andre Martinuzzi; Inge Ropke; Nuno Videira; Paula Antunes | Sustainability / ecological economics context | Participatory Systems Mapping for Sustainable Consumption (2014) Sedlacko et al. (2014) |
Participatory systems mapping | Early strong participatory systems-mapping method paper; fits group map-building and systemic insight generation; AI not central | Participatory workshops | Group-built causal map synthesis | Peer-reviewed article | Workshop methods + map analysis |
Notes on team boundaries#
- Teams are grouped by overlapping authors and clear method lineage; single-paper rows are kept where overlap is weak or absent.
- Duplicates were collapsed where records represent the same output (for example
Powell & Caldas Cabral (2025)vsPowell & Cabral (2025)). - Obvious noisy keyword matches (items tagged
causal mappingbut not materially about causal-mapping methods) were excluded.
From your supplied list: explicitly not in this table (and why)#
- Pre-2011 foundational classics (kept out only due to 15-year scope): e.g., Axelrod 1976, Eden 1988/1992, Eden/Ackermann/Cropper 1992, Narayanan/Armstrong 2004, Clarkson/Hodgkinson 2005.
- Outside causal-mapping core despite causal relevance: e.g., Pearl 2000, Forrester 1971, Tolman 1948, Wright 1921 (important background, but not causal-mapping method teams).
- General AI/qualitative-method papers with weak direct mapping focus: retained only when explicitly tied to causal-map/CLD production or transformation.
References
Ackermann, & Eden (2011). Using Causal Mapping to Support Information Systems Development.
Ackermann, & Alexander (2016). Researching Complex Projects: Using Causal Mapping to Take a Systems Perspective. https://linkinghub.elsevier.com/retrieve/pii/S0263786316300072.
Ackermann, & Maytorena-Sanchez (2024). Overlooked and Underused? The Benefits and Challenges of Using Causal Mapping for Project Studies. https://doi.org/10.1016/j.plas.2024.100161.
Avard, Mukuru, & Liesner (2022). Measuring the Women’s Economic Empowerment Generated by Impact Investing; Testing the QuIP Method on an Investment in Uganda’s Cotton Sector. Taylor \& Francis.
Barbrook-Johnson, & Penn (2021). Participatory Systems Mapping for Complex Energy Policy Evaluation. http://dx.doi.org/10.1177/1356389020976153.
Barbrook-Johnson, & Penn (2022). Participatory Systems Mapping. In Systems Mapping: How to Build and Use Causal Models of Systems. https://doi.org/10.1007/978-3-031-01919-7_5.
Barbrook-Johnson, & Penn (2022). Running Systems Mapping Workshops. In Systems Mapping: How to Build and Use Causal Models of Systems. https://doi.org/10.1007/978-3-031-01919-7_10.
Britt, Powell, & Cabral (2025). Strengthening Outcome Harvesting with AI-assisted Causal Mapping. https://5a867cea-2d96-4383-acf1-7bc3d406cdeb.usrfiles.com/ugd/5a867c_ad000813c80747baa85c7bd5ffaf0442.pdf.
Buzogany, Kopainsky, & Gonçalves (2024). Developing Theoretically Grounded Causal Maps to Examine and Improve Policy Narratives about Global Challenges. https://doi.org/10.1002/sdr.1788.
Craven (2017). System Effects: A Hybrid Methodology for Exploring the Determinants of Food In/Security. https://www.tandfonline.com/doi/full/10.1080/24694452.2017.1309965.
Craven (2020). Improving the Health, Wellbeing , and Chronic Disease Management of the Arabic Speaking Community Data - Through the Culture Well Project , Asthma Australia.
Giabbanelli, Gandee, Agrawal, & Hosseinichimeh (2025). Benchmarking and Assessing Transformations Between Text and Causal Maps via Large Language Models. SAGE Publications. https://doi.org/10.1177/15705838241304102.
Hammond, Lea, & Hammond (2026). Where to Start? Participatory Systems Mapping for Place-Based Service Integration in the City of Casey. https://doi.org/10.20944/preprints202601.2371.v1.
Hayward, Morton, Johnstone, Creighton, & Allender (2020). Tools and Analytic Techniques to Synthesise Community Knowledge in CBPR Using Computer-Mediated Participatory System Modelling. https://www.nature.com/articles/s41746-020-0230-x.
Hodgkinson, Sund, & Galavan (2017). Chapter 1: Exploring Methods in Managerial and Organizational Cognition: Advances, Controversies, and Contributions. In New Horizons in Managerial and Organizational Cognition. https://doi.org/10.1108/S2397-52102017002.
Hooper (2023). A Semi-Automated Approach to Policy-Relevant Evidence Synthesis: Combining Natural Language Processing, Causal Mapping, and Graph Analytics for Public Policy. https://doi.org/10.21203/rs.3.rs-3285731/v1.
Jalali, & Akhavan (2024). Integrating AI Language Models in Qualitative Research: Replicating Interview Data Analysis with ChatGPT. https://doi.org/10.1002/sdr.1772.
Laukkanen (2012). Comparative Causal Mapping and CMAP3 Software in Qualitative Studies. https://doi.org/10.17169/fqs-13.2.1846.
Laukkanen, & Eriksson (2013). New Designs and Software for Cognitive Causal Mapping. https://www.emerald.com/insight/content/doi/10.1108/QROM-08-2011-1003/full/html.
Laukkanen, & Wang (2016). Comparative Causal Mapping: The CMAP3 Method. Routledge.
Mapping, & Incentive (2020). Participatory Systems Mapping in Action —Supporting the Evaluation of the Renewable Heat Incentive.
Matthews, Airey, Remnant, & Charles (2023). The Dynamics of the UN Voluntary Local Review Using Causal Mapping within and across the Sustainable Development Goals: A Case Study of Bath and North East Somerset.
Powell, & Ltd. (2021). Guide to Causal Mapping. https://info.causalmap.app/.
Powell, Remnant, Copestake, Mishan, Arvard, & Goddard (2022). Chapter 1 Overview | Guide to Causal Mapping. https://causalmap.app.
Powell, Larquemin, Copestake, Remnant, & Avard (2023). Does Our Theory Match Your Theory? Theories of Change and Causal Maps in Ghana. In Strategic Thinking, Design and the Theory of Change. A Framework for Designing Impactful and Transformational Social Interventions.
Powell, Copestake, & Remnant (2024). Causal Mapping for Evaluators. https://doi.org/10.1177/13563890231196601.
Powell, Cabral, & Mishan (2024). An M\&E Time Machine: Using AI to Measure Changes in a System across a Time Period on Features Which Only Emerge during It.. https://doi.org/10.31124/advance.171535113.38566027/v1.
Powell, & Caldas Cabral (2025). AI-assisted Causal Mapping: A Validation Study. Routledge. https://doi.org/10.1080/13645579.2025.2591157.
Powell, & Cabral (2025). AI-assisted Causal Mapping: A Validation Study. Routledge. https://www.tandfonline.com/doi/abs/10.1080/13645579.2025.2591157.
Pyrko, & Dorfler (2018). Using Causal Mapping in the Analysis of Semi-structured Interviews. https://doi.org/10.5465/AMBPP.2018.14348abstract.
Remnant (2021). From Narrative Text to Causal Maps- QuIP Analysis and Visualisation 24 Oct 2021.
Remnant, Copestake, Powell, & Channon (2025). Qualitative Causal Mapping in Evaluations. In Handbook of Health Services Evaluation: Theories, Methods and Innovative Practices. https://doi.org/10.1007/978-3-031-87869-5_12.
Sedlacko, Martinuzzi, Røpke, Videira, & Antunes (2014). Participatory Systems Mapping for Sustainable Consumption: Discussion of a Method Promoting Systemic Insights. Elsevier.
Strelnikoff, Jammalamadaka, & Warmsley (2020). Causal Maps for Multi-Document Summarization. https://doi.org/10.1109/BigData50022.2020.9377731.
Valdivia Cabrera, Johnstone, Hayward, Bolton, & Creighton (2025). Integration of Large-Scale Community-Developed Causal Loop Diagrams: A Natural Language Processing Approach to Merging Factors Based on Semantic Similarity. https://doi.org/10.1186/s12889-025-22142-3.
Wallis (2020). Integrative Propositional Analysis for Developing Capacity in an Academic Research Institution by Improving Strategic Planning. https://doi.org/10.1002/sres.2599.
White, & Barbrook-Johnson (n.d.). Guidance on Using Large Language Models to Extract Cause-and-Effect Pairs from Texts for Systems Mapping Jordan White1 and Pete Barbrook-Johnson1,2 1 Institute for New Economic Thinking, University of Oxford 2 Centre for the Evaluation of Complexity Across the Nexus, University of Surrey.
Wilkinson, Hills, Penn, & Barbrook-Johnson (2021). Building a System-Based Theory of Change Using Participatory Systems Mapping. SAGE Publications Ltd. https://doi.org/10.1177/1356389020980493.
Wilson-Grau, & Britt (2012). Outcome Harvesting.
Wilson-Grau (2018). Outcome Harvesting: Principles, Steps, and Evaluation Applications. IAP.
Yang, Han, & Poon (2022). A Survey on Extraction of Causal Relations from Natural Language Text. https://doi.org/10.1007/s10115-022-01665-w.