Sociological Analysis Lab

Sociological Analysis Lab (SAL)
Quantitative Sociology for Social Good

Sociological Analysis Lab (SAL) is an open-source research organisation grounded in quantitative methods and oriented toward social questions — applying mathematical modelling, data science, and AI to real-world sociological problems.

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3+
Active Projects
MIT
Open Licence
Open Access
Causal Inference  ·  Network Analysis  ·  Factorial Survey Experiments  ·  Random Coefficient Models  ·  Computational Simulation  ·  Machine Learning  ·  Automation Bias  ·  Reproducible Research  ·  Open Science  ·  Social Psychology  ·  Causal Inference  ·  Network Analysis  ·  Factorial Survey Experiments  ·  Random Coefficient Models  ·  Computational Simulation  ·  Machine Learning  ·  Automation Bias  ·  Reproducible Research  ·  Open Science  ·  Social Psychology  · 
01

About SAL

SAL emerges from a reflection on contemporary sociology's methodological dilemma: on one side, a widespread avoidance of quantification; on the other, quantitative practice often dominated by technicalism — disconnected from theory and the problem itself.

Our position is that quantification is neither the goal nor the problem. The question is always how it is used. SAL advocates a reflexive quantitative approach that connects sociology, statistics, and computational science to build an accumulative social-scientific knowledge base.

Our aim is not to increase publication counts but to improve the explanatory power, verifiability, and social relevance of research. The question we always return to: how can quantitative methods genuinely help us understand society — and matter in the real world?

P.01
Clarity about model assumptions
Every model embeds presuppositions. We name them, test their sensitivity, and never let technique substitute for theory.
P.02
The question comes first
Method selection follows from the research question. The quality of the question determines the meaning of the method.
P.03
Methodological transparency
All code, data, and analytical documentation are published openly. Reproducibility is non-negotiable.
P.04
Pluralist methods
We resist reducing quantification to a single technique. Statistical models, network models, simulation, and causal inference each illuminate different aspects of social reality.
02

Research Directions

Track 01 — Open Technology

Open-Source Tools & Social Application

We develop and publish quantitative analysis tools and data pipelines, applying them to education equity, social psychology, and public policy. All code and models are released openly to ensure accessibility and research transparency.

R / PythonOpen toolchainsReproducibleGitHub
Track 02 — Quantitative Sociology

Mechanism-Oriented Quantitative Research

Research drawing on causal inference, network models, computational simulation, and machine learning — oriented toward mechanism explanation rather than mere pattern description. We argue for a pluralist methodological toolkit against technicalist reduction.

Causal InferenceNetwork ModelsSimulationML
Focus 01 — Social Behaviour

Modelling Social Behaviour & Attitudes

Formal models of attitude formation, norm compliance, and collective action — exploring falsifiable quantitative explanatory frameworks, with methods including factorial survey experiments and random coefficient models.

FSERandom CoefficientsMultilevel Models
Focus 02 — Human–AI Interaction

Automation Bias & AI Decision-Making

Research on decision and trust mechanisms in human–AI interaction, focused on the conditions under which automation bias forms, its cross-cultural variation, and possibilities for intervention.

Automation BiasAI TrustCross-Cultural
03

Current Projects

01
Applied Panel Data Analysis
Standardised pipeline: fixed effects, dynamic models, and causal inference applied to social mobility and income inequality.
GitBook ↗
02
ecgR — ECG & Social Psychology
An R package with Shiny app for ECG signal visualisation and analysis, combining ML classification with physiological social psychology research. MIT-BIH data support included.
GitHub ↗
03
Automation Bias Study
FSE-based experimental design for automation bias, random coefficient modelling, and cross-cultural comparative analysis.
In Progress
04
Conditional Relational Sociology
An original theoretical framework reinterpreting R² as a measure of correspondence between cognitive tools and structural conditions; integrates multilevel models, causal forests, and multi-group SEM.
Theory Development
04

Open Resources

All resources released under MIT / CC BY-NC licences — use, modify, redistribute freely.

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Code Repositories
Panel data pipelines, ECG signal classification models, and sensitivity analysis toolkits. Available on GitHub.
Public Datasets
Anonymised sample data and curated indices pointing to authoritative open datasets with usage guides.
Methods Guides
Step-by-step documentation from linear regression to multi-agent simulation, with reproducible R and Python scripts.
Replication Packages
Complete code, data, and environment configurations for published analyses — fully verifiable and rerunnable results.
05

Join / Collaborate

SAL is an open, non-profit collaborative network. We welcome researchers, developers, students, and organisations who want to advance rigorous, reflexive quantitative social science.

Researchers
Working in quantitative sociology or computational social science? We welcome methodological exchange, data sharing, and collaborative research.
Developers
Willing to contribute code, improve toolchains, or build visualisation interfaces? Contribute to our open-source projects.
Students
We organise open workshops, data challenges, and paper reading groups. Volunteers are always welcome.
Organisations
Institutions wishing to use SAL tools for social service or policy analysis — non-commercial partnerships are welcome.

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© 2025 Sociological Analysis Lab. Released under MIT / CC BY-NC.

We are committed to a welcoming, respectful, and anti-discriminatory collaborative environment.