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Enterprise AI Analysis: LAPS: Automating Hypothesis-Driven Statistical Analysis of Public Survey Using Large Language Models

Jaehoon Kim et al. | CHI '26, Barcelona, Spain

LAPS: Automating Hypothesis-Driven Statistical Analysis of Public Survey Using Large Language Models

Public surveys are indispensable resources for understanding social dynamics, yet their analysis often imposes a high cognitive load due to structural complexity. In this paper, we present LAPS, a Large Language Model (LLM)-assisted automated framework that supports end-to-end, hypothesis-driven statistical analysis of survey data. LAPS consists of four modules (i.e., Operationalization, Planning, Execution, and Reporting) with human-in-the-loop mechanisms.

Key Contributions & Impact

LAPS significantly streamlines complex survey analysis, empowering social science researchers with enhanced agency, reduced cognitive load, and trustworthy results through human-AI collaboration.

0 Integrated Modules
0 Researchers in User Study
0 Avg. Workload Reduction (NASA-TLX)
0 Avg. Usability Improvement (SUS)

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Overview
Methodology
Results
Discussion

Introduction to LAPS

LAPS (LLM-assisted Automated framework for Public Survey data analysis) is a system designed to support social science researchers through a hypothesis-driven statistical analysis. It addresses the high cognitive load and structural complexity typically associated with analyzing public survey data, offering a streamlined and transparent workflow.

LAPS Enterprise Process Flow

Operationalization
Planning
Execution
Reporting

LAPS Framework & Design Goals

LAPS is grounded in design goals derived through iterative discussions with domain experts, ensuring it aligns with social science researchers' analytical workflows. It features four core modules that translate conceptual hypotheses into testable measures, structure statistical plans, generate and execute analysis code, and compile comprehensive reports.

Feature LAPS Advantage Traditional Tools / General LLMs
Conceptual Operationalization
  • Presents candidate variables with reasoning.
  • Enables researchers to compare, justify, and augment operationalizations.
  • Supports iterative refinement with user feedback.
  • Manual selection, high cognitive load.
  • Limited or no automated reasoning for variable choice.
  • Requires repeated manual adjustments.
Statistical Planning
  • Structures analytical conditions, ensuring transparent review.
  • Iterative refinement of plans with explicit dependencies.
  • Incorporates complex survey designs automatically.
  • Lack of coherent framework for decision points.
  • Opaque choices, requiring repeated refinement.
  • Manual handling of complex survey designs.
Workflow Alignment
  • Constrained to hypothesis-driven statistical analysis.
  • Consistent procedural structure, predictable outputs.
  • Human-in-the-loop for key decisions.
  • General-purpose, open-ended interaction.
  • Outputs may lack analytical consistency or shift unpredictably.
  • Potential for hallucinations and irrelevant outputs.

Key Findings from User Study

A user study with 12 social science researchers evaluated LAPS against traditional statistical tools (BE) and general-purpose LLMs (GLE). LAPS demonstrated significant improvements across key metrics, enhancing the research workflow and output reliability.

Reduced Cognitive Load LAPS substantially reduced cognitive burden (NASA-TLX) by 1.94 points compared to traditional tools (p < 0.001), making analysis smoother and more efficient.
Tutorial Exercise LAPS Selected Variable(s) LAPS Statistical Method LAPS p-value Original Tutorial p-value
T1: >50% U.S. households use air conditioning? ACUsed One-sample z-test < 0.001 < 0.001
T2: Avg. temp differ day/night in winter? WinterTempDay; WinterTempNight Paired t-test < 0.001 < 0.001
T3: Relationship between housing unit type & year built? HousingUnitType; YearMade Pearson chi-square test < 0.001 < 0.001
T4: Avg. age differ for Biden voters vs. others? (DV) Age; (IV) VotedPres2020_selection Two-sample t-test < 0.001 < 0.001
T5: Difference in gender distribution across early voting status? Gender, EarlyVote2020 Rao-Scott chi-square test 0.03 0.03

Discussion & Future Implications

LAPS demonstrated its ability to preserve researcher agency, reduce cognitive burden, and produce trustworthy outputs. Key discussion points revolve around supporting early-stage researchers without undermining data literacy, integrating knowledge resources, and managing interpretive variability.

Enhancing Researcher Agency

Participants perceived LAPS as a collaborative tool that preserved their control over key analytical decisions, offering structured alternatives while leaving interpretive and strategic choices to the researcher. One participant noted, "I could revise and adjust variable selection and the analysis plan [...] and it always felt like the tool left the decision to me. I could use the suggested method as it was or combine multiple options, so it really felt like it was giving me choices.” (P3). This highlights how LAPS empowers users to guide the analytic process effectively.

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