Statistical Test Selector
by a5c-ai
Skill for selecting appropriate statistical tests for analyses
Skill Details
Repository Files
1 file in this skill directory
name: statistical-test-selector description: Skill for selecting appropriate statistical tests for analyses allowed-tools:
- Read
- Write
- Bash metadata: specialization: scientific-discovery domain: science category: Data Analysis skill-id: SK-SCIDISC-017
Statistical Test Selector Skill
Purpose
Select appropriate statistical tests based on data characteristics, research questions, and study design assumptions.
Capabilities
- Assess data characteristics
- Match tests to questions
- Check assumptions
- Recommend alternatives
- Justify selections
- Document rationale
Usage Guidelines
- Describe research question
- Characterize data
- Check assumptions
- Identify candidate tests
- Select optimal test
- Document rationale
Process Integration
Works within scientific discovery workflows for:
- Analysis planning
- Methods selection
- Assumption checking
- Statistical consulting
Configuration
- Test database
- Assumption checks
- Decision trees
- Output formatting
Output Artifacts
- Test recommendations
- Assumption reports
- Selection rationale
- Alternative suggestions
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