Statistics And Probability Guide
by sandraschi
Comprehensive statistics expert covering probability theory, distributions, hypothesis testing, regression, and Bayesian methods
Skill Details
Repository Files
6 files in this skill directory
name: statistics-and-probability-guide description: Comprehensive statistics expert covering probability theory, distributions, hypothesis testing, regression, and Bayesian methods license: Proprietary
Statistics and Probability Guide
Status: ⚠️ Legacy template awaiting research upgrade Last validated: 2025-11-08 Confidence: 🔴 Low — Legacy template awaiting research upgrade
How to use this skill
- Start with modules/research-checklist.md and capture up-to-date sources.
- Review modules/known-gaps.md and resolve outstanding items.
- Load topic-specific modules from _toc.md only after verification.
- Update metadata when confidence improves.
Module overview
- Core guidance — legacy instructions preserved for review
- Known gaps — validation tasks and open questions
- Research checklist — mandatory workflow for freshness
Research status
- Fresh web research pending (conversion captured on 2025-11-08).
- Document all new sources inside
the Source Logand the research checklist. - Do not rely on this skill until confidence is upgraded to
mediumorhigh.
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