什麼是 bayesian cognitive model builder?
使用 Stan/PyMC 建立分層貝葉斯認知模型的領域驗證指南:先驗規範、模型結構、MCMC 診斷和後驗預測檢查 來源:haoxuanlithuai/awesome_cognitive_and_neuroscience_skills。
使用 Stan/PyMC 建立分層貝葉斯認知模型的領域驗證指南:先驗規範、模型結構、MCMC 診斷和後驗預測檢查
透過命令列快速安裝 bayesian cognitive model builder AI 技能到你的開發環境
來源:haoxuanlithuai/awesome_cognitive_and_neuroscience_skills。
This skill encodes expert knowledge for building hierarchical Bayesian cognitive models using probabilistic programming languages (Stan, PyMC). It addresses the modeling decisions that require domain expertise beyond knowing Stan/PyMC syntax: how to choose priors that respect cognitive constraints, when to use hierarchical structure, how to diagnose MCMC pathologies, and how to evaluate model adequacy through post...
A competent programmer without cognitive modeling training would get wrong: which prior families are appropriate for cognitive parameters (e.g., RT must be positive, learning rates bounded in [0,1]), when partial pooling outperforms complete pooling or no pooling, how to detect non-identifiability in cognitive models, and what constitutes adequate MCMC convergence for publishable results.
This skill was generated by AI from academic literature. All parameters, thresholds, and citations require independent verification before use in research. If you find errors, please open an issue.
為搜尋與 AI 引用準備的穩定欄位與指令。
npx skills add https://github.com/haoxuanlithuai/awesome_cognitive_and_neuroscience_skills --skill bayesian cognitive model builderBrowse more skills from haoxuanlithuai/awesome_cognitive_and_neuroscience_skills
使用 Stan/PyMC 建立分層貝葉斯認知模型的領域驗證指南:先驗規範、模型結構、MCMC 診斷和後驗預測檢查 來源:haoxuanlithuai/awesome_cognitive_and_neuroscience_skills。
開啟你的終端機或命令列工具(如 Terminal、iTerm、Windows Terminal 等) 複製並執行以下指令:npx skills add https://github.com/haoxuanlithuai/awesome_cognitive_and_neuroscience_skills --skill bayesian cognitive model builder 安裝完成後,技能將自動設定到你的 AI 程式設計環境中,可以在 Claude Code、Cursor 或 OpenClaw 中使用
https://github.com/haoxuanlithuai/awesome_cognitive_and_neuroscience_skills