本课程介绍了贝叶斯统计学,其中关于参数或假设的推断会随着证据的积累而更新。您将学习使用贝叶斯法则将先验概率转换为后验概率,并了解贝叶斯范式的基本理论和观点。课程将把贝叶斯方法应用到几个实际问题中,展示端到端的贝叶斯分析,从提出问题到建立模型,再到获取先验概率,最后在 R(免费统计软件)中实现最终的后验分布。此外,课程还将介绍可信区域、贝叶斯均值和比例比较、贝叶斯回归和使用多重模型的推理,以及贝叶斯预测的讨论。 我们假定本课程的学习者已具备与本专业前三门课程相同的背景知识:"概率与数据导论"、"推断统计 "和 "线性回归与建模"。

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12 项作业
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学生评论
- 5 stars
45.23%
- 4 stars
20.42%
- 3 stars
14.53%
- 2 stars
9.27%
- 1 star
10.52%
显示 3/798 个
已于 Aug 24, 2017审阅
An interesting and challenging course, would be better with more real examples and explanation as some of the material felt rushed
已于 Jun 20, 2018审阅
It was a good course, though I would include more coursework and exercises in R to assist with comprehending a difficult subject. Overall, good course for something that's difficult to teach.
已于 Jan 2, 2017审阅
Theis course is substantially more difficult than the three first ones, and the material is scarce. However, I must admit that this is one of the courses I have ever learnt the most
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