北京雁栖湖应用数学研究院 北京雁栖湖应用数学研究院

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关于我们
院长致辞
理事会
协作机构
参观来访
人员
管理层
科研人员
博士后
来访学者
行政团队
学术研究
研究团队
公开课
讨论班
招生招聘
教研人员
博士后
学生
会议
学术会议
工作坊
论坛
学院生活
住宿
交通
配套设施
周边旅游
新闻
新闻动态
通知公告
资料下载
清华大学 "求真书院"
清华大学丘成桐数学科学中心
清华三亚国际数学论坛
上海数学与交叉学科研究院
BIMSA > Bayesian机器学习 \(ICBS\)
Bayesian机器学习
Probabilistic approach in machine and deep learning leads to principled solutions. It provides explainable decisions and new ways for improving of existing approaches. Bayesian machine learning consists of probabilistic approaches that rely on Bayes formula. It can help in numerous applications and has beautiful mathematical concepts behind. In this course, I will describe the foundations of Bayesian machine learning and how it works as a part of deep learning framework.
讲师
Alexey Zaytsev
日期
2022年11月03日 至 2023年01月12日
网站
https://www.bimsa.cn/newsinfo/752150.html
修课要求
Probability theory, Mathematical statistics, Machine learning
课程大纲
Block 1: Basics of Bayesian approach
Lecture 1. Reminder of mathematical statistics. Maximum likelihood approach. Bayesian linear regression
Lecture 2. Exponential family of distributions. Conjugate priors.
Lecture 3. Bayesian logistic regression. Laplace approximation.
Lecture 4. Bernstein-von-Mises theorem. Non-informative and reference priors.
Block 2: Approximate inference
Lecture 5. Variational inference. ELBO lower bound.
Lecture 6. Normalizing flows. Expectation propagation.
Lecture 7. Sampling problem statement. Importance sampling
Lecture 8. Monte-Carlo sampling. MCMC. Metropolis–Hastings algorithm. Hamiltonian Monte-Carlo.
Block 3: Gaussian process models
Lecture 9. Gaussian process regression. Exact inference scheme. Connection to RKHS space
Lecture 10. Approximate Generalized Gaussian process models. Heteroscedasticity modeling. Efficient Gaussian process regression. Fourier features. Nystrom approximation.
Lecture 11. Risk estimation for Gaussian process regression. Parametric and non-parametric approaches.
Block 4: Bayesian neural networks
Lecture 12. Neural networks basics. Bayesian dropout.
Lecture 13. Uncertainty estimation in machine learning: Bayesian and non-Bayesian methods
Lecture 14. Loss surfaces for deep neural networks.
Block 5: Point processes
Lecture 15. Basics: Poisson processes, non-homogenous Poisson process. Maximum likelihood estimation
Lecture 16. Hawkes process. Deep Hawkes processes based on RNNs and Transformers.
参考资料
The topic of the course is on the edge of the current advances in the field. We would provide a list of articles and books for each particular lecture. Good starting points are:
1. C. Bishop “Pattern Recognition and Machine learning”, 2006. Blocks 1 and 2.
2. C. Rasmussen “Gaussian processes for Machine learning”, 2005. Block 3

Tools: Notebook with access to colab.google.com
听众
Graduate
视频公开
公开
笔记公开
公开
语言
英文
讲师介绍
Alexey has deep expertise in machine learning and processing of sequential data. He publishes at top venues, including KDD, ACM Multimedia and AISTATS. Industrial applications of his results are now in service at companies Airbus, Porsche and Saudi Aramco among others.
北京雁栖湖应用数学研究院
CONTACT

No. 544, Hefangkou Village Huaibei Town, Huairou District Beijing 101408

北京市怀柔区 河防口村544号
北京雁栖湖应用数学研究院 101408

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Email. administration@bimsa.cn

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