Dear colleagues,
We would like to remind you that early registration for the Madrid UPM Machine Learning
and Advanced Statistics summer school is open until June 2nd (included). The summer school
will be held in Boadilla del Monte, near Madrid, from June 19th to June 30th. This
year's edition comprises 12 week-long courses (15 lecture hours each), given during
two weeks (six courses each week). Attendees may register in each course independently. No
restrictions, besides those imposed by timetables, apply on the number or choice of
courses.
Early registration is *OPEN*. Extended information on course programmes, price, venue,
accommodation and transport is available at the school's website:
http://www.dia.fi.upm.es/MLAS
There is a 25% discount for members of Spanish AEPIA and SEIO societies.
Please, forward this information to your colleagues, students, and whomever you think may
find it interesting.
Best regards,
Pedro Larrañaga, Concha Bielza, Bojan Mihaljević and Laura Gonzalez Veiga.
-- School coordinators.
*** List of courses and brief description ***
* Week 1 (June 19th - June 23rd, 2023) *
1st session: 9:45-12:45
Course 1: Bayesian Networks (15 h)
Basics of Bayesian networks. Inference in Bayesian networks. Learning Bayesian
networks from data. Real applications. Practical demonstration: R.
Course 2: Time Series(15 h)
Basic concepts in time series. Linear models for time series. Time series
clustering. Practical demonstration: R.
2nd session: 13:45-16:45
Course 3: Supervised Classification (15 h)
Introduction. Assessing the performance of supervised classification algorithms.
Preprocessing. Classification techniques. Combining multiple classifiers. Comparing
supervised classification algorithms. Practical demonstration: python.
Course 4: Statistical Inference (15 h)
Introduction. Some basic statistical tests. Multiple testing. Introduction to
bootstrap methods. Introduction to Robust Statistics. Practical demonstration: R.
3rd session: 17:00 - 20:00
Course 5: Neural Networks and Deep Learning (15 h)
Introduction. Learning algorithms. Learning in deep networks. Deep Learning for
Images. Deep Learning for Text. Practical session: Jupyter notebooks in Python Anaconda
with keras and tensorflow.
Course 6: Bayesian Inference (15 h)
Introduction: Bayesian basics. Conjugate models. MCMC and other simulation methods.
Regression and Hierarchical models. Model selection. Practical demonstration: R and
WinBugs.
* Week 2 (June 26th - June 30th, 2023) *
1st session: 9:45-12:45
Course 7: Feature Subset Selection (15 h)
Introduction. Filter approaches. Embedded methods. Wrapper methods. Additional
topics. Practical session: R and python.
Course 8: Clustering (15 h)
Introduction to clustering. Data exploration and preparation. Prototype-based
clustering. Density-based clustering. Graph-based clustering. Cluster evaluation.
Miscellanea. Conclusions and final advice. Practical session: R.
2nd session: 13:45-16:45
Course 9: Gaussian Processes and Bayesian Optimization (15 h)
Introduction to Gaussian processes. Sparse Gaussian processes. Deep Gaussian
processes. Introduction to Bayesian optimization. Bayesian optimization in complex
scenarios. Practical demonstration: python using GPytorch and BOTorch.
Course 10: Explainable Machine Learning (15 h)
Introduction. Inherently interpretable models. Post-hoc interpretation of black box
models. Basics of causal inference. Model-specific explanations: Bayesian networks. Other
topics. Practical demonstration: R.
3rd session: 17:00-20:00
Course 11: Support Vector Machines and Regularized Learning (15 h)
Introduction. SVM models. SVM learning algorithms. Regularized learning. Convex
optimization with proximal methods. Practical session: Python Anaconda with scikit-learn.
Course 12: Hidden Markov Models (15 h)
Introduction. Discrete Hidden Markov Models. Basic algorithms for Hidden Markov
Models. Semicontinuous Hidden Markov Models. Continuous Hidden Markov Models. Unit
selection and clustering. Speaker and Environment Adaptation for HMMs. Other applications
of HMMs. Practical session: HTK.
If you wish to stop receiving emails regarding the Madrid UPM Machine Learning and
Advanced Statistics summer school, please reply to this email with the title STOP.
Dear colleagues,
We would like to remind you that early registration for the Madrid UPM Machine Learning
and Advanced Statistics summer school is open until May, 27th (included). The summer
school will be held in Boadilla del Monte, near Madrid, from June 17th to June 28th. This
year's edition comprises 12 week-long courses (15 lecture hours each), given during
two weeks (six courses each week). Attendees may register in each course independently. No
restrictions, besides those imposed by timetables, apply on the number or choice of
courses.
Early registration is *OPEN*. Extended information on course programmes, price, venue,
accommodation and transport is available at the school's website:
http://www.dia.fi.upm.es/MLAS
There is a 25% discount for members of Spanish AEPIA and SEIO societies.
Please, forward this information to your colleagues, students, and whomever you think may
find it interesting.
Best regards,
Pedro Larrañaga, Concha Bielza, Bojan Mihaljević and Laura Gonzalez Veiga.
-- School coordinators.
*** List of courses and brief description ***
# Week 1 (June 17th - June 23rd, 2024)
## 1st session: 9:45-12:45
### Course 1: Bayesian Networks (15 h)
Basics of Bayesian networks. Inference in Bayesian networks. Learning Bayesian
networks from data. Real applications. Practical demonstration: R.
### Course 2: Time Series(15 h)
Basic concepts in time series. Linear models for time series. Time series
clustering. Practical demonstration: R.
## 2nd session: 13:45-16:45
### Course 3: Supervised Classification (15 h)
Introduction. Assessing the performance of supervised classification algorithms.
Preprocessing. Classification techniques. Combining multiple classifiers. Comparing
supervised classification algorithms. Practical demonstration: python.
### Course 4: Statistical Inference (15 h)
Introduction. Some basic statistical tests. Multiple testing. Introduction to
bootstrap methods. Introduction to Robust Statistics. Practical demonstration: R.
## 3rd session: 17:00 - 20:00
### Course 5: Deep Learning (15 h)
Introduction. Learning algorithms. Learning in deep networks. Deep Learning for
Computer Vision. Deep Learning for Language. Practical session: Python notebooks with
Google Colab with keras, Pytorch and Hugging Face Transformers.
### Course 6: Bayesian Inference (15 h)
Introduction: Bayesian basics. Conjugate models. MCMC and other simulation methods.
Regression and Hierarchical models. Model selection. Practical demonstration: R and
WinBugs.
# Week 2 (June 26th - June 28th, 2024)
## 1st session: 9:45-12:45
### Course 7: Feature Subset Selection (15 h)
Introduction. Filter approaches. Embedded methods. Wrapper methods. Additional
topics. Practical session: R and python.
### Course 8: Clustering (15 h)
Introduction to clustering. Data exploration and preparation. Prototype-based
clustering. Density-based clustering. Graph-based clustering. Cluster evaluation.
Miscellanea. Conclusions and final advice. Practical session: R.
## 2nd session: 13:45-16:45
### Course 9: Gaussian Processes and Bayesian Optimization (15 h)
Introduction to Gaussian processes. Sparse Gaussian processes. Deep Gaussian
processes. Introduction to Bayesian optimization. Bayesian optimization in complex
scenarios. Practical demonstration: python using GPytorch and BOTorch.
### Course 10: Explainable Machine Learning (15 h)
Introduction. Inherently interpretable models. Post-hoc interpretation of black box
models. Basics of causal inference. Beyond tabular and i.i.d. data. Other topics.
Practical demonstration: Python with Google Colab.
## 3rd session: 17:00-20:00
### Course 11: SVMs, Kernel Methods and Regularized Learning (15 h)
Regularized learning. Kernel methods. SVM models. SVM learning algorithms. Practical
session: Python Anaconda with scikit-learn.
### Course 12: Hidden Markov Models (15 h)
Introduction. Discrete Hidden Markov Models. Basic algorithms for Hidden Markov
Models. Semicontinuous Hidden Markov Models. Continuous Hidden Markov Models. Unit
selection and clustering. Speaker and Environment Adaptation for HMMs. Other applications
of HMMs. Practical session: HTK.