64-360 Lecture Machine Learning

Course offering details

Instructors: Prof. Dr. Victor Emanuel de Atocha Uc Cetina

Event type: Lecture

Displayed in timetable as: ML-VL

Hours per week: 4

Credits: 6,0

Language of instruction: English

Min. | Max. participants: - | 100

Comments/contents:
In many applications and domains, massive amounts of data are
collected and processed every day. To be able to make efficient use of
such data, there is an urgent need for tools to extract important
pieces of information from the flood of unimportant details.

Machine learning is a relatively young discipline that tries to deal
with this problem, by designing algorithms to analyze large amounts of
complex data in a principled way. Machine learning is the core
technique in many applications such as spam filtering, object
recognition, analyzing user preferences, recommender systems, and so
on. Scientific disciplines such as biology,
neuroscience, physics, or medicine discover the potential of machine
learning methods for analyzing their empirical data. And, last but not
least, many large companies like google, Amazon, facebook heavily rely
on machine learning techniques.

The field of machine learning combines ingredients from several
fields: most importantly, we need to design efficient algorithms to
process the amount of data, and we need to ensure
that predictions made by machine learning algorithms are statistically
sound.

The focus of the lecture is on algorithmic aspects of machine
learning. We will cover many of the standard algorithms and learn
about the general principles for building good machine
learning algorithms.

<ul>
  <li>Supervised learning problems:  Linear methods; regularization;
  non-linear kernel methods </li>

<li> Unsupervised learning problems:    Dimension reduction
   ((kernel) PCA, multi-dimensional scaling, manifold methods) </li>
 
<li> How to model machine learning problems:
   Bayesian decision theory,  loss functions, feature selection,
evaluation and comparison of algorithms. Common pitfalls.  </li>

<li> Reinforcement learning: </li>
 
<li> The following topics are NOT going to be covered: decision trees,
   graphical models, Bayesian approaches to machine
   learning. You can learn about some of
   them in other courses in the department (e.g. Prof. Menzel,
   Prof. Wermter).   </li>
</ul>

More information can be found on the course webpage, you will find a link at
https://tams.informatik.uni-hamburg.de/lectures/2018ss/ML

Learning objectives:
- Students get to know the most important classes of modern machine
  learning algorithms.
- They are going to develop an understanding why certain algorithms
  work well and others don't.
- They learn how to evaluate and compare the results of different
  learning algorithms.
- They learn how to model machine learning problems and what are
  common pitfalls

Additional examination information:
Exam will be written, details to be announced.

Appointments
Date From To Room Instructors
1 Mon, 20. Apr. 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
2 Wed, 22. Apr. 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
3 Mon, 27. Apr. 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
4 Wed, 29. Apr. 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
5 Mon, 4. May 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
6 Wed, 6. May 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
7 Mon, 11. May 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
8 Wed, 13. May 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
9 Mon, 18. May 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
10 Wed, 20. May 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
11 Mon, 25. May 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
12 Wed, 27. May 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
13 Mon, 8. Jun. 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
14 Wed, 10. Jun. 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
15 Mon, 15. Jun. 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
16 Wed, 17. Jun. 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
17 Mon, 22. Jun. 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
18 Wed, 24. Jun. 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
19 Mon, 29. Jun. 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
20 Wed, 1. Jul. 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
21 Mon, 6. Jul. 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
22 Wed, 8. Jul. 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
23 Mon, 13. Jul. 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
24 Wed, 15. Jul. 2020 08:15 09:45 B-201 Prof. Dr. Victor Emanuel de Atocha Uc Cetina
Exams in context of modules
Module (start semester)/ Course Exam Date Instructors Compulsory pass
Class session overview
  • 1
  • 2
  • 3
  • 4
  • 5
  • 6
  • 7
  • 8
  • 9
  • 10
  • 11
  • 12
  • 13
  • 14
  • 15
  • 16
  • 17
  • 18
  • 19
  • 20
  • 21
  • 22
  • 23
  • 24
Instructors
Prof. Dr. Victor Emanuel de Atocha Uc Cetina