392180 Maschinelles Lernen im Web (V) (WiSe 2021/2022)

Short comment

Die Vorlesung wird vor Ort stattfinden, wenn es die Inzidenzzahlen zulassen.

Contents, comment

Eine ständig wachsende Informationsflut im Web legt es nahe, nach Möglichkeiten zu suchen, aus der
Fülle der Daten automatisch sinnvolle Informationen oder Modelle zu extrahieren. Dabei müssen
die Algorithmen in der Lage sein, auch mit großen Datenmengen realistisch umzugehen.
Die Vorlesung behandelt wichtige Techniken des Maschinellen Lernens mit Bedeutung für das Web,
die es erlauben, automatisiert Informationen aus Daten zu extrahieren.
Behandelte Themen im Einzelnen sind:
Graph-clustering,
nichtlineare Dimensionsreduktion,
link-Analyse,
Streaming Algorithmen.
In Matlab-Übungen am Rechner direkt exemplarisch ausprobiert.

The increasing availability of electronic information on the web requires novel technologies
to deal with these data. In particular, the algorithms have to deal with big and structured data.
In the lecture, a few topics of relevance in this realm will be tackled, including
graph clustering,
nolinear dimensionality reduction,
link analysis,
streaming algotithms.
The algorithms will be tested in the exercises based on Matlab code.

Kommentar/ Comments:

The lecture will be given in English if requested.
The time slot for the lecture is not necessarily fixed, provided the majority prefers another time slot (such as Monday, 10-12; or, as an alternative, the lecture will be given as a block.)

Requirements for participation, required level

Grundkenntnisse im Bereich Algorithmen und Datenstrukturen sowie Mathematik werden empfohlen

foundations in computer science and math, programming skills

Teaching staff

Dates ( Calendar view )

Frequency Weekday Time Format / Place Period  

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Subject assignments

Module Course Requirements  
39-Inf-AKS Anwendungen Kognitiver Systeme Maschinelles Lernen im Web oder Modern Data Analysis oder Softcomputing für die Bioinformatik Ungraded examination
Graded examination
Student information

The binding module descriptions contain further information, including specifications on the "types of assignments" students need to complete. In cases where a module description mentions more than one kind of assignment, the respective member of the teaching staff will decide which task(s) they assign the students.


Erfolgreiches Bearbeiten der Übungen (2LP) sowie mündliche Prüfung (3LP)

exercises (2LP) and exam (3LP)

E-Learning Space

A corresponding course offer for this course already exists in the e-learning system. Teaching staff can store materials relating to teaching courses there:

Registered number: 66
This is the number of students having stored the course in their timetable. In brackets, you see the number of users registered via guest accounts.
Limitation of the number of participants:
Limited number of participants: 60
Address:
WS2021_392180@ekvv.uni-bielefeld.de
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If the reference number is used for several courses in the course of the semester, use the following alternative address to reach the participants of exactly this: VST_296159590@ekvv.uni-bielefeld.de
Coverage:
53 Students to be reached directly via email
Notes:
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Last update basic details/teaching staff:
Friday, July 16, 2021 
Last update times:
Tuesday, June 29, 2021 
Last update rooms:
Tuesday, June 29, 2021 
Type(s) / SWS (hours per week per semester)
V / 2
Department
Faculty of Technology
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296159590