Advanced Topics in Knowledge Management and Discovery KMD

 

Timetable

DayTimeFrequencyPeriodRoomLecturerRemarksMax. participants
Seminar - Seminar - Dates/Times/Location:
Mon. 13:00 bis 15:00 weekly G29-021 Spiliopoulou   20

Overview (from LSF)

Learning Content

Topics

In this master seminar, advanced topics in knowledge management and discovery (data mining, machine learning, ...) will be presented and discussed.

  • Adaptive Classification (Concept/Population Drift, Change Mining, Semi-Supervised and Active Learning, Learner-Induced Drift, Learning under Latency, Adversarial Machine Learning)
  • Adaptive Clustering
  • Sentiment/Opinion Mining (Sentiment Classification, Feature-based Opinion Mining, Sentiment Lexicons, Sentiment Summarization)
  • Recommendation Systems
  • Mining in Health Care / Neurobiological Data

 

What you will learn

Each participant has to pick a topic out of a pool of topic from their respective supervisor. The topics encompass one till two research papers. Based on the paper(s) the student has to pick a third one by his own. To guide the student while reading the papers, we are going to provide a list of questions which have to be answered for each paper. That lists have to be submitted by the review due (cf. timline). Feedback towards the reviews is provided by us afterwards. According to the feedback you start writing a small survey (3 pages) of the read papers. Each student has to give a presentation of 15-20 minutes where he/she compares the papers and also explaines the main contributions of the papers.

 

Comments

The topics will be presented at the begining of the semester, 01.04., 11:15 in G29-K059

Literature

Recent publications on advanced topics in knowledge management and discovery (data mining, machine learning,  ...)

Target Group

Master students in informatics or in related studies who have already attended and presented at a (bachelor) seminar.

 

 

Letzte Änderung: 09.02.2019 - Ansprechpartner: