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    • Stephan Günnemann
    • Sirine Ayadi
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    • Sommersemester 2025
      • Advanced Machine Learning: Deep Generative Models
      • Applied Machine Learning
      • Seminar: Selected Topics in Machine Learning Research
      • Seminar: Current Topics in Machine Learning
    • Wintersemester 2024/25
      • Machine Learning
      • Seminar: Selected Topics in Machine Learning Research
      • Seminar: Current Topics in Machine Learning
    • Sommersemester 2024
      • Machine Learning for Graphs and Sequential Data
      • Advanced Machine Learning: Deep Generative Models
      • Applied Machine Learning
      • Seminar: Selected Topics in Machine Learning Research
    • Wintersemester 2023/24
      • Machine Learning
      • Applied Machine Learning
      • Seminar: Selected Topics in Machine Learning Research
      • Seminar: Machine Learning for Sequential Decision Making
    • Sommersemester 2023
      • Machine Learning for Graphs and Sequential Data
      • Advanced Machine Learning: Deep Generative Models
      • Large-Scale Machine Learning
      • Seminar
    • Wintersemester 2022/23
      • Machine Learning
      • Large-Scale Machine Learning
      • Seminar
    • Sommersemester 2022
      • Machine Learning for Graphs and Sequential Data
      • Large-Scale Machine Learning
      • Seminar (Selected Topics)
      • Seminar (Time Series)
    • Wintersemester 2021/22
      • Machine Learning
      • Large-Scale Machine Learning
      • Seminar
    • Sommersemester 2021
      • Machine Learning for Graphs and Sequential Data
      • Large-Scale Machine Learning
      • Seminar
    • Wintersemester 2020/21
      • Machine Learning
      • Large-Scale Machine Learning
      • Seminar
    • Sommersemester 2020
      • Machine Learning for Graphs and Sequential Data
      • Large-Scale Machine Learning
      • Seminar
    • Wintersemester 2019/20
      • Machine Learning
      • Large-Scale Machine Learning
    • Sommersemester 2019
      • Mining Massive Datasets
      • Large-Scale Machine Learning
      • Oberseminar
    • Wintersemester 2018/19
      • Machine Learning
      • Large-Scale Machine Learning
      • Oberseminar
    • Sommersemester 2018
      • Mining Massive Datasets
      • Large-Scale Machine Learning
      • Oberseminar
    • Wintersemester 2017/18
      • Machine Learning
      • Oberseminar
    • Sommersemester 2017
      • Robust Data Mining Techniques
      • Efficient Inference and Large-Scale Machine Learning
      • Oberseminar
    • Wintersemester 2016/17
      • Mining Massive Datasets
    • Sommersemester 2016
      • Large-Scale Graph Analytics and Machine Learning
    • Wintersemester 2015/16
      • Mining Massive Datasets
    • Sommersemester 2015
      • Data Science in the Era of Big Data
    • Machine Learning Lab
  • Forschung
    • Robust Machine Learning
    • Machine Learning for Graphs/Networks
    • Machine Learning for Temporal and Dynamical Data
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  1. Startseite
  2. Lehre
  3. Sommersemester 2018
  4. Mining Massive Datasets

Lecture: Mining Massive Datasets

Information: The number of course participants is limited this year (to ensure a high quality correction of the project tasks and taking into account the limited personal capacity available). The selection of participants will be done after the closing date of the registration period. That is, we will not follow a "first come, first serve" principle.

Overview

Data has supported research since the dawn of time, but recently there has been a paradigm shift in the way data is used. Today researchers and practitioners are mining data for patterns and trends that lead to new hypotheses. This shift is caused by the huge volumes of data available from, e.g., social media websites, web query logs, sensors, and medical devices. "Big Data" has been established as an umbrella term to cover such high-volume and complex data.

In this course, you will learn advanced machine learning and data mining techniques to process such complex data. Besides introducing the fundamental concepts, we will showcase them for their use in analyzing (i) high-dimensional data, (ii) graphs/network data, and (iii) temporal data. The practical relevance of these methods will be highlighted by multiple important applications such as fraud detection, recommendation, or community detection.

This course builds upon the knowledge you gained in the lecture Machine Learning (IN2064). It provides advanced learning principles and covers more complex data domains.

The preliminary syllabus of the course is as follow

  • Introduction
    • Machine Learning, Data Mining and Knowledge Discovery Process
    • Applications, Tasks
  • High-Dimensional Data
    • Hashing & Sketches
      • Min-Hashing
      • Locality Sensitive Hashing
    • Dimensionality Reduction & Matrix Factorization
      • Feature Selection & Random Projections
      • Non-Negative Matrix Factorization and Extensions
  • Graphs / Networks
    • Laws, Patterns and Generators
    • Spectral Learning
      • Ranking (e.g., PageRank, HITS)
      • Community Detection
    • Probabilistic Models
      • Stochastic Blockmodel (SBM)
      • (Stochastic) Variational Inference
      • Belief Propagation
    • Representation Learning for Graphs
      • Deep Learning for Graph Data
      • (Unsupervised) Node Embeddings
  • Temporal Data & Streaming
    • Sampling & Sketches
      • Bloom Filter
      • Counting Distinct Elements
      • Estimating moments
    • HMMs, Belief Propagation
    • Neural Networks: RNN, LSTM

Information

  • Lecture/Exercise: Wednesdays, 2:30pm - 4:00pm, room Interims Hörsaal 1
  • Lecture/Exercise: Thursdays, 2:00pm - 4:00pm, room Interims Hörsaal 1
  • All course material will be made available via Piazza
  • Required knowledge: Content of our Machine Learning lecture

Literature

  • Mining of Massive Datasets. Jure Leskovec, Anand Rajaraman, Jeffrey David Ullman. Cambridge University Press. 2014
  • Pattern Recognition and Machine Learning. Christopher Bishop. Springer-Verlag New York. 2006.
  • Machine Learning: A Probabilistic Perspective. Kevin Murphy. MIT Press. 2012
  • The Elements of Statistical Learning: Data Mining, Inference, and Prediction. Trevor Hastie, Robert Tibshirani, Jerome Friedman. Springer. 2013
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Informatik 26 - Data Analytics and Machine Learning


Prof. Dr. Stephan Günnemann

Technische Universität München
TUM School of Computation, Information and Technology
Department of Computer Science
Boltzmannstr. 3
85748 Garching 

Sekretariat:
Raum 00.11.057
Tel.: +49 89 289-17256
Fax: +49 89 289-17257

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