Summer School on Mining Big and Complex Data, Ohrid 2016

Summer School on Mining Big and Complex Data, Ohrid 2016

26 Videos · Sep 4, 2016

About

The summer school includes lectures on predictive modelling methods for big and complex data. More specifically, the lectures present methods handling the following complexity aspects: (a) structured data as input or output of the prediction process, (b) very large/massive datasets, with many examples and/or many input/output dimensions, where data may be streaming at high rates, (c) incompletely/partially labelled data, and (d) data placed in a spatio-temporal or network context. Each of these is a major challenge to current ML/DM approaches and is the central topic of active research in areas such as structured-output prediction, mining data streams, semi-supervised learning, and mining network data. The applicability and the potential of the presented methods will be demonstrated on several showcases from molecular biology, sensor networks, multimedia, and social networks.

Videos

Opening and introduction

video-img
36:38

An Introduction to Mining Big and Complex Data

Sašo Džeroski

Jan 31, 2017

 · 

1187 views

Talks

video-img
49:31

Spatio-temporal data mining: Part 1

Donato Malerba

Jan 31, 2017

 · 

1041 views

video-img
53:14

Architectures for distributed mining of big data

Albert Bifet

Jan 31, 2017

 · 

1269 views

video-img
29:50

Structured Output Prediction on Data Streams

Sašo Džeroski

Jan 31, 2017

 · 

997 views

video-img
30:07

Network Applications

Michelangelo Ceci

Jan 31, 2017

 · 

992 views

video-img
01:23:00

Kernel methods for structured data

Paolo Frasconi

Jan 31, 2017

 · 

1046 views

video-img
42:18

Deep learning for plant identification

Ivica Dimitrovski

Jan 31, 2017

 · 

1157 views

video-img
01:33:01

Large Scale Image Retrieval and Mining

Ondrej Chum

Jan 31, 2017

 · 

1250 views

video-img
44:17

Redescription mining and its applications

Tomislav Šmuc

Jan 31, 2017

 · 

908 views

video-img
18:05

Mars Express Power Challenge

Jurica Levatić

Jan 31, 2017

 · 

925 views

video-img
01:18:36

Multi-label learning from batch and streaming data

Jesse Read

Jan 31, 2017

 · 

1018 views

video-img
40:36

Semi-supervised tree learning

Dragi Kocev

Jan 31, 2017

 · 

1454 views

video-img
36:35

Ontology of Data Mining

Panče Panov

Jan 31, 2017

 · 

1018 views

video-img
01:17:18

Selective Inference and the False Discovery Rate

Yoav Benjamini

Jan 31, 2017

 · 

1193 views

video-img
54:29

Semi-supervised learning for SOP

Ulf Brefeld

Jan 31, 2017

 · 

900 views

video-img
33:04

Spatio-temporal data mining: Part 2

Annalisa Appice

Jan 31, 2017

 · 

1211 views

video-img
47:07

Network reconstruction

Ljupčo Todorovski

Jan 31, 2017

 · 

1091 views

video-img
37:23

Towards deep kernel machines

Julien Mairal

Jan 31, 2017

 · 

1375 views

video-img
21:13

Decomposition and structuring of the output space

Gjorgji Madjarov

Jan 31, 2017

 · 

1104 views

video-img
48:21

Sparse Estimation for Image and Vision Processing

Julien Mairal

Jan 31, 2017

 · 

1336 views

video-img
45:00

Complex Networks Analysis

Ljupčo Kocarev

Jan 31, 2017

 · 

1166 views

video-img
01:15:57

Metagenomics data analysis

Cesare Furlanello

Jan 31, 2017

 · 

1007 views

video-img
01:08:20

Mining streaming data and networks

João Gama

Jan 31, 2017

 · 

1233 views

video-img
38:06

Mining tensor data

Hadi Fanee

Jan 31, 2017

 · 

1639 views

video-img
41:12

Mining network data

Michelangelo Ceci

Jan 31, 2017

 · 

1215 views

Closing remarks

video-img
29:01

Selected Environmental Appplications Of Structured Output Prediction

Sašo Džeroski

Jan 31, 2017

 · 

1086 views