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.
Related categories
Uploaded videos:
Opening and introduction
An Introduction to Mining Big and Complex Data
Jan 31, 2017
·
1186 Views
Talks
Semi-supervised tree learning
Jan 31, 2017
·
1451 Views
Kernel methods for structured data
Jan 31, 2017
·
1046 Views
Semi-supervised learning for SOP
Jan 31, 2017
·
899 Views
Metagenomics data analysis
Jan 31, 2017
·
1006 Views
Multi-label learning from batch and streaming data
Jan 31, 2017
·
1016 Views
Decomposition and structuring of the output space
Jan 31, 2017
·
1103 Views
Ontology of Data Mining
Jan 31, 2017
·
1017 Views
Mars Express Power Challenge
Jan 31, 2017
·
924 Views
Mining network data
Jan 31, 2017
·
1214 Views
Network reconstruction
Jan 31, 2017
·
1089 Views
Mining tensor data
Jan 31, 2017
·
1635 Views
Complex Networks Analysis
Jan 31, 2017
·
1163 Views
Mining streaming data and networks
Jan 31, 2017
·
1231 Views
Structured Output Prediction on Data Streams
Jan 31, 2017
·
996 Views
Architectures for distributed mining of big data
Jan 31, 2017
·
1268 Views
Network Applications
Jan 31, 2017
·
990 Views
Spatio-temporal data mining: Part 1
Jan 31, 2017
·
1037 Views
Spatio-temporal data mining: Part 2
Jan 31, 2017
·
1202 Views
Large Scale Image Retrieval and Mining
Jan 31, 2017
·
1248 Views
Sparse Estimation for Image and Vision Processing
Jan 31, 2017
·
1331 Views
Towards deep kernel machines
Jan 31, 2017
·
1371 Views
Deep learning for plant identification
Jan 31, 2017
·
1156 Views
Selective Inference and the False Discovery Rate
Jan 31, 2017
·
1192 Views
Redescription mining and its applications
Jan 31, 2017
·
907 Views
Closing remarks
Selected Environmental Appplications Of Structured Output Prediction
Jan 31, 2017
·
1083 Views