Inhalt

[ 675MLDA13 ] Subject Machine Learning: Supervised Techniques and Data Analysis

Versionsauswahl
Es ist eine neuere Version 2015W dieses Fachs/Moduls im Curriculum Bachelor's programme Bioinformatics 2015W vorhanden.
Workload Mode of examination Education level Study areas Responsible person Coordinating university
7,5 ECTS Structure B2 - Bachelor's programme 2. year Computer Science Sepp Hochreiter Johannes Kepler University Linz
Detailed information
Original study plan Bachelor's programme Bioinformatics 2013W
Objectives Knowledge of, understanding in, and approaches to topics in Machine Learning: supervised Techniques and Data Analysis.
Subject Knowledge of, understanding in, and approaches to following topics:

Machine Learning: Supervised Techniques Classification, regression, kernels, sequence analysis, neuronal nets, support vector machines, regularization, Bayes approach, hyper-parameter optimization, feature selection,generalization error, model selection

Data Analysis: Box plot, scatter plot, clustering, principal component analysis, regression, variance analysis, feature selection, classification

Subordinated subjects, modules and lectures