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Project

Dealing with Imbalanced and Weakly Labeled Data in Machine Learning using Fuzzy and Rough Set Methods

The goal of this project is to tackle two important and challenging problems in machine learning, namely learning from imbalanced and weakly labeled data, using the hybridization of fuzzy sets and rough sets.

A thorough study and explicit enhancement of fuzzy-rough methodologies will allow for the construction of robust new solutions tailored specifically to the problems stated above.

Date:1 Oct 2014 →  30 Sep 2018
Keywords:fuzziness and uncertainty modelling, machine learning
Disciplines:Artificial intelligence, Cognitive science and intelligent systems