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Project

High-dimensional Distance Metric Learning for Ordinal Classification

Much like in other modelling disciplines does the distance metric used (a measure for dissimilarity) play an important role in the growing field of machine learning. Not surprisingly, in this field one also tries to learn the distance metric. In classification problems this has led to a dramatic performance boost. In this proposal we will
develop this learning methodology for ordinal classification problems (an important problem setting between classification and regression), with special attention for high-dimensional data, as they are often available nowadays.

Date:1 Oct 2015 →  30 Sep 2019
Keywords:machine learning, ordinal classification, distance metric learning
Disciplines:Computer theory, Other computer engineering, information technology and mathematical engineering, Theoretical computer science, Programming languages, Cognitive science and intelligent systems, Computer architecture and networks, Scientific computing, Visual computing, Artificial intelligence, Distributed computing, Applied mathematics in specific fields, Information systems, Other information and computing sciences, Computer hardware, Information sciences