Defence of dissertation in the field of Computer and Information Science, M.Sc. Hongyu Su

2015-03-27 12:00:00 2015-03-27 23:59:59 Europe/Helsinki Defence of dissertation in the field of Computer and Information Science, M.Sc. Hongyu Su Multilabel classification through structured output learning - methods and applications http://old.cs.aalto.fi/en/midcom-permalink-1e4c89cbf2f417ac89c11e4a1581706265ff88bf88b Konemiehentie 2, 02150, Espoo

Multilabel classification through structured output learning - methods and applications

27.03.2015 / 12:00
lecture hall T2, Konemiehentie 2, 02150, Espoo, FI

Hongyu Su, M.Sc., will defend the dissertation ”Multilabel classification through structured output learning - methods and applications” on 27 March 2015 at 12 noon in lecture hall T2, Konemiehentie 2, Espoo.  The dissertation focuses on the multi-task classification problem in machine learning. The main contributions are novel learning algorithms which widen the applicability of structured output learning and improve the classification performance on many benchmark datasets.

Can we accurately predict how a message spread in Twitter? Are you interested in whom will share your post in Facebook? How about reliably figuring out drug potentials without getting your hands dirty? Does computer vision really work? All these heterogeneous questions can be answer by multilabel classification. Multilabel classification is an important research field in machine learning, the goal of which is to reliably predict multiple output variables for a given input. As output variables are often interdependent, the central problem in multilabel classification is how to best explore the correlation between labels to make accurate predictions.

This thesis tackles the multilabel classification problem through structured output learning which relies on an output graph connecting multiple output variables and models label correlations in a comprehensive manner. The output graph can be either known apriori or unobserved. The main contributions are several novel learning algorithms that widen the applicability of structured output learning. Meanwhile, this thesis provides rigorous theoretical studies to guarantee the performance of the proposed methods.

Dissertation Press Release (pdf)

Opponent: Professor Tapio Elomaa, Tampere University of Technology, Finland

Custos: Professor Juho Rousu, Aalto University School of Science, Department of Computer Science

Electronic dissertation: http://urn.fi/URN:ISBN:978-952-60-6106-1 

School of Science, electronic dissertations: https://aaltodoc.aalto.fi/handle/123456789/52