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Details of Grant 

EPSRC Reference: EP/D052807/1
Title: Study of regularisation methods in machine learning
Principal Investigator: Pontil, Professor M
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Department: Computer Science
Organisation: UCL
Scheme: Standard Research (Pre-FEC)
Starts: 01 March 2006 Ends: 31 March 2007 Value (£): 10,886
EPSRC Research Topic Classifications:
Artificial Intelligence
EPSRC Industrial Sector Classifications:
No relevance to Underpinning Sectors
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Summary on Grant Application Form
Over the past decade the availability of powerful computers has opened the doors to the use of machine learning techniques in complex application domains such as those arising in computer vision, speech recognition, computational linguistics, marketing science, and bioinformatics, to mention but a few.A central approach in machine learning which has proved valuable in the above domains consists in computing a function from available data by minimising a regularisation error functional which balances different error/penalty criteria. For example, the regularisation error functional may involves the combination of a data term, measuring the empirical error on the data and a penalty term measuring the function complexity. The goal of this visit, during the period of January--June 2006, is to continue to explore both the theoretical and practical implications of the regularisation approach in machine learning as well as produce a first draft of a book on this topic. Prof. Micchelli shares a strong interest with Dr. Pontil in machine learning and the proposed visit will be the first opportunity for them to work together for an extensive period of time.Prof. Micchelli ranks high among the world leaders in computational mathematics. He has made fundamental contributions to that field, especially to problems concerning approximation, representation and estimation of functions. His work has been influential not only in mainstream mathematics but also in nearby fields, particularly in statistics and computer science. He is in the recent ISI list of 200 mathematicians world-wide who are most highly cited.
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