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Hilbert Space Kernel Methods for Machine Learning: Background and Foundations
With Daniel Duffy from Datasim Education BV & Jean-Marc Mercier from MPG Partners
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Daniel will, in the first part of this talk, overviews RKHS (Reproducing Kernel Hilbert Space) methods and some of their applications to statistics and machine learning. They have several attractive properties such as solid mathematical foundations, computational efficiency and versatility when compared to earlier machine learning methods (for example, artificial neural networks (ANNs)). We can draw on the full power of (applied) Functional Analysis to give sharper and a priori error estimation for classification and regression problems, and we have access to any partial differential equations driven approach. We discuss how RKHS methods subsume and improve traditional machine learning methods and we discuss their advantages for the two-sample problems for distributions and Support Vector Estimation and Regression Estimation.
Jean-Marc will then present and discuss a Python library called codpy (curse of dimensionality - for Python), that is an application oriented library supporting Support Vector Machine (SVM) and implementing RKHS methods, providing tools for machine learning, statistical learning and numerical simulations. This library has been used in the last five years for the internal algorithmic needs of his company, as the main tool and ingredient of proof-of-concept projects for institutional clients. He will also present a benchmark of this library against a more traditional neural network approach, for two important, sometimes critical, classes of applications: the first one is classification methods, illustrated with the benchmark MNIST pattern recognition problem. The second one is statistical learning, for which he will compare both approaches with methods computing conditional expectations.
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Daniel J. Duffy is mathematician, software designer, trainer and mentor. He has been working since 1988 with C++ and its applications to computational finance, process-control, Computer-Aided Design (CAD) and holography (optical technology). His company Datasim (www.datasim.nl) was the first to promote C++ and object-oriented technology in the Netherlands. He has trained thousands of practitioners and MSc/MFE degree students in the areas of requirements analysis, design, programming and advanced applied and numerical mathematics as well as being MSc supervisor for several top US and UK universities. He is the originator of two very popular C++ courses in cooperation with www.quantnet.com and Baruch College NYC and is the author of ten books on mathematics, software design, C++ and C#. Daniel J. Duffy has BA (Mod), MSc and PhD degrees from University of Dublin (Trinity College), all in mathematics.
Jean-Marc Mercier is head of R&D of MPG-Partners, a French, mid-sized consulting firm operating in the industrial finance sector, specialized in risk management. He is mathematician, software developer, business analyst consultant, having > 20 years R&D experience as quantitative analyst, and earned a Ph-D Applied Mathematics from Bordeaux university. After his Ph-D, Jean-Marc first started a public researcher carrier (European Research Program), before turning to private R&D, mathematical finance. He also started in 2005 a research program of his own, concerning the curse of dimensionality. This led him to develop a framework using Reproducing Kernel Hilbert Space methods (Support Vector Machines) methods, that is used today in his company as the foundation of several applications in mathematical finance.
Sri Krishnamurthy, CFA is the Founder and CEO of QuantUniversity. Sri is the creator of QuSandbox, a platform for experimenting analytical and machine learning solutions for enterprises prior to adoption.
Sri earned an MS in Computer Systems Engineering and another MS in Computer Science, both from Northeastern University and an MBA from Babson College.
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