Introduction to Machine Learning

author: Iain Murray, School of Informatics, University of Edinburgh
published: Aug. 5, 2010,   recorded: July 2010,   views: 92211
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Description

How can we represent data on a computer and use it to learn to perform useful tasks? This lecture reviews some simple classification and regression rules, discusses under- and over-fitting and emphasises the utility of defining objective functions for learning. There is also a short overview of Bayesian learning, and some practical tips for pre-processing and visualizing data. The lecture ends with a brief mention of unsupervised learning and related topics.

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Download slides icon Download slides: bootcamp2010_murray_iml_01.pdf (3.0 MB)


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