About
The identification of an effective function to compare examples is essential to several machine learning problems. For instance, retrieval systems entirely depend on such a function to rank the documents with respect to their estimated similarity to the submitted query. Another example is kernel-based algorithms which heavily rely on the choice of an appropriate kernel function. In most cases, the choice of the comparison function (also called, depending on the context and its mathematical properties, distance metric, similarity measure, kernel function or matching measure) is done a-priori, relying on some knowledge/assumptions specific to the task. An alternative to this a-priori selection is to learn a suitable function relying on a set of examples and some of its desired properties. This workshop is aimed at bringing together researchers interested in such a task.
Videos
Introduction

Neighbourhood Components Analysis and Metric Learning
Feb 25, 2007
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13591 views

Learning Similarity Metrics with Invariance Properties
Feb 25, 2007
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9977 views

Learning a Distance Metric for Structured Network Prediction
Apr 16, 2007
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4854 views
Lectures

Learning to Compare using Operator-Valued Large-Margin Classifiers
Feb 25, 2007
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3498 views

Statistical Translation, Heat Kernels, and Expected Distances
Feb 25, 2007
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4678 views

Information-Theoretic Metric Learning
Feb 25, 2007
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6431 views
Debate

Debate about LCE
Mar 8, 2007
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3216 views