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Conference paper

Attention: A Machine Learning Perspective

In 2012 3rd International Workshop on Cognitive Information Processing (cip) — 2012, pp. 1-6
From

Department of Informatics and Mathematical Modeling, Technical University of Denmark1

Cognitive Systems, Department of Informatics and Mathematical Modeling, Technical University of Denmark2

We review a statistical machine learning model of top-down task driven attention based on the notion of ‘gist’. In this framework we consider the task to be represented as a classification problem with two sets of features — a gist of coarse grained global features and a larger set of low-level local features.

Attention is modeled as the choice process over the low-level features given the gist. The model takes its departure in a classical information theoretic framework for experimental design. This approach requires the evaluation over marginalized and conditional distributions. By implementing the classifier within a Gaussian Discrete mixture it is straightforward to marginalize and condition, hence, we obtained a relatively simple expression for the feature dependent information gain — the top-down saliency.

As the top-down attention mechanism is modeled as a simple classification problem, we can evaluate the strategy simply by estimating error rates on a test data set. We illustrate the attention mechanism on a simple simulated visual domain in which the choice is over nine patches in which a binary pattern has to be classified.

The performance of the classifier equipped with the attention mechanism is almost as good as one that has access to all low-level features and clearly improving over a simple ‘random attention’ alternative.

Language: English
Publisher: IEEE
Year: 2012
Pages: 1-6
Proceedings: 3rd International Workshop on Cognitive Information Processing (CIP)
ISBN: 1467318779 , 9781467318778 , 1467318760 , 1467318787 , 9781467318761 and 9781467318785
Types: Conference paper
DOI: 10.1109/CIP.2012.6232894
ORCIDs: Hansen, Lars Kai

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