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What is Regularization

Handbook of Research on Emerging Perspectives in Intelligent Pattern Recognition, Analysis, and Image Processing
It refers to the procedure of bringing in additional knowledge to solve an ill-posed problem or to avoid overfitting. This information appears habitually as a penalty term for complexity, such as constraints for smoothness or bounds on the norm.
Published in Chapter:
Total Variation Applications in Computer Vision
Vania Vieira Estrela (Universidade Federal Fluminense, Brazil), Hermes Aguiar Magalhães (Universidade Federal de Minas Gerais, Brazil), and Osamu Saotome (InstitutoTecnologico de Aeronautica, Brazil)
DOI: 10.4018/978-1-4666-8654-0.ch002
Abstract
The objectives of this chapter are: (i) to introduce a concise overview of regularization; (ii) to define and to explain the role of a particular type of regularization called total variation norm (TV-norm) in computer vision tasks; (iii) to set up a brief discussion on the mathematical background of TV methods; and (iv) to establish a relationship between models and a few existing methods to solve problems cast as TV-norm. For the most part, image-processing algorithms blur the edges of the estimated images, however TV regularization preserves the edges with no prior information on the observed and the original images. The regularization scalar parameter ? controls the amount of regularization allowed and it is essential to obtain a high-quality regularized output. A wide-ranging review of several ways to put into practice TV regularization as well as its advantages and limitations are discussed.
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Fuzzy Spatial Data Types for Spatial Uncertainty Management in Databases
It is a formal concept based on fuzzy topology that removes geometric anomalies on fuzzy regions.
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Advances in Ultrasound Despeckling: An Overview
It is a method based on regression to avoid overfitting.
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Multi-Objective Training of Neural Networks
Optimization of both complexity and performance of a neural network following a linear aggregation or a multi-objective algorithm.
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Support Vector Machines
It is any method of preventing overfitting of data by a model and it is used for solving ill-conditioned parameter-estimation problems.
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Counting the Hidden Defects in Software Documents
Including a term in the error function such that the training process favours networks of moderate size and complexity, that is, networks with small weights and few hidden units. The goal is to avoid overfitting and support generalization.
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