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What is Dimensionality Reduction

Encyclopedia of Artificial Intelligence
A process to reduce the number of variables of a problem. Dimension of a problem is given by the number of variables (features or parameters) that represent the data. After signal feature extraction (that reduce the original signal sample space), the dimensionality may be reduced more by feature selection methods.
Published in Chapter:
Automatic Classification of Impact-Echo Spectra II
Addisson Salazar (iTEAM, Polytechnic University of Valencia, Spain) and Arturo Serrano (iTEAM, Polytechnic University of Valencia, Spain)
Copyright: © 2009 |Pages: 7
DOI: 10.4018/978-1-59904-849-9.ch031
Abstract
We study the application of artificial neural networks (ANNs) to the classification of spectra from impact-echo signals. In this paper we focus on analyses from experiments. Simulation results are covered in paper I. Impact-echo is a procedure from Non-Destructive Evaluation where a material is excited by a hammer impact which produces a response from the material microstructure. This response is sensed by a set of transducers located on material surface. Measured signals contain backscattering from grain microstructure and information of flaws in the material inspected (Sansalone & Street, 1997). The physical phenomenon of impact-echo corresponds to wave propagation in solids. When a disturbance (stress or displacement) is applied suddenly at a point on the surface of a solid, such as by impact, the disturbance propagates through the solid as three different types of stress waves: a P-wave, an S-wave, and an R-wave. The P-wave is associated with the propagation of normal stress and the S-wave is associated with shear stress, both of them propagate into the solid along spherical wave fronts. In addition, a surface wave, or Rayleigh wave (R-wave) travels throughout a circular wave front along the material surface (Carino, 2001). After a transient period where the first waves arrive, wave propagation becomes stationary in resonant modes of the material that vary depending on the defects inside the material. In defective materials propagated waves have to surround the defects and their energy decreases, and multiple reflections and diffraction with the defect borders become reflected waves (Sansalone, Carino, & Hsu, 1998). Depending on the observation time and the sampling frequency used in the experiments we may be interested in analyzing the transient or the stationary stage of the wave propagation in impact- echo tests. Usually with high resolution in time, analyzes of wave propagation velocity can give useful information, for instance, to build a tomography of a material inspected from different locations. Considering the sampling frequency that we used in the experiments (100 kHz), a feature extracted from the signal as the wave propagation velocity is not accurate enough to discern between homogeneous and different kind of defective materials. The data set for this research consists of sonic and ultrasonic impact-echo signal (1-27 kHz) spectra obtained from 84 parallelepiped-shape (7x5x22cm. width, height and length) lab specimens of aluminium alloy series 2000. These spectra, along with a categorization of the quality of materials among homogeneous, one-defect and multiple-defect classes were used to develop supervised neural network classifiers. We show that neural networks yield good classifications (
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Reevaluating Factor Models: Feature Extraction of the Factor Zoo
Dimensionality reduction is the process of reducing the number of random variables under consideration into fewer principal variables.
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Data Mining Tools: Association Rules
Consolidating the range of a set of attributes for efficient analysis.
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Multidimensional Data Visualization
Transforming the multidimensional data into a space of lower dimensions with preserving the relationships among them.
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Similarity Search in Time Series
It is a technique that is used to lower the dimensionality of the original dataset. Each object is transformed to another object which is described by less information. It is very useful for indexing purposes, since it increases the speed of the filtering step.
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Fuzzy Logic-Based Classification and Authentication of Beverages
The higher dimensional data are mapped to the lower dimension for the purpose of visualization.
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Facial Expression Recognition
The process of reducing the dimensionality of an input space, usually with the intent of both improving compute performance as well as increasing classification accuracy.
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Big Data Preprocessing, Techniques, Integration, Transformation, Normalisation, Cleaning, Discretization, and Binning
Dimensionality Reduction entails employing techniques to reduce the number of variables or features in high-dimensional data while preserving essential information. This simplifies analysis, addresses computational challenges, and enhances efficiency by minimizing noise and overfitting problems.
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Class-Dependent Principal Component Analysis
A transformation that reduces the number of variables describing each observation or instance.
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Latent Semantic Analysis and Beyond
The process of taking high dimensional data (data represented by a large number of features) and representing it with different and fewer features or dimensions (which may be combinations of the old features) in a principled fashion that preserves some properties of the original space.
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Artificial Intelligence in Computer-Aided Diagnosis
Finding a reduced data set, with the capacity of mapping a bigger set.
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Data Mining Tools: Formal Concept Analysis and Rough Sets
Consolidating the range of a set of attributes for efficient analysis.
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Feature Selection in Pathology Detection using Hybrid Multidimensional Analysis
Data representation in a lower dimension space by linear or nonlinear mapping.
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Feature Selection
The process of reducing the number of features under consideration. The process can be classified in terms of feature selection and feature extraction.
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Introduction to AI in Biomedical and Biotechnology
The technique known as “dimensionality reduction” is used in machine learning and data analysis to minimize the number of variables, or dimensions, in a dataset while maintaining the crucial information. Reducing computing complexity and simplifying the dataset by representing it in a lower-dimensional space facilitates visualization, analysis, and interpretation. This is the main objective of dimensionality reduction. Nonetheless, it's crucial to pay close attention to how dimensionality reduction affects the downstream processes' performance and make sure that crucial data is kept safe throughout.
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