Welcome to our book review site go-pdf.online!

You may have to Search all our reviewed books and magazines, click the sign up button below to create a free account.

Sign up

Robust Methods for Data Reduction
  • Language: en
  • Pages: 297

Robust Methods for Data Reduction

  • Type: Book
  • -
  • Published: 2016-01-13
  • -
  • Publisher: CRC Press

Robust Methods for Data Reduction gives a non-technical overview of robust data reduction techniques, encouraging the use of these important and useful methods in practical applications. The main areas covered include principal components analysis, sparse principal component analysis, canonical correlation analysis, factor analysis, clustering, double clustering, and discriminant analysis. The first part of the book illustrates how dimension reduction techniques synthesize available information by reducing the dimensionality of the data. The second part focuses on cluster and discriminant analysis. The authors explain how to perform sample reduction by finding groups in the data. Despite considerable theoretical achievements, robust methods are not often used in practice. This book fills the gap between theoretical robust techniques and the analysis of real data sets in the area of data reduction. Using real examples, the authors show how to implement the procedures in R. The code and data for the examples are available on the book’s CRC Press web page.

Data Reduction
  • Language: en
  • Pages: 424

Data Reduction

Data handling; Lawlike relationships; Statistical variation; Sampling; Empirical generalisation.

Introduction and Implementation of Data Reduction Pools and Deduplication
  • Language: en
  • Pages: 124

Introduction and Implementation of Data Reduction Pools and Deduplication

  • Type: Book
  • -
  • Published: 2019-07-30
  • -
  • Publisher: IBM Redbooks

Continuing its commitment to developing and delivering industry-leading storage technologies, IBM® introduces Data Reduction Pools (DRP) and Deduplication powered by IBM SpectrumTM Virtualize, which are innovative storage features that deliver essential storage efficiency technologies and exceptional ease of use and performance, all integrated into a proven design. This book discusses Data Reduction Pools (DRP) and Deduplication and is intended for experienced storage administrators who are fully familiar with IBM Spectrum Virtualize, SAN Volume Controller, and the Storwize family of products.

Data Reduction and Error Analysis for the Physical Sciences
  • Language: en
  • Pages: 344

Data Reduction and Error Analysis for the Physical Sciences

  • Type: Book
  • -
  • Published: 2003
  • -
  • Publisher: Unknown

The purpose of this book is to provide an introduction to the concepts of statistical analysis of data for students at the undergraduate and graduate level, and to provide tools for data reduction and error analysis commonly required in the physical sciences. The presentation is developed from a practical point of view, including enough derivation to justify the results, but emphasizing methods of handling data more than theory. The text provides a variety of numerical and graphical techniques. Computer programs that support these techniques will be available on an accompanying website in both Fortran and C++.

Unsupervised Learning Approaches for Dimensionality Reduction and Data Visualization
  • Language: en
  • Pages: 174

Unsupervised Learning Approaches for Dimensionality Reduction and Data Visualization

  • Type: Book
  • -
  • Published: 2021-09-01
  • -
  • Publisher: CRC Press

Unsupervised Learning Approaches for Dimensionality Reduction and Data Visualization describes such algorithms as Locally Linear Embedding (LLE), Laplacian Eigenmaps, Isomap, Semidefinite Embedding, and t-SNE to resolve the problem of dimensionality reduction in the case of non-linear relationships within the data. Underlying mathematical concepts, derivations, and proofs with logical explanations for these algorithms are discussed, including strengths and limitations. The book highlights important use cases of these algorithms and provides examples along with visualizations. Comparative study of the algorithms is presented to give a clear idea on selecting the best suitable algorithm for a ...

Big Digital Forensic Data
  • Language: en
  • Pages: 96

Big Digital Forensic Data

  • Type: Book
  • -
  • Published: 2018-04-24
  • -
  • Publisher: Springer

This book provides an in-depth understanding of big data challenges to digital forensic investigations, also known as big digital forensic data. It also develops the basis of using data mining in big forensic data analysis, including data reduction, knowledge management, intelligence, and data mining principles to achieve faster analysis in digital forensic investigations. By collecting and assembling a corpus of test data from a range of devices in the real world, it outlines a process of big data reduction, and evidence and intelligence extraction methods. Further, it includes the experimental results on vast volumes of real digital forensic data. The book is a valuable resource for digital forensic practitioners, researchers in big data, cyber threat hunting and intelligence, data mining and other related areas.

The Data Reduction Laboratory
  • Language: en
  • Pages: 18

The Data Reduction Laboratory

  • Type: Book
  • -
  • Published: 1970
  • -
  • Publisher: Unknown

Data reduction facility for rapid analysis of space flight telemetry data.

A primer in data reduction
  • Language: en

A primer in data reduction

  • Type: Book
  • -
  • Published: 1986
  • -
  • Publisher: Unknown

None

Introduction and Implementation of Data Reduction Pools and Deduplication
  • Language: en

Introduction and Implementation of Data Reduction Pools and Deduplication

  • Type: Book
  • -
  • Published: 2018
  • -
  • Publisher: Unknown

None

Use of High-speed Data Reduction and Processing in the Mineral Industry
  • Language: en
  • Pages: 92

Use of High-speed Data Reduction and Processing in the Mineral Industry

  • Type: Book
  • -
  • Published: 1962
  • -
  • Publisher: Unknown

None