Classification algorithms / Mike James

By: James, Mike [author]Material type: TextTextPublication details: New York : Wiley, c1985Description: xii, 209 pages : illustrations ; 23 cmISBN: 0471847992Subject(s): DISCRIMINANT ANALYSIS | MATHEMATICS | ALGORITHMS, CLASSIFICATIONLOC classification: QA 278.6 .J36 1985
Contents:
Contents: Classification -- Classification rules -- Practical classification: the normal case -- Classification in action -- Some practical considerations -- Evaluating rules: estimating error rates -- Feature selection: canonical analysis -- Feature selection: variable selection -- Categorical variables and non-parametric methods -- Artificial intelligence and pattern recognition -- App. 1. Matrix theory for statistics -- App. 2. A data generator -- App. 3. Fisher's Iris data.
Summary: The theory of classification described in this book is essentially concerned with finding an optimal classification rule.
Item type: Books
Tags from this library: No tags from this library for this title. Log in to add tags.
    Average rating: 0.0 (0 votes)
Item type Current library Home library Collection Shelving location Call number Copy number Status Date due Barcode
Books Books LRC - Annex
National University - Manila
Secondary Education - Mathematics Relegation Room GC QA 278.6 .J36 1985 (Browse shelf (Opens below)) c.1 Available NULIB000005021

Includes index.

Contents: Classification -- Classification rules -- Practical classification: the normal case -- Classification in action -- Some practical considerations -- Evaluating rules: estimating error rates -- Feature selection: canonical analysis -- Feature selection: variable selection -- Categorical variables and non-parametric methods -- Artificial intelligence and pattern recognition -- App. 1. Matrix theory for statistics -- App. 2. A data generator -- App. 3. Fisher's Iris data.

The theory of classification described in this book is essentially concerned with finding an optimal classification rule.

There are no comments on this title.

to post a comment.

© 2021 NU LRC. All rights reserved.Privacy Policy I Powered by: KOHA