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MacHine Learning, Neural and Statistical Classification

By Michie, D.

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Book Id: WPLBN0003842447
Format Type: PDF eBook :
File Size:
Reproduction Date: 2015

Title: MacHine Learning, Neural and Statistical Classification  
Author: Michie, D.
Volume:
Language: English
Subject: MacHine Learning, Ai and Robotics, Programming
Collections: Online Programming Books
Historic
Publication Date:
1994
Publisher: Ellis Horwood

Citation

APA MLA Chicago

D.Michie,. (1994). MacHine Learning, Neural and Statistical Classification. Retrieved from http://kindle.worldlibrary.net/


Description
Description: This integrated volume provides a concise introduction to each method, and reviews comparative trials in large-scale commercial and industrial problems.

Table of Contents
TOC : Classification - Classical Statistical Methods - Modern Statistical Techniques - Machine Learning of Rules and Trees - Neural Networks - Methods for Comparison - Review of Previous Empirical Comparisons - Dataset Descriptions and Results - Analysis of Results - Conclusions - Knowledge Representation - Learning to Control Dynamical Systems.


 

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