Library Catalogue

Amazon cover image
Image from Amazon.com
Image from Google Jackets

The Shallow and the Deep A biased introduction to neural networks and old school machine learning Michael Biehl

By: Contributor(s): Material type: TextTextSeries: Open textbook libraryDistributor: Minneapolis, MN Open Textbook LibraryPublisher: Groningen, Netherlands University of Groningen Press 2023Copyright date: ©2023Description: 1 online resourceContent type:
  • text
Media type:
  • computer
Carrier type:
  • online resource
ISBN:
  • 9789403430270
Subject(s): LOC classification:
  • QA76
Online resources:
Contents:
Preface -- From neurons to networks -- Learning from example data -- The Perceptron -- Beyond linear separability -- Feed-forward networks for regression and classification -- Distance-based classifiers -- Model evaluation and regularization -- Preprocessing and unsupervised learning -- Concluding quote -- Appendix A: Optimization -- List of figures -- List of algorithms -- Abbrev. and acronyms -- Bibliography
Subject: The Shallow and the Deep is a collection of lecture notes that offers an accessible introduction to neural networks and machine learning in general. However, it was clear from the beginning that these notes would not be able to cover this rapidly changing and growing field in its entirety. The focus lies on classical machine learning techniques, with a bias towards classification and regression. Other learning paradigms and many recent developments in, for instance, Deep Learning are not addressed or only briefly touched upon. Biehl argues that having a solid knowledge of the foundations of the field is essential, especially for anyone who wants to explore the world of machine learning with an ambition that goes beyond the application of some software package to some data set. Therefore, The Shallow and the Deep places emphasis on fundamental concepts and theoretical background. This also involves delving into the history and pre-history of neural networks, where the foundations for most of the recent developments were laid. These notes aim to demystify machine learning and neural networks without losing the appreciation for their impressive power and versatility.
Tags from this library: No tags from this library for this title. Log in to add tags.
No physical items for this record

Preface -- From neurons to networks -- Learning from example data -- The Perceptron -- Beyond linear separability -- Feed-forward networks for regression and classification -- Distance-based classifiers -- Model evaluation and regularization -- Preprocessing and unsupervised learning -- Concluding quote -- Appendix A: Optimization -- List of figures -- List of algorithms -- Abbrev. and acronyms -- Bibliography

The Shallow and the Deep is a collection of lecture notes that offers an accessible introduction to neural networks and machine learning in general. However, it was clear from the beginning that these notes would not be able to cover this rapidly changing and growing field in its entirety. The focus lies on classical machine learning techniques, with a bias towards classification and regression. Other learning paradigms and many recent developments in, for instance, Deep Learning are not addressed or only briefly touched upon. Biehl argues that having a solid knowledge of the foundations of the field is essential, especially for anyone who wants to explore the world of machine learning with an ambition that goes beyond the application of some software package to some data set. Therefore, The Shallow and the Deep places emphasis on fundamental concepts and theoretical background. This also involves delving into the history and pre-history of neural networks, where the foundations for most of the recent developments were laid. These notes aim to demystify machine learning and neural networks without losing the appreciation for their impressive power and versatility.

Attribution-NonCommercial-ShareAlike

In English.

Description based on online resource

There are no comments on this title.

to post a comment.

© 2024, Kenya Medical Training College | All Rights Reserved