Machine Learning Methods for Ecological Applications

machine learning methods for ecological applications

more information about Machine Learning Methods for Ecological Applications

Machine Learning Methods for Ecological Applications

Editorial Reviews
Book Description
The last 25 years have seen a tremendous growth in the application of statistical and modelling techniques to ecological problems. This expansion has been accelerated by the increasing availability of software, books and computing power. However, the suitability of some of these approaches to data analysis, in a relatively knowledge-poor discipline such as ecology, can be questioned on grounds of appropriateness and robustness. One reason for these concerns is that many ecological problems are at best poorly defined and most lack algorithmic solutions. Machine learning methods offer the potential for a different approach to these difficult problems. One definition of machine learning is that it is concerned with inducing knowledge from data, where the data could be patterns in a game of chess or patterns in the species composition of natural communities. Unfortunately ecologists have little experience of these relatively recent and novel approaches to understanding data. This is a problem that is made more complex because there is no simple taxonomy of machine learning methods and there are relatively few examples in the mainstream ecological literature to encourage exploration. This is the first text aimed at introducing machine learning methods to a readership of professional ecologists. All but one of the chapters have been written by ecologists and biologists who highlight the application of a particular method to a particular class of problem. Examples include the identification of species, optimal mate choice, predicting species distributions and modelling landscape features. A group of experienced machine learning workers, who have become interested in environmental problems, have written a chapter that demonstrates how machine learning methods can be used to discover equations that describe the dynamic behaviour of ecological systems. The final chapter reviews `real learning', offering the potential for greater dialogue between the biological and machine learning communities.

Book Info
Designed to introduce machine learning methods to a readership of professional ecologists. Demonstrates how machine learning methods can be used to discover equations that describe the behavior of ecological systems. DLC: Ecology.

Machine Learning Methods for Ecological Applications,Alan H. Fielding,Springer,0412841908,Artificial Intelligence - General,Ecology,Life Sciences - Ecology,Machine Learning,Nature/Ecology,Science,Applied ecology,Science / Ecology

Discount Books:

  1. Mechanisms of Intracellular Trafficking and Processing of Proproteins
  2. Meditations In My Favourite Places In Southern Africa: A Travelogue for Inner and Outer Journeys
  3. Metal Speciation and Bioavailability in Aquatic Systems
  4. Molecular Genetics of Sex Determination
  5. Mutating Concepts, Evolving Disciplines: Genetics, Medicine, and Society (Philosophy and Medicine)
  6. Na+H+ Exchange
  7. Naturalism, Evolution and Mind (Royal Institute of Philosophy Supplements)
  8. Occurrence and Analysis of Organometallic Compounds in the Environment
  9. Peroxisome Proliferators: Unique Inducers of Drug-Metabolizing Enzymes
  10. Playas: Jewels of the Plains

Discount Books

Discount Books

Recommended Books

  1. John Hedgecoe's New Manual of Photography
  2. The Power of Women 2006 Calendar
  3. Cat on the Couch: Memoirs of a Cat's Journey into Psychotherapy
  4. Handbook of Insurance
  5. Classical Greats: Easy Playalong for Clarinet with CD
  6. Feeding a World Population of More than Eight Billion People : A Challenge to Science
  7. Fundamentals of General, Organic, and Biological Chemistry
  8. Fluids and Periodic Structures
  9. Internet Joke Book
  10. Hour of Judgment
  11. Golden Rules: Virtues of the Canine Character
  12. Family Circle Easy Crochet : 50 Fashion and Home Projects
  13. Huey Long
  14. Israel-Palestine in a Nutshell
  15. Gentianaceae : Systematics and Natural History