Introduction to Hierarchical Bayesian Modeling for Ecological Data (Hardcover)

Author: Parent, Eric

Customer Reviews   Write a Review

Be the first to review this item and earn 25 Rakuten Super Points™

Product Overview

Bayesian statistics are becoming the contemporary standard for treating ecological data. This book is designed for readers who are interested in the quantitative analysis of environmental data yet reluctant to apply ready-made technical recipes without understanding how and why they work. It focuses on up-to-date ecological issues, including biodiversity, community behavior, and genomics, and shows how they could be revisited by using Bayesian modeling techniques. Highly practical, the text encourages readers to deal with advanced ecological issues in practice and to implement models of their own.

Specifications

Publisher Taylor & Francis
Mfg Part# 9781584889199
SKU 204190412
Format Hardcover
ISBN10 1584889195
Release Date 8/1/2012
Product Attributes
Book Format Hardcover
Number of Pages 0405
Publisher CRC Press
loading
$242.55 + $5.98 shipping
Rakuten Super Points Earn 243 ($2.43) Rakuten Super Points™
What are Rakuten Super Points™?
Get rewarded when you shop! Earn 1 point per dollar spent. That's like getting cash back on every purchase. Easy to see matured points in checkout. Use points just like cash.
Learn More
Get this item for
(price with shipping)
(redeem points)
Format: Hardcover
Condition: Used-Good
In Stock. Usually Ships in 1 to 2 business days
Please select an option to buy
Add to Cart

What is a Marketplace and Shop Owner?
  • Our marketplace is a platform where approved third-party retailers (Shop Owners) can sell their products
  • Items are sold and shipped by Shop Owners
  • Your credit card and personal information remain secure; Rakuten.com meets all PCI Security Standards.
  • Purchases can only be returned to the Shop Owner
  • All purchases receive Rakuten Super Points™
ADVERTISEMENT
Promotions & Offers (1)
  •  custom promo
    5% Back* Sitewide with Promo Code Rewardme *See page for details
ADVERTISEMENT
ADVERTISEMENT