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Farmers’ Adoption Path of Precision Agriculture Technology

Published online by Cambridge University Press:  01 June 2017

N. J. Miller*
Affiliation:
Kansas State University, 342 Waters Hall, Manhattan, Kansas, USA
T. W. Griffin
Affiliation:
Kansas State University, 342 Waters Hall, Manhattan, Kansas, USA
J. Bergtold
Affiliation:
Kansas State University, 342 Waters Hall, Manhattan, Kansas, USA
I. A. Ciampitti
Affiliation:
Kansas State University, 342 Waters Hall, Manhattan, Kansas, USA
A. Sharda
Affiliation:
Kansas State University, 342 Waters Hall, Manhattan, Kansas, USA
*
E-mail: njmill@ksu.edu
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Abstract

Precision agriculture technologies have been adopted individually and in bundles. A sample of 348 Kansas Farm Management Association farm-level observations provides insight into technology adoption patterns of precision agriculture technologies. Estimated transition probabilities shed light on how adoption paths lead to bundling of technologies. Three information intensive technologies were assigned to one of eight possible bundles, and the sequence of adoption was examined using Markov transition processes. The probability that farms remain with the same bundle or transition to a different bundle by the next time period are reported. Farms with the complete bundle of all three technologies were likely to persist with their current technology.

Type
PA in practice
Copyright
© The Animal Consortium 2017 

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