Assessing regional volatility and estimating regional cotton acres in the United States

Date

2013-04-19

Journal Title

Journal ISSN

Volume Title

Publisher

Kansas State University

Abstract

The objective of the research is to understand the volatility of cotton acres and estimate planted acres based on the factors that drive volatility in the United States at a regional level. Estimating cotton acres is important so that demand for cotton seed and technology can be anticipated and the appropriate investments in cotton seed production can be made. Post Multi-Fiber Arrangement, the US cotton economy has entered a state of imperfect completion which makes cotton price, ending stocks and the relationship of cotton to other crops important in understanding volatility in cotton acres. Linear Regression, Random Forest and Partial Least Squares Neural Networks (PLS NN) were used to estimate cotton acres at a US and Regional Level. The modeling approaches used to estimate change in acres yielded similar performance for U.S. total, Southwest, and West. The PLS NN was slightly better for the Delta and Southeast, where more crop alternatives exist. Random Forest offered a different perspective on variable importance in all regions.

Description

Keywords

Cotton, Forecasting, Variability, Acres

Graduation Month

May

Degree

Master of Agribusiness

Department

Department of Agricultural Economics

Major Professor

Vincent Amanor-Boadu

Date

2013

Type

Thesis

Citation