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doi:10.1094/CCHEM-84-2-0152
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VIEW
ARTICLE
Classification of Dry-Milled Maize Grit Yield Groups Using Quadratic
Discriminant Analysis and Decision Tree Algorithm.
Kyung-Min Lee (1), Timothy J. Herrman (1,2), Scott R. Bean (3), David S.
Jackson (4), and Jane Lingenfelser (5). (1) Office of the Texas State Chemist,
Texas Agricultural Experiment Station, College Station, TX 77841-3160. (2)
Corresponding author. Phone: 979-845-1121. Fax: 979-845-1389. E-mail: <tjh@otsc.tamu.edu> (3) USDA-ARS, Grain Marketing and Production Research Center,
Manhattan, KS 66502. Names are necessary to report
factually on available data; however, the USDA does not guarantee the standard
of a product, nor does the use of the name by the USDA imply any approval of the
product to the exclusion of others that may also be suitable. (4) Department of
Food Science and Technology, University of Nebraska-Lincoln, Lincoln, NE
68583-0919. A contribution of the University of Nebraska Agricultural Research
Division, supported in part by funds provided through the Hatch Act. Mention of
a trade name, proprietary product, or company name is for presentation clarity
and does not imply endorsement by the authors or the University of Nebraska. (5)
Department of Agronomy, Kansas State University, Manhattan, KS 66506. Cereal
Chem. 84(2):152–161. Accepted November 29, 2006. Copyright 2007 AACC
International, Inc.
A genetically and environmentally diverse collection of maize (Zea maize
L.) samples was evaluated for physical properties and grit yield to help develop
a standard set of criteria to identify grain best suited for dry-milling.
Application of principal component analysis (PCA) reduced a set of approximately
500 samples collected from six states to 154 maize hybrids. Selected maize
hybrids were placed into seven groups according to their dry-milled grit yields.
Regression analysis explained only 50% of the variability in dry-milling grit
yield. Patterns of differences in the physical properties for the seven grit
yield groups implied that the seven yield groups could be placed into two or
three groups. Using two pattern recognition techniques for improving
classification accuracy, quadratic discriminant analysis and the classification
and regression tree (CART) model, dry-milled grit yield groups were predicted.
The estimated correct classification rates were 69–80% when the samples were
divided into three yield groups and 81–90% when samples were divided into two
yield groups. The results indicated the comparable success of both techniques
and the superiority of the decision tree algorithm to quadratic discriminant
analysis by offering higher accuracy and clearer classification rules in
differentiating among dry-milled grit yield groups.
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