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Kansas State University Libraries

Conference

2001

Incomplete factorial design

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Full-Text Articles in Life Sciences

Model Building In Multi-Factor Plant Nutrition Experiments, L. M. Olson, W. W. Stroup, E. T. Paparozzi, M. E. Conley Apr 2001

Model Building In Multi-Factor Plant Nutrition Experiments, L. M. Olson, W. W. Stroup, E. T. Paparozzi, M. E. Conley

Conference on Applied Statistics in Agriculture

Often, the goal of plant science experiments is to model plant response as a function of quantitative treatment factors, such as the amount of nutrient applied. As the number of factors increases, modeling the response becomes increasingly challenging, especially since the resources available for such experiments are usually severely limited. Typical methods of analysis, notably second-order response surface regression, often fail to accurately explain the data. Alternatives such as non-linear models and segmented regression have been used successfully with two-factor experiments (Landes, et. aI, 1999). This paper extends previous work to three-and-more factor experiments. Models are assessed to explain the …