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Experimental Design and Analysis for Tree Improvement

C. E. Harwood, A. C. Matheson, E. R. Williams, et al.

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Naturwissenschaften, Medizin, Informatik, Technik / Technik

Beschreibung

Experimental Design and Analysis for Tree Improvement provides a set of practical procedures to follow when planning, designing and analysing tree improvement trials. Using examples, it outlines how to:

  • design field, glasshouse and laboratory trials
  • efficiently collect and construct electronic data files
  • pre-process data, screening for data quality and outliers
  • analyse data from single and across-site trials
  • interpret the results from statistical analyses.

The authors address the many practical issues often faced in forest tree improvement trials and describe techniques that will give meaningful results. The techniques provided are applicable to the improvement of not only trees, but to crops in general.

This fully revised third edition includes the construction of p-rep and spatial designs using the commercially available software package for design generation (CycDesigN). For analysis of the examples, it provides online Genstat and SAS programs and a link to R programs.

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Schlagwörter

Block designs, Generalised lattices, P-rep designs, Data pre-processing, Multi-site trials, Forest genetics, Mixed-model analysis, Row-column designs, Spatial designs