Corpus ID: 15439660

Applying a Machine Learning Workbench: Experience with Agricultural Databases

@inproceedings{Garner1996ApplyingAM,
  title={Applying a Machine Learning Workbench: Experience with Agricultural Databases},
  author={Stephen R. Garner and Sally Jo Cunningham and Geoffrey Holmes and Craig G. Nevill-Manning and Ian H. Witten},
  year={1996}
}
  • Stephen R. Garner, Sally Jo Cunningham, +2 authors Ian H. Witten
  • Published 1996
  • Computer Science
  • This paper reviews our experience with the application of machine learning techniques to agricultural databases. We have designed and implemented a machine learning workbench, WEKA, which permits rapid experimentation on a given dataset using a variety of machine learning schemes, and has several facilities for interactive investigation of the data: preprocessing attributes, evaluating and comparing the results of different schemes, and designing comparative experiments to be run off-line. We… CONTINUE READING

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