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Applying a Machine Learning Workbench: Experience with Agricultural Databases (1995)  (Make Corrections)  (2 citations)
Stephen R. Garner, Sally Jo Cunningham, Geoffrey Holmes, Craig G. Nevill-Manning, Ian H. Witten



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Abstract: 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... (Update)

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.... data subset that is presented to the ML algorithm (for a case study of this type of data cleansing and file construction, see [Garner, et al., 1995]) For example, many raw data files contain attributes that are essentially symbolic, but which are encoded as numerals such as...

...in constructing the two dimensional views. We have extensive experience in the process of file mining using machine learning algorithms [2,3], and it is our belief that this process could be dramatically improved by taking advantage of a metadata model of the data in the...

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MetaData for Database Mining - John Cleary Geoffrey (1996)   (Correct)
Dataset Cataloging Metadata for Machine Learning Applications.. - Cunningham (1997)   (Correct)

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BibTeX entry:   (Update)

Garner S.R., Cunningham S.J., Holmes G., Nevill-Manning C.G. and Witten I.H. (1995) "Applying a Machine Learning Workbench: Experience with Agricultural Databases," Proc Machine Learning in Practice Workshop, Machine Learning Conference, Tahoe City, CA, USA, pp. 14-21. http://citeseer.ist.psu.edu/article/garner95applying.html   More

@misc{ garner95applying,
  author = "S. Garner and S. Cunningham and G. Holmes and C. Nevill-Manning and I.
    Witten",
  title = "Applying a Machine Learning Workbench: Experience with Agricultural Databases",
  text = "Garner S.R., Cunningham S.J., Holmes G., Nevill-Manning C.G. and Witten
    I.H. (1995) Applying a Machine Learning Workbench: Experience with Agricultural
    Databases, Proc Machine Learning in Practice Workshop, Machine Learning
    Conference, Tahoe City, CA, USA, pp. 14-21.",
  year = "1995",
  url = "citeseer.ist.psu.edu/article/garner95applying.html" }
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