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CONSULTANT: providing advice for the machine learning toolbox

Published online by Cambridge University Press:  04 August 2010

M. A. Bramer
Affiliation:
University of Portsmouth
S. Craw
Affiliation:
Department of Computing Science University of Aberdeen Aberdeen AB9 2UE
D. Sleeman
Affiliation:
Department of Computing Science University of Aberdeen Aberdeen AB9 2UE
N. Graner
Affiliation:
Department of Computing Science University of Aberdeen Aberdeen AB9 2UE
M. Rissakis
Affiliation:
Department of Computing Science University of Aberdeen Aberdeen AB9 2UE
S. Sharma
Affiliation:
Department of Computing Science University of Aberdeen Aberdeen AB9 2UE
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Summary

Abstract

The Machine Learning Toolbox (MLT), an Esprit project (P2154), provides an integrated toolbox of ten Machine Learning (ML) algorithms. One distinct component of the toolbox is Consultant, an advice-giving expert system, which assists a domain expert to choose and use a suitable algorithm for his learning problem. The University of Aberdeen has been responsible for the design and implementation of Consultant.

Consultant's knowledge and domain is unusual in several respects. Its knowledge represents the integrated expertise of ten algorithm developers, whose algorithms offer a range of ML techniques; but also some algorithms use fairly similar approaches. The lack of an agreed ML terminology was the initial impetus for an extensive, associated help system. From an MLT user's point of view, an ML beginner requires significant assistance with terminology and techniques, and can benefit from having access to previous, successful applications of ML to similar problems; but in contrast a more experienced user of ML does not wish constant supervision. This paper describes Consultant, discusses the methods used to achieve the required flexibility of use, and compares Consultant's similarities and distinguishing features with more standard expert system applications.

INTRODUCTION

The Machine Learning Toolbox (MLT), an Esprit project (P2154), provides an integrated toolbox of ten Machine Learning (ML) algorithms. One distinct component of the toolbox is Consultant, an advice-giving expert system. It provides domain experts with assistance and guidance on the selection and use of tools from the toolbox, but it is specifically aimed at experts who are not familiar with ML and its design has focused on their needs.

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Publisher: Cambridge University Press
Print publication year: 1993

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  • CONSULTANT: providing advice for the machine learning toolbox
    • By S. Craw, Department of Computing Science University of Aberdeen Aberdeen AB9 2UE, D. Sleeman, Department of Computing Science University of Aberdeen Aberdeen AB9 2UE, N. Graner, Department of Computing Science University of Aberdeen Aberdeen AB9 2UE, M. Rissakis, Department of Computing Science University of Aberdeen Aberdeen AB9 2UE, S. Sharma, Department of Computing Science University of Aberdeen Aberdeen AB9 2UE
  • M. A. Bramer, University of Portsmouth, R. W. Milne
  • Book: Research and Development in Expert Systems IX
  • Online publication: 04 August 2010
  • Chapter DOI: https://doi.org/10.1017/CBO9780511569944.002
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  • CONSULTANT: providing advice for the machine learning toolbox
    • By S. Craw, Department of Computing Science University of Aberdeen Aberdeen AB9 2UE, D. Sleeman, Department of Computing Science University of Aberdeen Aberdeen AB9 2UE, N. Graner, Department of Computing Science University of Aberdeen Aberdeen AB9 2UE, M. Rissakis, Department of Computing Science University of Aberdeen Aberdeen AB9 2UE, S. Sharma, Department of Computing Science University of Aberdeen Aberdeen AB9 2UE
  • M. A. Bramer, University of Portsmouth, R. W. Milne
  • Book: Research and Development in Expert Systems IX
  • Online publication: 04 August 2010
  • Chapter DOI: https://doi.org/10.1017/CBO9780511569944.002
Available formats
×

Save book to Google Drive

To save content items to your account, please confirm that you agree to abide by our usage policies. If this is the first time you use this feature, you will be asked to authorise Cambridge Core to connect with your account. Find out more about saving content to Google Drive.

  • CONSULTANT: providing advice for the machine learning toolbox
    • By S. Craw, Department of Computing Science University of Aberdeen Aberdeen AB9 2UE, D. Sleeman, Department of Computing Science University of Aberdeen Aberdeen AB9 2UE, N. Graner, Department of Computing Science University of Aberdeen Aberdeen AB9 2UE, M. Rissakis, Department of Computing Science University of Aberdeen Aberdeen AB9 2UE, S. Sharma, Department of Computing Science University of Aberdeen Aberdeen AB9 2UE
  • M. A. Bramer, University of Portsmouth, R. W. Milne
  • Book: Research and Development in Expert Systems IX
  • Online publication: 04 August 2010
  • Chapter DOI: https://doi.org/10.1017/CBO9780511569944.002
Available formats
×