V. Moustakis et al., SURVEY OF EXPERT OPINION - WHICH MACHINE LEARNING-METHOD MAY BE USED FOR WHICH TASK, International journal of human-computer interaction, 8(3), 1996, pp. 221-236
Determining the most appropriate Machine Learning (ML) method, system,
or algorithm for a particular application is not trivial. This articl
e reports on a survey of 103 experts specializing in ML who were asked
to rate ML method appropriateness to intelligent tasks. Ratings were
captured via a structured questionnaire including 12 ML methods and 9
task categories. Results showed that the experts mapped particular ML
methods to task categories. Factor analysis revealed three fundamental
factors, which explained most of the variance in the expert ratings.
Machine learning methods could be grouped on the basis of these factor
s into six application categories, wherein one or more methods were de
emed most appropriate by the evaluated group of experts. This, in turn
, concludes that cooperation between alternative ML methods may be nec
essary to support one or more intelligent tasks.