Etd

 

Applying Machine Learning Techniques to Rule Generation in Intelligent Tutoring Systems Public

Downloadable Content

open in viewer

The purpose of this research was to apply machine learning techniques to automate rule generation in the construction of Intelligent Tutoring Systems. By using a pair of somewhat intelligent iterative-deepening, depth-first searches, we were able to generate production rules from a set of marked examples and domain background knowledge. Such production rules required independent searches for both the ""if"" and ""then"" portion of the rule. This automated rule generation allows generalized rules with a small number of sub-operations to be generated in a reasonable amount of time, and provides non-programmer domain experts with a tool for developing Intelligent Tutoring Systems.

Last modified
  • 02/01/2021
Creator
Contributors
Degree
Unit
Publisher
Language
  • English
Identifier
  • etd-0429104-112724
Keyword
Advisor
Defense date
Year
  • 2004
Date created
  • 2004-04-29
Resource type
Rights statement
License

Relationships

In Collection:

Items

Permanent link to this page: https://digital.wpi.edu/show/js956f87b