The IRMA Community
Newsletters
Research IRM
Click a keyword to search titles using our InfoSci-OnDemand powered search:
|
Fuzzy Linguistic Modelling in Multi Modal Human Computer Interaction: Adaptation to Cognitive Styles using Multi Level Fuzzy Granulation Method
Abstract
The purpose of this chapter is to explore fuzzy logic based methodology for computing an adaptive interface in an environment of imperfect, vague, multimodal, complex nonlinear hyper information space. To this end, based on fuzzy linguistic modelling and fuzzy multi level granulation an adaptation strategy to cognitive/learning styles is presented. The granulated fuzzy if-then rules are utilized to adaptively map cognitive/learning styles of users to their information navigation and presentation preferences through natural language expressions. The important implications of this approach are that, first, uncertain and vague information is handled; second, a mechanism for approximate adaptation at a variety of granulation levels is provided; third, a qualitative linguistic model of adaptation is presented. The proposed approach is close to human reasoning and thereby lowers the cost of solution, and facilitates the design of human computer interaction systems with high level intelligence capability.
Related Content
Timothy Gifford.
© 2023.
23 pages.
|
Sandy White Watson.
© 2023.
18 pages.
|
Elaine Wilson, Sarah Chesney.
© 2023.
32 pages.
|
Michael Finetti, Nicole Luongo.
© 2023.
30 pages.
|
Anurag Vijay Agrawal, R. Pitchai, C. Senthamaraikannan, N. Alangudi Balaji, S. Sajithra, Sampath Boopathi.
© 2023.
23 pages.
|
Keri A. Sullivan.
© 2023.
13 pages.
|
Nicole L. Lambright.
© 2023.
16 pages.
|
|
|