Classification of Signal Data Using Decision Trees
ABSTRACT
In this project, we propose the use of a decision tree as a method of
classifying different signal data. Two specific types of signal data
that we will attempt to classify are the scenic beauty values of
forestry images and the pronunciations of proper nouns. Decision trees
will be constructed for each set of the data using three decision tree
algorithms: Bayesian, C4, and CART. Evaluations will be conducted on
the two data sets using each of these three algorithms. A Graphical
User Interface (GUI) will be implemented to demonstrate the
performance of these algorithms.
A. Le, J. Ngan, and J. Shaffer
Department of Electrical and Computer Engineering
Mississippi State University
email: {le, ngan, shaffer}@cavs.msstate.edu
URL:
http://cavs.msstate.edu/research/isip/publications/courses/ece_4773/hse/ies/projects/group_dt/presentation/