Generating Classification Rules from Training Samples

Abstract

In this paper, we describe an algorithm to extract classification rules from training samples using fuzzy membership functions. The algorithm includes steps for generating classification rules, eliminating duplicate and conflicting rules, and ranking extracted rules. We have developed software to implement the algorithm using MATLAB scripts. As an illustration, we have used the algorithm to classify pixels in two multispectral images representing areas in New Orleans and Alaska. For each scene, we randomly selected 10 per cent of the samples from our training set data for generating an optimized rule set and used the remaining 90 per cent of samples to validate the extracted rules. To validate extracted rules, we built a fuzzy inference system (FIS) using the extracted rules as a rule base and classified samples from the training set data. The results in terms of confusion matrices are presented in the paper.

Authors and Affiliations

Arun D. Kulkarni

Keywords

Related Articles

Comparison of Burden on Youth in Communicating with Elderly using Images Versus Photographs

Conversation is a good preventative against behavioral problems in the elderly. However, caregivers are usually very busy tending to patients and lack the time to communicate extensively with them. Toward overcoming such...

A New 30 GHz AMC/PRS RFID Reader Antenna with Circular Polarization

The work on this guideline focus on the development and the design of a circularly polarized metallic EBG antenna fed by two microstrip lines. In order to achieve that purpose, a list of indicative specifications has bee...

A Non-Linear Regression Modeling is used for Asymmetry Co-Integration and Managerial Economics in Iraqi Firms

This paper analyzes the cost asymmetry through managerial expectations in a nonlinear regression function. Two development determinants, asymmetry co-integration and managerial expectations are also considered. The resul...

Cross Site Scripting: Detection Approaches in Web Application

Web applications have become one of the standard platforms for service releases and representing information and data over the World Wide Web. Thus, security vulnerabilities headed to various type of attacks in web appli...

Improving Forecasting Accuracy in the Case of Intermittent Demand Forecasting

In making forecasting, there are many kinds of data. Stationary time series data are relatively easy to make forecasting but random data are very difficult in its execution for forecasting. Intermittent data are often se...

Download PDF file
  • EP ID EP319397
  • DOI 10.14569/IJACSA.2018.090601
  • Views 100
  • Downloads 0

How To Cite

Arun D. Kulkarni (2018). Generating Classification Rules from Training Samples. International Journal of Advanced Computer Science & Applications, 9(6), 1-6. https://europub.co.uk./articles/-A-319397