Madushanka Fonseka created DERBY-6487:
-----------------------------------------

             Summary: I've been working with Derby to make it possible to 
assist fuzzy based queries.  Analysing imprecise data hidden inside crisp data 
is famous among researchers.Intention of opening a JIRA issue is submitting  
Paper for Apache community to review.
                 Key: DERBY-6487
                 URL: https://issues.apache.org/jira/browse/DERBY-6487
             Project: Derby
          Issue Type: Improvement
          Components: Miscellaneous, SQL
            Reporter: Madushanka Fonseka


I have selected fuzzy logy as my model of computing and Derby as my database. 
So "Select * from employee where salary is high " can be executed. I'll provide 
more insights in future.

 INTRODUCTION : Relational database systems manage only crisp data.Relational 
models lack flexibility in defining and handling vague data. Due to the 
limitations in Relational models & SQL intelligent querying  cannot be made 
against relational databases.This research is an effort to enhance & extend 
relational model to assist fuzzy query in relational models. Fuzzy queries are 
linguistic expressions and based on SQL.

MOTIVATION                         
Relational databases are pervasive in modern day computing.
Corperate relational databases contain large amount of data which can be used 
to provide intelligent solutions.
Relational database systems can be extended for data mining and machine 
learning operations. 

Why Fuzzy Set Theory ? 
  • In order to study the contextual semantics of vague data Fuzzy Set Theory 
provides an ideal framework.
  • Both Fuzzy Set Theory and Relational Database Theory based on “Sets”. • 
Hence,  joining them together makes a strong framework to study imprecise data. 
  • Linguistic expressions closed to natural language could be defined using 
fuzzy logy. 
 



--
This message was sent by Atlassian JIRA
(v6.1.5#6160)

Reply via email to