DocumentCode
3731384
Title
A Matrix-Based Incremental Attribute Reduction Approach under Knowledge Granularity on the Variation of Attribute Set
Author
Yunge Jing;Tianrui Li
Author_Institution
Sch. of Inf. Sci. &
fYear
2015
Firstpage
34
Lastpage
39
Abstract
Attribute reduction in rough sets is a key step to discover interesting patterns in decision systems with numbers of attributes available. Moreover, data processing tools have been developed rapidly in recent years, and then the information system may increase quickly in attributes with time in real-life applications. How to update attribute reduction efficiently becomes an important task in knowledge discovery related tasks. The attribute reduction of information systems may alter with the attributes increasing. This paper aims for investigation of incremental attribute reduction algorithm based on knowledge granularity in information systems on the variation of attribute set. Matrix-based incremental mechanisms to calculate the new knowledge granularity are first introduced. Then, the corresponding incremental algorithm is presented for attribute reduction based on the calculated knowledge granularity when multiple attributes are added to a decision table. Finally, experiments performed on UCI data sets and the complexity analysis show that the proposed matrix-based incremental method is effective and efficient to update attribute reduction with the increase of attributes.
Keywords
"Information systems","Heuristic algorithms","Algorithm design and analysis","Yttrium","Knowledge engineering","Information science","Rough sets"
Publisher
ieee
Conference_Titel
Intelligent Systems and Knowledge Engineering (ISKE), 2015 10th International Conference on
Type
conf
DOI
10.1109/ISKE.2015.40
Filename
7383021
Link To Document