Analysis of C4.5 and K-Nearest Neighbor (KNN) Method on Algorithm of Clustering For Deciding Mainstay Area

Journal Title: IOSR Journals (IOSR Journal of Computer Engineering) - Year 2016, Vol 18, Issue 2

Abstract

 Development as a sustainable activity needs a good plan, so the programs can be effective and have a clear objective. Therefore, a model to help the analysis is significantly needed in determining the priority area to conduct better development in the future. This research applies the concept of Klassen Typology to analyze PDRB data in Papua Province. Based on the result of using Klassen typology analysis method, there are 4 (four) quadrants of area classification in Papua Province. Twenty nine regencies were analyzed based on PDRB data to investigate which area can be used as the development of priority area in the future. The method used in this study is C4.5 and k-nearest neighbor . Time complexity becomes test standard of a particularalgorithm to get efficient execution time when implemented into programming language. The approach of asymptotic analysis using the concept of Big-o was one of the techniques that are usually used to test time complexity of an algorithm. Based on the testing result of both methods, it shows that the result of running time of KNN is more stable than of C4.5 although the analysis of Big-O gives complexity of the same time.

Authors and Affiliations

Heru Ismanto , , Retantyo Wardoyo

Keywords

Related Articles

 Crawler with Search Engine based Simple Web Application System for Forum Mining

 Abstract : Now-a-days the growth of online users increased infinitely depending upon the information in web sources. Web mining is an important term to manage the data from web which has different categorization as...

 A Novel Approach for Semi Supervised Document Clustering with Constraint Score based Feature Supervision

Abstract: Text document clustering provides an effective technique to manage a huge amount of retrieval outcome by grouping documents in a small number of meaningful classes. In unsupervised clustering method the unlabel...

 An Improved Hashing Method for the Detection of Image Forgery

 Abstract: Detection of image forgery is always a crucial factor in image forensic and security applications. Usually this detection is possible with the help of local or global features of an image. We can ensure...

 Gesture mimicking two Wheeler differential drive Arduino based robot and iRobot Create

Abstract: The project discussed here is a gesture controlled robot having two wheels on either side just like a car. The key features described in the project are i) controlling the movement of the wheels using an embedd...

 Automated system for deployment of websites and windows services to the production servers

 Abstract: This paper is discussed on automated system for deployment of websites and windows services to the production servers. The aim of this paper is to develop and implement an automatic system for deployment...

Download PDF file
  • EP ID EP106963
  • DOI -
  • Views 91
  • Downloads 0

How To Cite

Heru Ismanto, , Retantyo Wardoyo (2016).  Analysis of C4.5 and K-Nearest Neighbor (KNN) Method on Algorithm of Clustering For Deciding Mainstay Area. IOSR Journals (IOSR Journal of Computer Engineering), 18(2), 86-92. https://europub.co.uk./articles/-A-106963