A Review of KDD-Data Mining Framework and Its Application in Logistics and Transportation

Fauziah Abdul Rahman, Siti Maryam Shamsuddin, Shafaatunnur Hassan, Norhaidah Abu Haris

Abstract


In this paper, an understanding and a review of Knowledge Discovery Database Data Mining (DM) development and its applications in logistics and specifically transportation are highlighted. Even though data mining has been successful in becoming a major component of various business processes and applications, the benefits and real-world expectations are very important to consider. It is also surprising fact that very little is known to date about the usefulness of applying data mining in transport related research. From the literature, the frameworks for carrying out knowledge discovery and data mining have been revised over the years to meet the business expectations. The paper is concluded by proposing a framework for actionable knowledge discovery and data mining to be applicable in real life application such as within the context of transportation industry.  

Keywords— Data Mining, Knowledge Discovery Database-Data Mining (KDD-DM), Domain Driven Data Mining (DDDM) Knowledge Discovery, Domain Driven Data Mining- Actionable Knowledge Discovery (AKD-KDD), Logistics, Fleet Maintenance.


References



Full Text: PDF

Refbacks

  • There are currently no refbacks.


Copyright © ExcelingTech Publishers, London, UK

Creative Commons License