Evaluation of Classifiers to Enhance Model Selection

Abstract

The various tasks like classification, clustering and association rule deriving are performed in the data-mining for the pattern extraction. The performance evaluation measures make each task distinct and meaningful. The plenty of machine learning algorithms helps in the different ways. The classification helps to predict about the future well in advance and make necessary actions thus it otherwise called as actionable data mining. In this paper we plan to give the overview about various classification algorithms by Waikato Environment for Knowledge Analysis otherwise shortly called as WEKA. The measures found in this helps to determine the best model and proposed statistical analysis namely the paired t-test to enhance the model selection. The evaluations make the promising environment for the model selection.

Authors and Affiliations

R. Sujatha , D. Ezhilmaran

Keywords

Related Articles

Noisy Image Segmentation Based On Genetic Artificial Bee Colony Algorithm

Segmentation of images is a very challenging problem due to the presence of noise in the images and its widespread usage and applications. In this paper we proposed the GABC-Genetic Artificial Bee Colony Algorithm which...

A Survey on Technologies, Applications, Challenges in IOT

IoT would add a new dimension to the world of information and communication. IoT technologies are summarized suchlike RFID systems,NFC,Wireless sensor networks,applications. The impacts of their potential applications ar...

AI Banking Agent

Our application is designed for the web-clients of banks. Although, banks are always looking out for powerful and user friendly applications while upgrading their website [18], our platformindependent AI application uses...

“Brain to Brain Communication: Without any Interface images, thoughts can be exchanged between minds”

“Brain-Computing Interface” technology is used by the scientists that allow computer to analyze brain signals. This new technology in the field of research and development will bring a great benefit to the people who ca...

A Comprehensive Review on the Relevance Feedback in Visual Information Retrieval

Visual information retrieval in images and video has been developing rapidly in our daily life and is an important research field in content-based information indexing and retrieval, automatic annotation and structuring...

Download PDF file
  • EP ID EP120088
  • DOI -
  • Views 137
  • Downloads 0

How To Cite

R. Sujatha, D. Ezhilmaran (2013). Evaluation of Classifiers to Enhance Model Selection. International Journal of Computer Science & Engineering Technology, 4(1), 16-21. https://europub.co.uk/articles/-A-120088