AN APPROPRIATE FEATURE CLASSIFICATION MODEL USING KOHONEN NETWORK

Abstract

Self-Organizing Maps are widely used unsupervised neural network architecture to discover group of structures in a dataset. Feature Selection plays a major role in Machine Learning. “An Appropriate Feature Classification Model using Kohonen Network (AFCM)” is based on Recurrent Neural Network approach for feature selection which clusters relevant and irrelevant features from the dataset present in cloud environment. The proposed model not only clusters relevant and irrelevant features but also refine the clustering process by minimizing the errors and irrelevant features. The AFCM consists of Feature Selection Organizer and Convergence SOM. In the Feature Selection Organizer, features are clusters into Relevant and Irrelevant Feature classes. The Convergence SOM helps to improve the prediction accuracy in the Relevant Feature set and to reduce the irrelevant features. The efficiency of the proposed model is extensively tested upon real world medical datasets. The experimental result on standard medical dataset shows that the AFCM is better than the Traditional models.

Authors and Affiliations

R. SRIDEVI, DR. P. DINADAYALAN and S. BASTIN BRITTO

Keywords

Related Articles

TOWARDS ENERGY EFFICIENT CLOUD COMPUTING USING DEPENDENCY GRAPH

Nowadays, research are being directed in the field of large system models. These large system models generally manages the distributed environment to break down and understand behavior of the systems. A large number of...

8 BIT SINGLE CYCLE PROCESSOR

Processors are an integral part of the computer and electronics industry. Every computational unit contains some sort of processing circuit, designed to perform multiple operations on a single device and can be categor...

WIRELESS SENSOR NETWORKS CONGESTION AND ROLE OF ARTIFICIAL INTELLIGENCE

The occurrence of the congestion has an extremely deleterious impact on the performance of Wireless Sensor Network (WSNs). Some novel blockage control method utilizing computerized reasoning for remote sensor systems....

ENHANCED CLUSTER HEAD MANAGEMENT IN LARGE SCALE WIRELESS SENSOR NETWORK USING PARTICLE SWARM OPTIMIZATION (PSO) ON THE BASIS OF DISTANCE, DENSITY & ENERGY

Wireless Sensor Networks (WSNs) are utilized for a plethora of applications such as weather forecasting, monitoring systems, surveillance, and so on. The critical issues of the WSN are energy constraints, limited memor...

MACHINE AS ONE PLAYER IN INDIAN COWRY BOARD GAME: BASIC PLAYING STRATEGIES

Cowry game is an ancient board game from India, also known as Chowka Bhara. It is a race game of chance and strategy for 2-4 players, in which playing pieces are moved around a square board according to the throw of sp...

Download PDF file
  • EP ID EP46543
  • DOI 10.34218/IJCET.10.2.2019.016
  • Views 208
  • Downloads 0

How To Cite

R. SRIDEVI, DR. P. DINADAYALAN and S. BASTIN BRITTO (2019). AN APPROPRIATE FEATURE CLASSIFICATION MODEL USING KOHONEN NETWORK. International Journal of Computer Engineering & Technology (IJCET), 10(2), -. https://europub.co.uk/articles/-A-46543