DIABETES CLASSIFICATION AND PREDICTION USING ARTIFICIAL NEURAL NETWORK
Journal: International Journal of Computer Engineering and Technology (IJCET) (Vol.10, No. 3)Publication Date: 2019-06-28
Authors : Kshitij Tripathi;
Page : 154-165
Keywords : Classification; Artificial Neural Network; Machine Learning; Cross Validation; Clustering; K-fold TVT;
Abstract
The classification of data is an important field of data mining comes under supervised learning. In this approach classifier is trained on the pre-categorized data thereafter tested on unseen part called test data to evaluate it. The other related field clustering comes under unsupervised learning is used for categorizing data into different clusters or assigning labels to them which are previously unknown. In this article the classification of data is done and we are using artificial neural networks (ANN) for pre-processing i.e. removing noisy instances through novel clustering technique and then classifying pre-processed data through ANN. Both are exhaustive approaches. The data set used in this article is PIMA Indian diabetes data set available on UCI repository
Other Latest Articles
- AN EFFICIENCT LWSP TECHNIQUE IN WSN WITH SHORTEST PATH ROUTINF FOR LESS LATENCY IN DATA TRANSMISSION
- AGRICULTURE CROP SIMULATION MODELS USING COMPUTATIONAL INTELLIGENCE
- THE MECHANISMS OF ADAPTING THE PEDAGOGICAL CONTENT TO THE LEARNER'S PROFILE IN A DYNAMIC CEHL ENVIRONMENT
- AN APPROACH FOR PREDICTION OF CROP YIELD USING MACHINE LEARNING AND BIG DATA TECHNIQUES
- A STUDY ON REGULARIZATION FUNCTIONS AND REGULATION PARAMETERS IN IMAGE RESTORATION
Last modified: 2020-01-17 20:39:26