CLUSTER BASED BOOSTING TECHNIQUES FOR ACCURACY PREDICTION

Abstract

 In recent years encroachment of social media in human life is inexplicable. The greatest and most significant issue in latest technology is the fast retrieval of information from large databases. To overcome this, different techniques have been developed. Improving the retrieval process and its accuracy is a vital factor in the predictive analyses of Machine learning. Boosting is one of the techniques used for enhancing the accuracy of prediction in supervised learning. In this process, lot of noise data may arise which adds another problem in handling training data set. Extracting accurate data from the training dataset is an essential factor in applying clustering techniques. This paper surveys the various boosting/clustering techniques and compares them with a motive to suggest a better environment which is free from noise/errors so as to have maximum accuracy on the output data.

Authors and Affiliations

L. Hemalatha

Keywords

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  • EP ID EP164496
  • DOI 10.5281/zenodo.51531
  • Views 71
  • Downloads 0

How To Cite

L. Hemalatha (30).  CLUSTER BASED BOOSTING TECHNIQUES FOR ACCURACY PREDICTION. International Journal of Engineering Sciences & Research Technology, 5(5), 531-535. https://europub.co.uk/articles/-A-164496