Classifier Model using Artificial Neural Network

Authors

  • Inderjit Kaur
  • Dr. Pardeep Saini

Keywords:

Artificial Neural Network, supervised instance selection, Data classification, machine learning

Abstract

When it comes to AI and ML, precision in categorization is of the utmost importance. In this research, the use of supervised instance selection (SIS) to improve the performance of artificial neural networks (ANNs) in classification is investigated. The goal of SIS is to enhance the accuracy of future classification tasks by identifying and selecting a subset of examples from the original dataset. The purpose of this research is to provide light on how useful SIS is as a preprocessing tool for artificial neural network-based classification. The work aims to improve the input dataset to ANNs by using SIS, which may help with problems caused by noisy or redundant data. The ultimate goal is to improve ANNs' ability to identify data points properly across a wide range of application areas.

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Published

2023-08-26

How to Cite

Kaur, I., & Saini, D. P. (2023). Classifier Model using Artificial Neural Network. International Journal of Engineering, Business and Management, 7(4). https://journal-repository.com/index.php/ijebm/article/view/6601