An Improved Method For Decision Tree Construction Based On Data Frequency

Authors

  • Piyush Gupta,Parikshit Tiwari

Keywords:

Decision Tree, Data Frequency, data mining

Abstract

A classification of the data mining methods would greatly simplify the understanding of the whole space of available methods. Decision tree learning algorithm has been successfully used in expert systems in capturing knowledge. Most decision tree classifiers are designed to classify the data with categorical or Boolean class labels. To the best of our knowledge, no previous research has considered the induction of decision trees from data with data dissimilarities. This work proposes a novel classification algorithm for learning decision tree classifiers from data using dissimilarities with less complexity and less time to construct decision tree.

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How to Cite

Piyush Gupta,Parikshit Tiwari. (2025). An Improved Method For Decision Tree Construction Based On Data Frequency. International Journal of Research & Technology, 3(4), 7–11. Retrieved from https://ijrt.org/j/article/view/37

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