决策树方法在数据挖掘中的应用

D. G, Dr. T. Nadana Ravishankar
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引用次数: 0

摘要

该研究展示了数据挖掘的影响,考虑到决策树的应用,有助于从大量数据集中开发数据。通过决策树模型生成了线性数据集。本研究采用归纳法进行二次资料收集。本研究采用了横断面研究设计,以获得对研究主题的见解。主题是使用2019年以后出版的同行评议期刊制定的,本研究对二手收集的数据进行了解释,以满足主题的目标。本文以积极的视角探讨了数据挖掘在决策树和决策规则等不同领域的应用。数据挖掘在创造力中的定制化也在这里得到了关注。不同类型的决策树方法在这里用比较视觉来描述。这里也讨论了决策树的优缺点,以评估决策树在数据挖掘中应用的实际影响。这里还描述了对结果的解释,以分析数据挖掘中决策树的后果,以信息证明来结束研究。
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The Application of Decision Tree Method for Data Mining
The study showcases the impact of data mining considering the application of decision trees that helps to develop data from large number of datasets. Linear data set has been generated through the model of decision trees. Secondary data collection method has been selected in this study with inductive approach. Cross sectional research design has been used in this study to derived insight of the subject of the study. Themes are developed using the peer reviewed journals published after 2019 and secondary collected data has been interpreted in this study to meet the goal of the subject. Implications of data mining including decision trees and decision rules in different field have been discussed over here with positive perspective approach. Customization of data mining in creativity also has been focused here. Different types of decision trees methods have been depicted here with comparison vision. Advantages and disadvantages of decision trees also have been discussed over here to evaluate the actual impact of application of decision trees in data mining. Interpretation of results also has been depicted here to analyse the consequences of decision trees in data mining to conclude the study with informative justification.
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