IJISA Vol. 8, No. 8, 8 Aug. 2016
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Tourist Classification, Random Tree, Random Forest, J48 Algorithm, REP Tree
The economic development and promotion of a country or region is depends on several facts such as- tourism, industries, transport, technology, GDP etc. The Government of the country is responsible to facilitate the opportunities to develop tourism, technology, transport etc. In view of this, we look into the Department of Tourism to predict and classify the number of tourists visiting historical Indian monuments such as Taj- Mahal, Agra, and Ajanta etc.. The data set is obtained from the Indian Tourist Statistics which contains year wise statistics of visitors to historical monuments places. A survey undertaken every year by the government is preprocessed to fill out the possible missing values, and normalize inconsistent data. Various classification techniques under Decision Tree approach such as- Random Tree, REPTree, Random Forest and J48 algorithms are applied to classify the historical monuments places. Performance evaluation measures of the classification models are analyzed and compared as a step in the process of knowledge discovery.
Siddu P. Algur, Prashant Bhat, P.G. Sunitha Hiremath, "Application of Data Mining in the Classification of Historical Monument Places", International Journal of Intelligent Systems and Applications (IJISA), Vol.8, No.8, pp.58-65, 2016. DOI:10.5815/ijisa.2016.08.07
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