Scalable Fuzzy Decision Tree Induction Using Fast Data Partitioning and Incremental Approach for Large Dataset

Publish Year: 1400
نوع سند: مقاله ژورنالی
زبان: English
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JR_JACET-7-1_004

تاریخ نمایه سازی: 5 دی 1400

Abstract:

The decision tree is one of the popular methods for learning and reasoning through recursive partitioning of data space. To choose the best attribute in the case on numerical features, partitioning criteria should be calculated for individual values or the value range of each attribute should be divided into two or more intervals using a set of cut points. In partitioning range of attribute, the fuzzy partitioning can be used to reduce the noise sensitivity of data and to increase the stability of decision trees. Since the tree-building algorithms need to keep in main memory the whole training dataset, they have memory restrictions. In this paper, we present an algorithm that builds the fuzzy decision tree on the large dataset. In order to avoid storing the entire training dataset in main memory and overcome the memory limitation, the algorithm builds DTs in an incremental way. In the discretization stage, a fuzzy partition was generated on each continuous attribute based on fuzzy entropy. Then, in order to select the best feature for branches, two criteria, including fuzzy information gain and occurrence matrix are used. Besides, real datasets are used to evaluate the behavior of the algorithm in terms of classification accuracy, decision tree complexity, and execution time as well. The results show that proposed algorithm without a need to store the entire dataset in memory and reduce the complexity of the tree is able to overcome the memory limitation and making balance between accuracy and complexity .

Authors

Somayeh Lotfi

Department of Computer Engineering, Science and Research Branch, Islamic Azad University, Tehran, Iran

Mohammad Ghasemzadeh

Computer Engineering Department, Yazd University, Yazd, Iran.

Mehran Mohsenzadeh

Department of Computer Engineering, Science and Research Branch, Islamic Azad University, Tehran ,IRAN

Mitra Mirzarezaee

Department of Computer Engineering, Science and Research Branch, Islamic Azad University, Daneshgah Blvd., Simon Bulivar Blvd., P.O. Box: ۱۴۵۱۵/۷۷۵, Tehran, Iran

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  • Goetz, T., ۲۰۱۰. The decision tree: taking control of your ...
  • Han, J., Pei, J. and Kamber, M., ۲۰۱۱. Data mining: ...
  • Rokach, L. and Maimon, O.Z., ۲۰۰۸. Data mining with decision ...
  • Quinlan, J.R., ۲۰۱۴. C۴. ۵: programs for machine learning. Elsevier ...
  • Breiman, L., Friedman, J., Stone, C.J. and Olshen, R.A., ۱۹۸۴. ...
  • Kotsiantis, S.B., ۲۰۱۳. Decision trees: a recent overview. Artificial Intelligence ...
  • Fayyad, U. and Irani, K., ۱۹۹۳. Multi-interval discretization of continuous-valued ...
  • Fayyad, U.M. and Irani, K.B., ۱۹۹۲. On the handling of ...
  • Zheng, H., He, J., Zhang, Y., Huang, G., Zhang, Z. ...
  • Yu, H., Lu, J. and Zhang, G., ۲۰۱۷, November. Learning ...
  • Garcia, S., Luengo, J., Sáez, J.A., Lopez, V. and Herrera, ...
  • Zeinalkhani, M. and Eftekhari, M., ۲۰۱۴. Fuzzy partitioning of continuous ...
  • Lomax, S. and Vadera, S., ۲۰۱۳. A survey of cost-sensitive ...
  • Lomax, S. and Vadera, S., ۲۰۱۳. A survey of cost-sensitive ...
  • Mehta, M., Agrawal, R. and Rissanen, J., ۱۹۹۶, March. SLIQ: ...
  • Hulten, G. and Domingos, P., ۲۰۱۶. Mining Decision Trees from ...
  • Segatori, A., Marcelloni, F. and Pedrycz, W., ۲۰۱۷. On distributed ...
  • Mahmud, M.S., Huang, J.Z., Salloum, S., Emara, T.Z. and Sadatdiynov, ...
  • Franco-Arcega, A., Carrasco-Ochoa, J.A., Sánchez-Díaz, G. and Martínez-Trinidad, J.F., ۲۰۱۱. ...
  • Bahri, M., Pfahringer, B., Bifet, A. and Maniu, S., ۲۰۲۰, ...
  • Couso, I., Borgelt, C., Hullermeier, E. and Kruse, R., ۲۰۱۹. ...
  • Peng, Y. and Flach, P., ۲۰۰۱. Soft discretization to enhance ...
  • Chen, Y.L., Wang, T., Wang, B.S. and Li, Z.J., ۲۰۰۹. ...
  • Dong, M. and Kothari, R., ۲۰۰۱. Look-ahead based fuzzy decision ...
  • Wang, X. and Borgelt, C., ۲۰۰۴, July. Information measures in ...
  • Wang, X., Liu, X., Pedrycz, W. and Zhang, L., ۲۰۱۵. ...
  • Grossi, V., Romei, A. and Turini, F., ۲۰۱۷. Survey on ...
  • Afify, A.A., ۲۰۱۶. A fuzzy rule induction algorithm for discovering ...
  • Jin, C., Li, F. and Li, Y., ۲۰۱۴. A generalized ...
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