Abstract
Nowaday, on demand to reflect the real world, so we have many imprecise stored business data warehouses. The precise data classification cannot solve all the requirements. Thus, fuzzy decision tree classification problem have role is important of fuzzy data mining problem. The fuzzy decision classification based on fuzzy set theory have some limitations de-rived from the inner selves of it. The hedge algebra with many advantages has become a really useful tool for solving the fuzzy decision tree classifi-cation. However, sample data homogenise process based on quantitative methods of the hedge algebra with some restrictions remain appear be-cause of error in the process and not the result tree truly versatile. So, the fuzzy decision tree obtained not always have high predictable. In this paper, we using fuzziness intervals matching an approach hedge algebra, we proposed the inductive learning method HAC4.5 fuzzy decision tree to obtain the fuzzy decision tree with high predictable.
Cite
CITATION STYLE
Lan, L. V. T., Han, N. M., & Hao, N. C. (2017). An Algorithm To Building A Fuzzy Decision Tree For Data Classification Problem Based On The Fuzziness Intervals Matching. Journal of Computer Science and Cybernetics, 32(4). https://doi.org/10.15625/1813-9663/32/3/8801
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