基于多粗糙集的多属性决策模型——以爪哇妇女愤怒程度分类为例

N. Fanani, U. D. Rosiani, S. Sumpeno, M. Purnomo
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引用次数: 3

摘要

决策过程通常涉及多个属性。它是使用部分或全部属性从备选项中找到最佳决策。粗糙集等方法可以解决这一问题,但由于属性多,其时间复杂度较差。因此,提出了多粗糙集来提高粗糙集的性能。在本研究中,该方法用于爪哇女性愤怒的分类,该分类需要大量属性,但对象数量有限。我们将信息表分成具有相似属性的若干组,并同时计算。将每组的决策作为粗糙集的结果,然后利用模糊规则集得到最终结果。使用“留一”交叉验证比对所有属性使用单一粗糙集的准确率高79%。
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Multi attribute decision making model using multi rough set: Case study classification of anger intensity of Javanese woman
Decision-making process typically involves multiple attributes. It is using a part or whole attributes to find the best decision from the alternatives. Some methods such as rough set are used to solve this problem but it has worse time complexity with respect to the numerous attributes. Hence, Multi Rough Set is proposed to improve the performance of rough set. In this study, this method used to classify the anger of Javanese woman's which require numerous attributes but has limited number of object. We divided the information table into several groups which has similarity attribute and it is computed simultaneously. The decision of each group as result of rough set and then used fuzzy rule set to obtain the final result. Using leave one out cross validation obtained 79% more accurate than using single rough set for all attribute.
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