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An unified intelligent inference framework for complex modeling and classification

机译:用于复杂建模和分类的统一智能推理框架

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In this paper, an unified three-dimensional inference framework is proposed for modeling and pattern classification under the complex environment where both stochastic and fuzzy uncertainties exist. Based on a three-dimensional probabilistic fuzzy set, this novel inference method integrates the probabilistic inference and fuzzy inference into one operation to improve the computational efficiency and achieve a better performance than that of the traditional fuzzy method or the probabilistic method. The experiments on the wind speed data and Pima Indians Diabetes data demonstrate the advantages and effectiveness of the unified inference framework under the complex stochastic environment.
机译:在本文中,提出了一种统一的三维推理框架,用于在复杂环境下进行建模和模式分类,其中存在随机和模糊不确定性。基于三维概率模糊集,这种新颖的推断方法将概率推断和模糊推断集成到一个操作中以提高计算效率,实现比传统模糊方法或概率方法更好的性能。风速数据和PIMA印第安人糖尿病数据的实验证明了统一推理框架在复杂的随机环境下的优势和效率。

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