一种基于属性计算网络的综合评价方法

Xiaolin Xu, Guanglin Xu, Jia-li Feng
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引用次数: 9

摘要

基于定性映射(QM)的输入输出关系,建立了属性计算网络模型。提出了一种利用输入调整属性网络定性基准的计算方法,使模式识别成为可能。建立了模式识别与综合评价相结合的属性计算网络模型。首先通过边界研究得到指标的定性基准,然后通过标记得到指标的偏好,最后按降序计算并输出一组指标的满意程度,改善了旧的满意程度的影响。最后通过仿真实验对理论模型进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A kind of synthetic evaluation method based on the attribute computing network
Based on input and output relationship of Qualitative Mapping(QM), the attribute computing network model has been created. It brings forward a kind of computing method using input to adjust qualitative benchmark of attribute network, which makes it possible to achieve pattern recognition. Now the new attribute computing network model combined pattern recognition with synthetic evaluation is established. Firstly qualitative benchmarks of indexes are gotten by boundary study, and then by way of marking, preference for indexes is obtained, and lastly a set of satisfactory degrees for indexes is computed and outputted in descending sequence which ameliorates the effect of old satisfactory degree. Finally the simulation experiment is carried out to validate the theoretical model.
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