优化模糊风险评估的关联规则前提

E. Tóth-Laufer
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引用次数: 0

摘要

基于模糊的评价方法由于其自身的特点,在患者监护中具有很好的应用前景。这种方法可以处理输入因素,因为输入因素的限制是无法明确的,它可以处理数据中的不确定性、主观性以及评估过程。传统的Mamdani推理是最合适的方法,因为它有助于建立一个更接近人类思维的模型,但由于复杂的形状函数,它的计算需求非常高。本文介绍了一种灵活的病人监护系统优化,可以根据个人统计数据调整输入功能。该系统采用了改进的Mamdani推理,在保留原方法优点的同时降低了计算复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linked Rule-Premises to Optimize the Fuzzy-Based Risk Assessment
In patient monitoring fuzzy-based evaluation can be used advantageously, because of its characteristics. This approach can work with input factors, for which sharp limits cannot be defined and it can handle uncertainties, subjectivity in the data as well as the evaluation process. The conventional Mamdani inference is the most suitable method, because it helps to build a model, which is much closer to human thinking, but its computational needs are very high, due to the complex-shape functions. This paper introduces a flexible patient monitoring system optimization, where the input functions can be tuned according to the personal statistics. Modified versions of the Mamdani inference are applied in this system, which can reduce computational complexity, while they retain the advantages of the original method.
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