首页> 外文期刊>Fuzzy sets and systems >Transforming probability distributions into membership functions of fuzzy classes: A hypothesis test approach
【24h】

Transforming probability distributions into membership functions of fuzzy classes: A hypothesis test approach

机译:将概率分布转换为模糊类的隶属函数:一种假设检验方法

获取原文
获取原文并翻译 | 示例

摘要

In fuzzy Decision Support Systems, methods are strongly required for eliciting knowledge in the form of interpretable fuzzy sets from numerical data. In medical settings, statistical data are often available, or can be obtained from rough data, typically in the form of probability distributions. Moreover, since physicians are used to think and work according to a statistical interpretation of medical knowledge, the definition of fuzzy sets starting from statistical data is thought to be able to significantly reduce the existing lack of familiarity of physicians with fuzzy set theory, with respect to the classical statistical methods. Some methods based on different assumptions transform probability distributions into fuzzy sets. However, no theoretical approach was proposed up to now, for extracting fuzzy knowledge according to a fuzzy class interpretation, which can be used for inference purposes in fuzzy rule based systems. In this paper, a method for transforming probability distributions into fuzzy sets is shown, which generalizes some existing approaches and gives them a justification. It is based on the application of statistical test of hypothesis, and the resulting fuzzy sets are interpretable as fuzzy classes. The method enables the construction of normal fuzzy sets, which can be adapted to have pseudo-triangular or pseudo-trapezoidal shape, both coherently with the corresponding probability distributions, by tuning the method parameters. The properties of this method are illustrated by applying it to simulated probability distributions and its experimental comparison with existing methods is shown. Moreover, an application is performed on a real case study involving the detection of Multiple Sclerosis lesions.
机译:在模糊决策支持系统中,强烈需要使用方法从数字数据中提取可解释的模糊集形式的知识。在医疗机构中,统计数据通常是可用的,或者可以从粗糙数据中获得,通常以概率分布的形式。而且,由于医师习惯于根据医学知识的统计解释来思考和工作,因此从统计数据开始对模糊集的定义被认为能够显着减少医师对模糊集理论的不熟悉。到经典的统计方法。一些基于不同假设的方法将概率分布转换为模糊集。但是,到目前为止,还没有提出一种理论方法来根据模糊类解释提取模糊知识,该方法可用于基于模糊规则的系统中的推理。本文提出了一种将概率分布转换为模糊集的方法,该方法概括了一些现有方法并给出了理由。它基于假设统计检验的应用,所得的模糊集可解释为模糊类。该方法使得能够构造正常模糊集,该模糊集可以通过调整方法参数而适于具有伪三角形或伪梯形形状,并且与相应的概率分布一致。通过将其应用于模拟概率分布来说明该方法的性质,并显示其与现有方法的实验比较。此外,在涉及多发性硬化病变检测的真实案例研究中进行了应用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号