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Inheritance and recognition in uncertain and fuzzy object-oriented models

机译:在不确定和模糊面向对象模型中的继承与识别

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This paper proposes probabilistic default reasoning as a suitable approach to inheritance and recognition in uncertain and fuzzy object-oriented models. Firstly, we introduce an uncertain and fuzzy object-oriented model where a class property (i.e., an attribute or a method) can contain fuzzy sets interpreted as families of probability distributions, and uncertain class membership and property applicability are measured by lower and upper bounds on probability. Each uncertainly applicable property is interpreted as a default probabilistic logic rule, which is defeasible. In order to reduce the computational complexity of general probabilistic default reasoning, we propose to use Jeffrey's rule for a weaker notion of consistency and for local inference, then apply them to uncertain inheritance of properties. Using the same approach but with inverse Jeffrey's rule, uncertain recognition as probabilistic default reasoning is also presented. The approach is illustrated by an example in Fril++, the uncertain and fuzzy object-oriented logic programming language that we have been developing.
机译:本文提出了概率默认推理作为不确定和模糊面向对象模型的继承和识别的合适方法。首先,我们介绍一个不确定和模糊的面向对象的模型,其中类属性(即属性或方法)可以包含被解释为概率分布的家庭的模糊集,并且不确定的类成员资格和物业适用性由下限和上限测量概率。每个不确定适用的属性被解释为默认的概率逻辑规则,这是不可取的。为了降低一般概率默认推理的计算复杂性,我们建议使用Jeffrey的规则较弱的一致性概念和本地推理,然后将它们应用于不确定的属性继承。使用相同的方法但具有逆jeffrey的规则,还提出了不确定的识别作为概率默认推理。通过FRIL ++中的示例来说明该方法,我们正在开发的不确定和模糊面向对象的逻辑编程语言。

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