用模糊集逼近真实数据的分类问题

K. Sukhanov
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引用次数: 1

摘要

本文以第聂伯-顿涅茨克盆地油气勘探剖面为例,讨论了利用模糊集和模糊逻辑作为学习和识别自然物体的灵活工具对真实数据进行分类的方法。这种方法中的真实数据是隶属函数的值,这些值不是通过主观的专家判断得到的,而是通过客观测量得到的。建议利用训练数据近似模糊集隶属函数,将学习阶段得到的近似结果用于识别未知对象阶段。在学习的第一步中,学习数据的每个传统未来都由一个主要的传统一维集合匹配,该集合的隶属度函数只能从二进制集合中取值——如果学习对象不属于该集合,则取0,如果学习对象属于该集合,则取1。第二步,将原始集映射为模糊集,通过逼近传统集的隶属度函数确定模糊集的隶属度函数参数。第三步,将对象的单个特征对应的一维模糊集映射到训练数据集中对象的所有特征对应的模糊集。这样的集合是各个特征的模糊集合的交集,在最后一步中应用了模糊集理论的模糊和集中操作。因此,属于一类的模糊集的功能是从对象的单个特征的模糊集的功能中选择一个最小值的操作,这些模糊集的功能在一定程度上与模糊或集中的操作相对应。将研究对象分配到某一类的任务是比较多维模糊集的隶属函数值,选择隶属函数值最大的一类。此外,在训练阶段之后,可以确定对象未来的重要程度,这是一个模糊指标,从分析中删除非必要数据(对象未来)。
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Approximation of real data by fuzzy sets for the classification problem
The article deals with the method of classification of real data using the apparatus of fuzzy sets and fuzzy logic as a flexible tool for learning and recognition of natural objects on the example of oil and gas prospecting sections of the Dnieper-Donetsk basin. The real data in this approach are the values for the membership function that are obtained not through subjective expert judgment but from objective measurements. It is suggested to approximate the fuzzy set membership functions by using training data to use the approximation results obtained during the learning phase at the stage of identifying unknown objects. In the first step of learning, each traditional future of a learning data is matched by a primary traditional one-dimensional set whose membership function can only take values from a binary set — 0 if the learning object does not belong to the set, and 1 if the learning object belongs to the set. In the second step, the primary set is mapped to a fuzzy set, and the parameters of the membership function of this fuzzy set are determined by approximating this function of the traditional set membership. In the third step, the set of one-dimensional fuzzy sets that correspond to a single feature of the object is mapped to a fuzzy set that corresponds to all the features of the object in the training data set. Such a set is the intersection of fuzzy sets of individual features, to which the blurring and concentration operations of fuzzy set theory are applied in the last step. Thus, the function of belonging to a fuzzy set of a class is the operation of choosing a minimum value from the functions of fuzzy sets of individual features of objects, which are reduced to a certain degree corresponding to the operation of blurring or concentration. The task of assigning the object under study to a particular class is to compare the values of the membership functions of a multidimensional fuzzy set and to select the class in which the membership function takes the highest value. Additionally, after the training stage, it is possible to determine the degree of significance of an object future, which is an indistinctness index, to remove non-essential data (object futures) from the analysis.
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