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Arrogance Analysis of Several Typical Pattern Recognition Classifiers

机译:几种典型模式识别分类器的傲慢分析

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Various kinds of classification methods have been developed. However, most of these classical methods, such as Back-Propagation (BP), Bayesian method, Support Vector Machine(SVM), Self-Organizing Map (SOM) are arrogant.rnA so-called arrogance, for a human, means that his decision, which even is a mistake, overstates his actual experience. Accordingly, we say that he is a arrogant if he frequently makes arrogant decisions. Likewise, some classical pattern classifiers represent the similar characteristic of arrogance. Given an input feature vector, we say a classifier is arrogant in its classification if its veracity is high yet its experience is low. Typically, for a new sample which is distinguishable from original training samples, traditional classifiers recognize it as one of the known targets. Clearly, arrogance in classification is an undesirable attribute.rnConversely, a classifier is non-arrogant in its classification if there is a reasonable balance between its veracity and its experience. Inquisitiveness is, in many ways, the opposite of arrogance. In nature, inquisitiveness is an eagerness for knowledge characterized by the drive to question, to seek a deeper understanding. The human capacity to doubt present beliefs allows us to acquire new experiences and to learn from our mistakes. Within the discrete world of computers, inquisitive pattern recognition is the constructive investigation and exploitation of conflict in information. Thus, we quantify this balance and discuss new techniques that will detect arrogance in a classifier.
机译:已经开发出各种分类方法。但是,这些经典方法中的大多数,例如反向传播(BP),贝叶斯方法,支持向量机(SVM),自组织映射(SOM)都是自大的。对于人类来说,所谓的“自大”意味着这个决定,甚至是一个错误,都夸大了他的实际经验。因此,如果他经常做出傲慢的决定,我们就说他是傲慢的。同样,一些经典的模式分类器代表了骄慢的相似特征。给定输入特征向量,我们说分类器的准确性很高,而经验却很低,那么分类器就很傲慢。通常,对于可与原始训练样本区分开的新样本,传统分类器将其视为已知目标之一。显然,分类中的傲慢是不受欢迎的属性。相反,如果分类器的准确性和经验之间达到合理的平衡,则分类器就不会自大。在许多方面,好奇心与傲慢相反。从本质上讲,好奇心是对以寻求动力为特征的知识的渴望,以寻求更深刻的理解。人类怀疑当前信念的能力使我们能够获得新的经验并从错误中学习。在离散的计算机世界中,查询模式识别是对信息冲突的建设性研究和开发。因此,我们将量化这种平衡并讨论将在分类器中检测自大的新技术。

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