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Two layered Genetic Programming for mixed-attribute data classification

机译:用于混合属性数据分类的两层遗传规划

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摘要

The important problem of data classification spans numerous real life applications. The classification problem has been tackled by using Genetic Programming in many successful ways. Most approaches focus on classification of only one type of data. However, most of the real-world data contain a mixture of categorical and continuous attributes. In this paper, we present an approach to classify mixed attribute data using Two Layered Genetic Programming (L2GP). The presented approach does not transform data into any other type and combines the properties of arithmetic expressions (using numerical data) and logical expressions (using categorical data). The outer layer contains logical functions and some nodes. These nodes contain the inner layer and are either logical or arithmetic expressions. Logical expressions give their Boolean output to the outer tree. The arithmetic expressions give a real value as their output. Positive real value is considered true and a negative value is considered false. These outputs of inner layers are used to evaluate the outer layer which determines the classification decision. The proposed classification technique has been applied on various heterogeneous data classification problems and found successful.
机译:数据分类的重要问题跨越了许多现实生活中的应用。通过使用遗传编程以许多成功的方式解决了分类问题。大多数方法只关注一种数据类型的分类。但是,大多数现实世界数据包含分类属性和连续属性。在本文中,我们提出了一种使用两层遗传规划(L2GP)对混合属性数据进行分类的方法。提出的方法不会将数据转换为任何其他类型,而是将算术表达式(使用数字数据)和逻辑表达式(使用分类数据)的属性组合在一起。外层包含逻辑功能和一些节点。这些节点包含内层,并且可以是逻辑或算术表达式。逻辑表达式将其布尔输出提供给外部树。算术表达式给出一个实数值作为其输出。正实值被认为是真,负值被认为是假。内层的这些输出用于评估确定分类决策的外层。所提出的分类技术已应用于各种异构数据分类问题,并获得成功。

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