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Evolutionary Feature Space Transformation Using Type-Restricted Genoerators

机译:使用型式限制的种族检测器的进化特征空间转换

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Data preprocessing, especially in terms of feature selection and generation, is an important issue in data mining and knowledge discovery tasks. Genetic algorithms proved to work well on feature selection problems where the search space produced by the initial feature set already contains the target hypothesis. In cases where this precondition is not fulfilled, one needs to construct new features to adequately extend the search space. As a solution to this representation problem, we introduce a framework combining feature selection and type-restricted feature generation in a wrapper-based approach using a modified canonical genetic algorithm for the feature space transformation and an inductive learner for the evaluation of the constructed feature set.
机译:数据预处理,特别是在特征选择和生成方面,是数据挖掘和知识发现任务中的重要问题。遗传算法证明在特征选择问题上运行良好,其中初始功能集产生的搜索空间已经包含目标假设。在未满足该前提条件的情况下,需要构建新功能以充分扩展搜索空间。作为解决该表示问题的解决方案,我们使用修改的规范遗传算法与特征空间变换和归纳学习者的修改规范遗传算法一起介绍了基于包装的方法的框架组合特征选择和类型受限特征生成,用于评估构造的特征集。

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