Multi-objective feature selection is one of the most significant issues in the field of pattern recognition. It is challenging because it maximizes the classification performance and, at the same time, minimizes the number of selected features, and the mentioned two objectives are usually conflicting. To achieve a better Pareto optimal solution, metaheuristic optimization methods are widely used in many studies. However, the main drawback is the exploration of a large search space. Another problem with multi-objective feature selection approaches is the interaction between features. Selecting correlated features has negative effect on classification performance. To tackle these problems, we present a novel multi-objective feature selection method that has several advantages. Firstly, it considers the interaction between features using an advanced probability scheme. Secondly, it is based on the Pareto Archived Evolution Strategy (PAES) method that has several advantages such as simplicity and its speed in exploring the solution space. However, we improve the structure of PAES in such a way that generates the offsprings, intelligently. Thus, the proposed method utilizes the introduced probability scheme to produce more promising offsprings. Finally, it is equipped with a novel strategy that guides it to find the optimum number of features through the process of evolution. The experimental results show a significant improvement in finding the optimal Pareto front compared to state-of-the-art methods on different real-world datasets.
翻译:多重目标特征选择是模式识别领域最重要的问题之一。 因为它最大限度地提高分类性能,同时最大限度地减少选定特征的数量,因此具有挑战性,因为它具有挑战性,因为它使分类性业绩最大化,同时最大限度地减少选定特征的数量,而且上述两个目标通常相互冲突。 为了实现更好的Pareto最佳解决方案,在许多研究中广泛使用美化经济学优化方法。 但是,主要缺点是探索大搜索空间。 多目标特征选择方法的另一个问题是各种特征之间的相互作用。 选择相关特征对分类性能有负面影响。 为了解决这些问题,我们提出了一个新的多目标特征选择方法,它具有若干优势。 首先,它考虑了使用高级概率方案的各种特征之间的相互作用。 其次,它以Pareto 存档进化战略(PAES) 方法为基础,该方法有若干优点,例如简单化及其探索解决方案空间的速度。 然而,我们改进了多目标特征选择方法的结构,从而明智地生成后代。 因此,拟议的方法利用引入的概率计划来产生更有希望的后代。 最后,它配备了一个新的战略,用以指导它找到通过不同进化的进化方法来找到最佳进化的进化的进化数据。