论文标题

用于滤波器 - 瓦特特征选择的嵌入式混沌鲸鱼生存算法

Embedded Chaotic Whale Survival Algorithm for Filter-Wrapper Feature Selection

论文作者

Guha, Ritam, Ghosh, Manosij, Mutsuddi, Shyok, Sarkar, Ram, Mirjalili, Seyedali

论文摘要

机器学习模型提供的分类精度在很大程度上取决于学习过程中使用的功能集。功能选择(FS)是一种重要且具有挑战性的预处理技术,它仅有助于识别数据集中的相关功能,从而降低功能维度并同时提高分类准确性。鲸鱼优化算法(WOA)的二进制版本是一种流行的FS技术,它是从座头鲸的觅食行为中启发的。在本文中,已提出了一种嵌入式WOA版本的WOA,称为嵌入式混沌鲸鱼生存算法(ECWSA),该版本使用其包装器工艺实现高分类精度和过滤方法,以低计算成本来进一步完善所选子集。在ECWSA中引入了混乱,以指导运动类型的选择,然后在寻找猎物时捕鲸。鲸鱼系统中也引入了一种依赖健身的死亡机制,该机制是从现实生活中启发的,如果鲸鱼无法捕捉猎物,它们就会死亡。该方法已在18个著名的UCI数据集上进行了评估,并将其与其他流行的FS方法进行了比较。

Classification accuracy provided by a machine learning model depends a lot on the feature set used in the learning process. Feature Selection (FS) is an important and challenging pre-processing technique which helps to identify only the relevant features from a dataset thereby reducing the feature dimension as well as improving the classification accuracy at the same time. The binary version of Whale Optimization Algorithm (WOA) is a popular FS technique which is inspired from the foraging behavior of humpback whales. In this paper, an embedded version of WOA called Embedded Chaotic Whale Survival Algorithm (ECWSA) has been proposed which uses its wrapper process to achieve high classification accuracy and a filter approach to further refine the selected subset with low computation cost. Chaos has been introduced in the ECWSA to guide selection of the type of movement followed by the whales while searching for prey. A fitness-dependent death mechanism has also been introduced in the system of whales which is inspired from the real-life scenario in which whales die if they are unable to catch their prey. The proposed method has been evaluated on 18 well-known UCI datasets and compared with its predecessors as well as some other popular FS methods.

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