一种特征选择与分类的混合算法

B. R. S. B. R. Sathish, Radha Senthilkumar B. R. Sathish
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引用次数: 0

摘要

随着近年来智能信息系统的普及,大量的数据收集和大量重复的、无意的、不必要的干扰导向的数据被收集,并且大量的特征集正在被操作。另一方面,高维输入包含更多相关变量,这可能对模型性能产生负面影响。在该模型中,将二元引力搜索粒子群优化(HBGSPSO)方法与增强卷积神经网络双向长短期记忆(ECNN-BiLSTM)相结合,提出了一种混合特征选择方法。在我们提出的系统中,引入了双向长短期记忆(BiLSTM),它提取隐藏的动态数据,并利用卷积处理后的记忆单元来思考长期的历史数据。本文使用加州大学欧文分校机器学习数据库中的13个定义良好的数据集来评估所提出系统的效率。实验使用K最近邻(KNN)和决策树(DT)作为分类器来评估所选特征的结果。结果与遗传算法(GA)、灰狼优化器(GWO)和粒子群优化方案(PSO)等生物激活算法进行了对比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Algorithm for Feature Selection and Classification
With a recent spread of intelligent information systems, massive data collections with a lot of repeated and unintentional, unwanted interference oriented data are gathered and a huge feature set are being operated. Higher dimensional inputs, on the other hand, contain more correlated variables, which might have a negative impact on model performance. In our model a Hybrid method of selecting feature was developed by combining Binary Gravitational Search Particle Swarm Optimization (HBGSPSO) method with an Enhanced Convolution Neural Network Bidirectional Long Short Term Memory (ECNN-BiLSTM). In our proposed system, the Bidirectional Long Short Term Memory (BiLSTM) is introduced which extracts the hidden dynamic data and utilizes the memory cells to think of long-term historical data after the convolution process. In this paper, thirteen well-defined datasets are used from the machine learning database of UC Irvine to evaluate the efficiency of the proposed system. The experiments are conducted using K Nearest Neighbor (KNN) and Decision Tree (DT) which are used as classifiers to evaluate the outcome of selected features. The outcomes are contrasted and compared with the bio-enlivened calculations like Genetic Algorithm (GA), Grey Wolf Optimizer (GWO), and Optimization protocol using Particle Swarm Optimization (PSO).  
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