吉林大学学报(信息科学版)2025,Vol.43Issue(2):231-237,7.
深度学习模式下大数据特征集成分类算法
Classification Algorithm of Big Data Feature Integration under Deep Learning Mode
摘要
Abstract
Big data usually comes from different data sources with diverse formats,structures,and qualities.Big data often contains a large number of redundant features,which can affect the accuracy of data classification during feature integration.To address these issues,a deep learning-based algorithm is proposed for feature integration classification in hospital big data.A feature extraction model is established based on deep learning to extract relevant features from the data.However,since the training process of the model introduces a significant amount of noise,the extracted features may contain irrelevant information,which can impact the results of feature integration classification.Therefore,a stacked sparse denoising autoencoder is employed to suppress irrelevant features.The best training parameters are determined using divergence functions and greedy algorithms,and a loss function is utilized to sparsify the irrelevant features in the feature space,resulting in practical data features.A feature integration classification model is constructed using an autoencoder network,and with the assistance of type-constrained functions and objective functions,the optimal integration centers for each class are obtained to achieve data feature integration classification.Experimental results demonstrate that the proposed method exhibits excellent classification performance,with macro-averaged values above 0.95,and it also shows fast classification speed,indicating its effectiveness in classification.关键词
深度学习/医疗大数据/特征集成/堆叠稀疏降噪编码器/集成中心Key words
deep learning/medical big data/feature integration/stacked sparse noise reduction encoder/integration center分类
电子信息工程引用本文复制引用
彭建祥..深度学习模式下大数据特征集成分类算法[J].吉林大学学报(信息科学版),2025,43(2):231-237,7.基金项目
四川省自然科学基金资助项目(201834646554) (201834646554)