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Improved Logistic Regression Algorithm Based on Kernel Density Estimation for Multi-Classification with Non-Equilibrium Samples
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作者 Yang Yu Zeyu Xiong +1 位作者 Yueshan Xiong Weizi Li 《Computers, Materials & Continua》 SCIE EI 2019年第7期103-117,共15页
Logistic regression is often used to solve linear binary classification problems such as machine vision,speech recognition,and handwriting recognition.However,it usually fails to solve certain nonlinear multi-classifi... Logistic regression is often used to solve linear binary classification problems such as machine vision,speech recognition,and handwriting recognition.However,it usually fails to solve certain nonlinear multi-classification problem,such as problem with non-equilibrium samples.Many scholars have proposed some methods,such as neural network,least square support vector machine,AdaBoost meta-algorithm,etc.These methods essentially belong to machine learning categories.In this work,based on the probability theory and statistical principle,we propose an improved logistic regression algorithm based on kernel density estimation for solving nonlinear multi-classification.We have compared our approach with other methods using non-equilibrium samples,the results show that our approach guarantees sample integrity and achieves superior classification. 展开更多
关键词 Logistic regression multi-classification kernel function density estimation NON-EQUILIBRIUM
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Diff-IDS:A Network Intrusion Detection Model Based on Diffusion Model for Imbalanced Data Samples
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作者 Yue Yang Xiangyan Tang +3 位作者 Zhaowu Liu Jieren Cheng Haozhe Fang Cunyi Zhang 《Computers, Materials & Continua》 2025年第3期4389-4408,共20页
With the rapid development of Internet of Things technology,the sharp increase in network devices and their inherent security vulnerabilities present a stark contrast,bringing unprecedented challenges to the field of ... With the rapid development of Internet of Things technology,the sharp increase in network devices and their inherent security vulnerabilities present a stark contrast,bringing unprecedented challenges to the field of network security,especially in identifying malicious attacks.However,due to the uneven distribution of network traffic data,particularly the imbalance between attack traffic and normal traffic,as well as the imbalance between minority class attacks and majority class attacks,traditional machine learning detection algorithms have significant limitations when dealing with sparse network traffic data.To effectively tackle this challenge,we have designed a lightweight intrusion detection model based on diffusion mechanisms,named Diff-IDS,with the core objective of enhancing the model’s efficiency in parsing complex network traffic features,thereby significantly improving its detection speed and training efficiency.The model begins by finely filtering network traffic features and converting them into grayscale images,while also employing image-flipping techniques for data augmentation.Subsequently,these preprocessed images are fed into a diffusion model based on the Unet architecture for training.Once the model is trained,we fix the weights of the Unet network and propose a feature enhancement algorithm based on feature masking to further boost the model’s expressiveness.Finally,we devise an end-to-end lightweight detection strategy to streamline the model,enabling efficient lightweight detection of imbalanced samples.Our method has been subjected to multiple experimental tests on renowned network intrusion detection benchmarks,including CICIDS 2017,KDD 99,and NSL-KDD.The experimental results indicate that Diff-IDS leads in terms of detection accuracy,training efficiency,and lightweight metrics compared to the current state-of-the-art models,demonstrating exceptional detection capabilities and robustness. 展开更多
关键词 Network traffic feature enhancement diffusion model multi-classification Algorithm 2(continued)13:end for 14:Return y
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Improved particle swarm optimization algorithm for fuzzy multi-class SVM 被引量:18
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作者 Ying Li Bendu Bai Yanning Zhang 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2010年第3期509-513,共5页
An improved particle swarm optimization(PSO) algorithm is proposed to train the fuzzy support vector machine(FSVM) for pattern multi-classification.In the improved algorithm,the particles studies not only from its... An improved particle swarm optimization(PSO) algorithm is proposed to train the fuzzy support vector machine(FSVM) for pattern multi-classification.In the improved algorithm,the particles studies not only from itself and the best one but also from the mean value of some other particles.In addition,adaptive mutation was introduced to reduce the rate of premature convergence.The experimental results on the synthetic aperture radar(SAR) target recognition of moving and stationary target acquisition and recognition(MSTAR) dataset and character recognition of MNIST database show that the improved algorithm is feasible and effective for fuzzy multi-class SVM training. 展开更多
关键词 particle swarm optimization(PSO) fuzzy support vector machine(FSVM) adaptive mutation multi-classification.
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一种基于多分类语义分析和个性化的语义检索方法 被引量:1
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作者 马应龙 李鹏鹏 张敬旭 《东南大学学报(自然科学版)》 EI CAS CSCD 北大核心 2014年第2期261-265,共5页
为了进一步提升语义检索的精度和改善用户体验,提出了一种基于多分类语义分析和个性化的语义检索方法.首先,利用改进的多分类语义分析方法实现目标文档的向量化,并建立词向量库;然后,利用支持向量机对文档进行分类,并结合文档类别生成... 为了进一步提升语义检索的精度和改善用户体验,提出了一种基于多分类语义分析和个性化的语义检索方法.首先,利用改进的多分类语义分析方法实现目标文档的向量化,并建立词向量库;然后,利用支持向量机对文档进行分类,并结合文档类别生成标签索引.在检索时,根据词向量库的引导,使用用户历史检索记录和个人信息优化检索结果.实验结果显示,基于该方法的系统的检索精度、平均DCG和nDCG指标值分别达到0.7,7.267和0.890,较基于Lucene方法和Yahoo Directory方法所得结果的均值分别高出31%,36%和19%.在时间复杂度上,每次检索的平均耗时为0.669 s,较Lucene方法仅增加了0.326 s.由此可见,该方法提高了检索的精度和综合相关度,且额外的时间消耗较少. 展开更多
关键词 语义检索 多分类语义分析 词向量库 个性化算法 multi-classification SEMANTIC analysis (MSA) TERM vector database (TVDB )
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Classifier for centrality determination with zero-degree calorimeter at the cooling-storage-ring external-target experiment 被引量:1
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作者 Biao Zhang Li‑Ke Liu +3 位作者 Hua Pei Shu‑Su Shi Nu Xu Ya‑Ping Wang 《Nuclear Science and Techniques》 SCIE EI CAS CSCD 2023年第11期168-173,共6页
The zero-degree calorimeter(ZDC)plays a crucial role toward determining the centrality in the Cooling-Storage-Ring External-target Experiment(CEE)at the Heavy Ion Research Facility in Lanzhou.A boosted decision tree(B... The zero-degree calorimeter(ZDC)plays a crucial role toward determining the centrality in the Cooling-Storage-Ring External-target Experiment(CEE)at the Heavy Ion Research Facility in Lanzhou.A boosted decision tree(BDT)multi-classification algorithm was employed to classify the centrality of the collision events based on the raw features from ZDC such as the number of fired channels and deposited energy.The data from simulated^(238)U+^(238)U collisions at 500 MeV∕u,generated by the IQMD event generator and subsequently modeled using the GEANT4 package,were employed to train and test the BDT model.The results showed the high accuracy of the multi-classification model adopted in ZDC for centrality determination,which is robust against variations in different factors of detector geometry and response.This study demon-strates the good performance of CEE-ZDC in determining the centrality in nucleus-nucleus collisions. 展开更多
关键词 ZDC Boosted decision trees multi-classification IQMD Centrality determination
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Multi-Purpose Forensics of Image Manipulations Using Residual-Based Feature 被引量:1
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作者 Anjie Peng Kang Deng +1 位作者 Shenghai Luo Hui Zeng 《Computers, Materials & Continua》 SCIE EI 2020年第12期2217-2231,共15页
The multi-purpose forensics is an important tool for forge image detection.In this paper,we propose a universal feature set for the multi-purpose forensics which is capable of simultaneously identifying several typica... The multi-purpose forensics is an important tool for forge image detection.In this paper,we propose a universal feature set for the multi-purpose forensics which is capable of simultaneously identifying several typical image manipulations,including spatial low-pass Gaussian blurring,median filtering,re-sampling,and JPEG compression.To eliminate the influences caused by diverse image contents on the effectiveness and robustness of the feature,a residual group which contains several high-pass filtered residuals is introduced.The partial correlation coefficient is exploited from the residual group to purely measure neighborhood correlations in a linear way.Besides that,we also combine autoregressive coefficient and transition probability to form the proposed composite feature which is used to measure how manipulations change the neighborhood relationships in both linear and non-linear way.After a series of dimension reductions,the proposed feature set can accelerate the training and testing for the multi-purpose forensics.The proposed feature set is then fed into a multi-classifier to train a multi-purpose detector.Experimental results show that the proposed detector can identify several typical image manipulations,and is superior to the complicated deep CNN-based methods in terms of detection accuracy and time efficiency for JPEG compressed image with low resolution. 展开更多
关键词 Digital image forensics partial correlation auto-regression multi-classification
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Analyzing Electricity Consumption via Data Mining 被引量:1
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作者 LIU Jinshuo LAN Huiying +2 位作者 FU Yizhen WU Hui LI Peng 《Wuhan University Journal of Natural Sciences》 CAS 2012年第2期121-125,共5页
This paper proposes a model to analyze the massive data of electricity.Feature subset is determined by the correla-tion-based feature selection and the data-driven methods.The attribute season can be classified succes... This paper proposes a model to analyze the massive data of electricity.Feature subset is determined by the correla-tion-based feature selection and the data-driven methods.The attribute season can be classified successfully through five classi-fiers using the selected feature subset,and the best model can be determined further.The effects on analyzing electricity consump-tion of the other three attributes,including months,businesses,and meters,can be estimated using the chosen model.The data used for the project is provided by Beijing Power Supply Bureau.We use WEKA as the machine learning tool.The models we built are promising for electricity scheduling and power theft detection. 展开更多
关键词 feature selection multi-classification prediction model data analysis
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A multi-class large margin classifier
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作者 Liang TANG Qi XUAN +2 位作者 Rong XIONG Tie-jun WU Jian CHU 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2009年第2期253-262,共10页
Currently there are two approaches for a multi-class support vector classifier(SVC). One is to construct and combine several binary classifiers while the other is to directly consider all classes of data in one optimi... Currently there are two approaches for a multi-class support vector classifier(SVC). One is to construct and combine several binary classifiers while the other is to directly consider all classes of data in one optimization formulation. For a K-class problem(K>2),the first approach has to construct at least K classifiers,and the second approach has to solve a much larger op-timization problem proportional to K by the algorithms developed so far. In this paper,following the second approach,we present a novel multi-class large margin classifier(MLMC). This new machine can solve K-class problems in one optimization formula-tion without increasing the size of the quadratic programming(QP) problem proportional to K. This property allows us to construct just one classifier with as few variables in the QP problem as possible to classify multi-class data,and we can gain the advantage of speed from it especially when K is large. Our experiments indicate that MLMC almost works as well as(sometimes better than) many other multi-class SVCs for some benchmark data classification problems,and obtains a reasonable performance in face recognition application on the AR face database. 展开更多
关键词 multi-classification Support vector machine (SVM) Quadratic programming (QP) problem Large margin
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Deep Learning with a Novel Concoction Loss Function for Identification of Ophthalmic Disease
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作者 Sayyid Kamran Hussain Ali Haider Khan +3 位作者 Malek Alrashidi Sajid Iqbal Qazi Mudassar Ilyas Kamran Shah 《Computers, Materials & Continua》 SCIE EI 2023年第9期3763-3781,共19页
As ocular computer-aided diagnostic(CAD)tools become more widely accessible,many researchers are developing deep learning(DL)methods to aid in ocular disease(OHD)diagnosis.Common eye diseases like cataracts(CATR),glau... As ocular computer-aided diagnostic(CAD)tools become more widely accessible,many researchers are developing deep learning(DL)methods to aid in ocular disease(OHD)diagnosis.Common eye diseases like cataracts(CATR),glaucoma(GLU),and age-related macular degeneration(AMD)are the focus of this study,which uses DL to examine their identification.Data imbalance and outliers are widespread in fundus images,which can make it difficult to apply manyDL algorithms to accomplish this analytical assignment.The creation of efficient and reliable DL algorithms is seen to be the key to further enhancing detection performance.Using the analysis of images of the color of the retinal fundus,this study offers a DL model that is combined with a one-of-a-kind concoction loss function(CLF)for the automated identification of OHD.This study presents a combination of focal loss(FL)and correntropy-induced loss functions(CILF)in the proposed DL model to improve the recognition performance of classifiers for biomedical data.This is done because of the good generalization and robustness of these two types of losses in addressing complex datasets with class imbalance and outliers.The classification performance of the DL model with our proposed loss function is compared to that of the baseline models using accuracy(ACU),recall(REC),specificity(SPF),Kappa,and area under the receiver operating characteristic curve(AUC)as the evaluation metrics.The testing shows that the method is reliable and efficient. 展开更多
关键词 Deep learning multi-classification focal loss CNN eye disease
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Does the Financial Status of Company Affect the Bond Credit Rating?--Empirical Evidence from China's Shanghai and Shenzhen Stock Exchanges
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作者 Yuyan Cai 《Proceedings of Business and Economic Studies》 2021年第1期28-34,共7页
This article takes the companies that publicly issued corporate bonds on the Shanghai and Shenzhen Stock Exchanges from 2006 to 2018 as the research objects selecting six aspects that comprehensively reflect the 17 fi... This article takes the companies that publicly issued corporate bonds on the Shanghai and Shenzhen Stock Exchanges from 2006 to 2018 as the research objects selecting six aspects that comprehensively reflect the 17 financial variables in 6 aspects:profitability,operating ability,bond repayment ability,development ability,cash flow and market value of the company.Principal component analysis method and factor analysis method are used to extract the principal factors of these financial indicator variables.That is how an ordered multi-classification Logistic regression model is constructed to test the impact of the Shanghai and Shenzhen Stock Exchanges’financial status on the corporate bond credit rating.It turns out that the financial status of the Shanghai and Shenzhen Stock Exchanges have an important impact on the credit rating of corporate bonds.The financial status has a greater impact on corporate bonds with credit ratings of A-and AA-,while it has a smaller impact on corporate bonds with credit ratings above AA.The results of this article can help individual and institutional investors prevent risks from investing. 展开更多
关键词 Corporate finance Credit rating Factor analysis Ordered multi-classification Logistic model
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A divide-and-conquer reconstruction method for defending against adversarial example attacks
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作者 Xiyao Liu Jiaxin Hu +3 位作者 Qingying Yang Ming Jiang Jianbiao He Hui Fang 《Visual Intelligence》 2024年第1期360-376,共17页
In recent years,defending against adversarial examples has gained significant importance,leading to a growing body of research in this area.Among these studies,pre-processing defense approaches have emerged as a promi... In recent years,defending against adversarial examples has gained significant importance,leading to a growing body of research in this area.Among these studies,pre-processing defense approaches have emerged as a prominent research direction.However,existing adversarial example pre-processing techniques often employ a single pre-processing model to counter different types of adversarial attacks.Such a strategy may miss the nuances between different types of attacks,limiting the comprehensiveness and effectiveness of the defense strategy.To address this issue,we propose a divide-and-conquer reconstruction pre-processing algorithm via multi-classification and multi-network training to more effectively defend against different types of mainstream adversarial attacks.The premise and challenge of the divide-and-conquer reconstruction defense is to distinguish between multiple types of adversarial attacks.Our method designs an adversarial attack classification module that exploits the high-frequency information differences between different types of adversarial examples for their multi-classification,which can hardly be achieved by existing adversarial example detection methods.In addition,we construct a divide-and-conquer reconstruction module that utilizes different trained image reconstruction models for each type of adversarial attack,ensuring optimal defense effectiveness.Extensive experiments show that our proposed divide-and-conquer defense algorithm exhibits superior performance compared to state-of-the-art pre-processing methods. 展开更多
关键词 Adversarial example defense Divide-and-conquer strategy Adversarial attack multi-classification Reconstruction network
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A knowledge matching approach based on multiclassification radial basis function neural network for knowledge push system 被引量:3
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作者 Shu-you ZHANG Ye GU +1 位作者 Guo-dong YI Zi-li WANG 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2020年第7期981-994,共14页
We present an exploratory study to improve the performance of a knowledge push system in product design. We focus on the domain of knowledge matching, where traditional matching algorithms need repeated calculations t... We present an exploratory study to improve the performance of a knowledge push system in product design. We focus on the domain of knowledge matching, where traditional matching algorithms need repeated calculations that result in a long response time and where accuracy needs to be improved. The goal of our approach is to meet designers’ knowledge demands with a quick response and quality service in the knowledge push system. To improve the previous work, two methods are investigated to augment the limited training set in practical operations,namely, oscillating the feature weight and revising the case feature in the case feature vectors. In addition, we propose a multi-classification radial basis function neural network that can match the knowledge from the knowledge base once and ensure the accuracy of pushing results. We apply our approach using the training set in the design of guides by computer numerical control machine tools for training and testing, and the results demonstrate the benefit of the augmented training set. Moreover, experimental results reveal that our approach outperforms other matching approaches. 展开更多
关键词 Product design Knowledge push system Augmented training set multi-classification neural network Knowledge matching
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