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1.
Research on Web Users Clustering Based on Web Log Mining
基于Web日志挖掘的网络用户聚类研究
2.
Research of User Classing Traffic in Reconfigurable Network
可重构网络中用户业务聚类方法初探
3.
A Study on Classification Method and Application of Customer Value Based on Clustering Analysis and Neural Network;
基于聚类—神经网络的客户价值分类方法及应用
4.
K-means Clustering Based User Online Behavior Analysis in P2P Network
P2P网络中基于K-means聚类的用户在线行为分析
5.
An Analysis of Campus Network Users' Behaviors Based on Self Organization Map
基于自组织特征映射神经网络的校园网用户聚类分析
6.
Application in Customers Consumption Model of Telecom Based on Clustering Algorithm and Neural Network;
聚类和神经网络算法研究及其在电信业客户消费模式中的应用
7.
Method of network traffic classification using DBSCAN clustering
一种使用DBSCAN聚类的网络流量分类方法
8.
Application of self-organizing feature map neural network in customer classification;
SOM人工神经网络在客户分类中的应用
9.
Application of Fuzzy Self-organizing Neural Network in Clustering;
模糊自组织神经网络在聚类中的应用
10.
RBF design method based on center clustering and PSO
采用中心聚类与PSO的RBF网络设计方法
11.
Clustering User Behavior of Internet Cafes Based on Improved K-means Clustering Algorithm
基于改进后的K-means聚类算法的网吧用户行为聚类
12.
Customer s Clustering Analysis and Corresponding Marketing Strategies based on SOFM Neural Network in e-Supply Chain;
基于SOFM神经网络的e-供应链客户聚类分析及营销策略
13.
Internet Bank Customer Mining Based on Fuzzy c-means Clustering and Perceptron;
基于模糊均值聚类和感知机的网络银行客户挖掘
14.
Application and Research of Self-Organizing Feature Map on Customer Classification;
自组织特征映射网络在客户分类中的应用研究
15.
The Research and Implementation of Credit Card Account Classification System Based on Neural Network
基于神经网络的信用卡帐户分类研究和实现
16.
Efficiency Loss of the Multi-Class Stochastic Traffic Equilibrium Assignment with Fixed Demand
固定需求网络中多用户类随机均衡的效率损失
17.
Research of Clonal Network Clustering Algorithm Based on Computational Intelligence and Its Application;
智能聚类方法中的克隆网络聚类算法研究与应用
18.
Your user account type does not have adequate permissions to set up home networking.
您的用户帐户类型没有足够权限,无法设置家庭网络。