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GRNN_PNN程序
%% I. 清空环境变量
clear all
clc
%% II. 训练集/测试集产生
%%
% 1. 导入数据
load iris_data.mat
%%
% 2 随机产生训练集和测试集
P_train = [];
T_train = [];
P_test = [];
T_test = [];
for i = 1:3
temp_input = features((i-1)*50+1:i*50,:);
temp_output = classes((i-1)*50+1:i*50,:);
n = randperm(50);
% 训练集——120个样本
P_train = [P_train temp_input(n(1:40),:)'];
T_train = [T_train temp_output(n(1:40),:)'];
% 测试集——30个样本
P_test = [P_test temp_input(n(41:50),:)'];
T_test = [T_test temp_output(n(41:50),:)'];
end
%% III. 模型建立
result_grnn = [];
result_pnn = [];
time_grnn = [];
time_pnn = [];
for i = 1:4 %两个FOR 取出4个特征的总共十种自由组合
for j = i:4
%1,2 1,3 1,4 2,3 2,4 3,4 1,2,3 1,2,4 1,2,3,4 2,3,4
p_train = P_train(i:j,:);
p_test = P_test(i:j,:);
%%
% 1. GRNN创建及仿真测试
t = cputime; %开始计时
% 创建网络
net_grnn = newgrnn(p_train,T_train);
% 仿真测试
t_sim_grnn = sim(net_grnn,p_test);
T_sim_grnn = round(t_sim_grnn); %取整 操作
t = cputime - t; %得到这段代码运行的时间
time_grnn = [time_grnn t];
result_grnn = [result_grnn T_sim_grnn'];
%%
% 2. PNN创建及仿真测试
t = cputime;
Tc_train = ind2vec(T_train);
% 创建网络
net_pnn = newpnn(p_train,Tc_train);
% 仿真测试
Tc_test = ind2vec(T_test); %转换成稀疏矩阵
t_sim_pnn = sim(net_pnn,p_test);
T_sim_pnn = vec2ind(t_sim_pnn);
t = cputime - t;
time_pnn = [time_pnn t];
result_pnn = [result_pnn T_sim_pnn'];
end
end
%% IV. 性能评价
%%
% 1. 正确率accuracy
accuracy_grnn = [];
accuracy_pnn = [];
time = [];
for i = 1:10
accuracy_1 = length(find(result_grnn(:,i) == T_test'))/length(T_test);
accuracy_2 = length(find(result_pnn(:,i) == T_test'))/length(T_test);
accuracy_grnn = [accuracy_grnn accuracy_1];
accuracy_pnn = [accuracy_pnn accuracy_2];
end
%%
% 2. 结果对比
result = [T_test' result_grnn result_pnn]
accuracy = [accuracy_grnn;accuracy_pnn]
time = [time_grnn;time_pnn]
%% V. 绘图
figure(1)
plot(1:30,T_test,'bo',1:30,result_grnn(:,4),'r-*',1:30,result_pnn(:,4),'k:^')
grid on
xlabel('测试集样本编号')
ylabel('测试集样本类别')
string = {'测试集预测结果对比(GRNN vs PNN)';['正确率:' num2str(accuracy_grnn(4)*100) '%(GRNN) vs ' num2str(accuracy_pnn(4)*100) '%(PNN)']};
title(string)
legend('真实值','GRNN预测值','PNN预测值')
figure(2)
plot(1:10,accuracy(1,:),'r-*',1:10,accuracy(2,:),'b:o')
grid on
xlabel('模型编号')
ylabel('测试集正确率')
title('10个模型的测试集正确率对比(GRNN vs PNN)')
legend('GRNN','PNN')
figure(3)
plot(1:10,time(1,:),'r-*',1:10,time(2,:),'b:o')
grid on
xlabel('模型编号')
ylabel('运行时间(s)')
title('10个模型的运行时间对比(GRNN vs PNN)')
legend('GRNN','PNN')
%看一下 edit newgrnn 97hang edit newpnn