问题描述
我的程序使用K-means群集,该群集来自用户一定数量的群集.对于这个k = 4,但是我想稍后通过matlabs天真的贝叶斯分类器运行聚类信息.
My programme uses K-means clustering of a set amount of clusters from the user. For this k=4 but I would like to run the clustered information through matlabs naive bayes classifier afterwards.
是否有一种方法可以将集群拆分并馈入Matlab中的不同朴素分类器?
Is there a way to split the clusters up and feed them into different naive classifiers in matlab?
朴素贝叶斯:
class = classify(test,training, target_class, 'diaglinear');
K均值:
%% generate sample data
K = 4;
numObservarations = 5000;
dimensions = 42;
%% cluster
opts = statset('MaxIter', 500, 'Display', 'iter');
[clustIDX, clusters, interClustSum, Dist] = kmeans(data, K, 'options',opts, ...
'distance','sqEuclidean', 'EmptyAction','singleton', 'replicates',3);
%% plot data+clusters
figure, hold on
scatter3(data(:,1),data(:,2),data(:,3), 5, clustIDX, 'filled')
scatter3(clusters(:,1),clusters(:,2),clusters(:,3), 100, (1:K)', 'filled')
hold off, xlabel('x'), ylabel('y'), zlabel('z')
%% plot clusters quality
figure
[silh,h] = silhouette(data, clustIDX);
avrgScore = mean(silh);
%% Assign data to clusters
% calculate distance (squared) of all instances to each cluster centroid
D = zeros(numObservarations, K); % init distances
for k=1:K
%d = sum((x-y).^2).^0.5
D(:,k) = sum( ((data - repmat(clusters(k,:),numObservarations,1)).^2), 2);
end
% find for all instances the cluster closet to it
[minDists, clusterIndices] = min(D, [], 2);
% compare it with what you expect it to be
sum(clusterIndices == clustIDX)
类似于将k个聚类输出为k1,k2,k3格式,然后让朴素的分类器选择它们,而不是测试它就是k1,k2.等等.
something like outputing k clusters to a format k1,k2,k3 then having the naive classifier pick those up, instead of test it would be k1,k2.. etc
class = classify(k1,training, target_class, 'diaglinear');
但是我只是不知道如何将matlab中的k个簇的输出发送到某种类型的格式? (这是该计划的新手)
But I just dont know how to send the output of the k clusters in matlab to some type of format? (really new to this programme)
编辑
training = [1;0;-1;-2;4;0]; % this is the sample data.
target_class = ['posi';'zero';'negi';'negi';'posi';'zero'];% This should have the same number of rows as training data. The elements and the class on the same row should correspond.
% target_class are the different target classes for the training data; here 'positive' and 'negetive' are the two classes for the given training data
% Training and Testing the classifier (between positive and negative)
test = 10*randn(10,1) % this is for testing. I am generating random numbers.
class = classify(test,training, target_class, 'diaglinear') % This command classifies the test data depening on the given training data using a Naive Bayes classifier
% diaglinear is for naive bayes classifier; there is also diagquadratic
推荐答案
尝试一下:
% create 100 random points (this is the training data)
X = rand(100,3);
% cluster into 5 clusters
K = 5;
[IDX, C] = kmeans(X, K);
% now let us say you have new data and you want
% to classify it based on the training:
SAMPLE = rand(10,3);
CLASS = classify(SAMPLE,X,IDX);
如果只想从数据中筛选出一个集群,则可以执行以下操作:
And if you just want to filter out one of the clusters out of the data you can do something like that:
K1 = X(IDX==1)
希望是有帮助的..
这篇关于MATLAB-分类输出的文章就介绍到这了,希望我们推荐的答案对大家有所帮助,也希望大家多多支持!