Index in position 1 exceeds array bounds. Index must not exceed 24. Error in RNN_CW2 (line 20) GlucoseReadings_T = GlucoseReadings_T(ind, :);

1 回表示 (過去 30 日間)
clc; clear all; close all;
load GlucoseReadings.mat
rand('seed', 0)
GlucoseReadings_T = GlucoseReadings';
GR_outputC1 = categorical(GR_output);
CS = categories(GR_outputC1);
train_index = []; val_index = []; test_index = [];
for i = 1 : length(CS)
indi = find(GR_outputC1==CS{i});
% Shuffling data
indi = indi(randperm(length(indi)));
% 2/3---train, 1/6---val, 1/6---test
index1 = round(length(indi)*2/3);
index2 = round(length(indi)*(2/3+1/6));
train_index = [train_index indi(1:index1)];
val_index = [val_index indi(1+index1:index2)];
test_index = [test_index indi(1+index2:end)];
end
ind = [train_index val_index test_index];
GlucoseReadings_T = GlucoseReadings_T(ind, :);
Index in position 1 exceeds array bounds. Index must not exceed 24.
GR_output = categorical(GR_output(ind));
% Split Data
GlucoseReadings_train = GlucoseReadings_T;
train_GlucoseReadings = GlucoseReadings_train(1:17,:);
train_GR_output = GR_output(1:17);
% Data Batch
GlucoseReadingsTrain=(reshape(train_GlucoseReadings', [1438,17]));
val_GlucoseReadings = GlucoseReadings_train(18:21,:);
val_GR_output = GR_output(18:21);
GlucoseReadingsVal=(reshape(val_GlucoseReadings', [1438,4]));
test_GlucoseReadings =GlucoseReadings_train(18:21,:);
test_GR_output = Gr_output(22:24);
GlucoseReadingsTest=(reshape(test_GlucoseReadings', [1438,3]));
numFeatures = size(GlucoseReadings_T,2);
% number of hidden units represent the size of the data
numHiddenUnits = 24;
%number of classes represent different patients normal,LIS,type2....
numClasses = length(categories(categorical(GR_output)));
layers = [ ...
sequenceInputLayer(numFeatures)
%dropoutLayer(0.5)
instanceNormalizationLayer
bilstmLayer(round(numHiddenUnits/2),'OutputMode','sequence')
fullyConnectedLayer(numClasses)
instanceNormalizationLayer
softmaxLayer
classificationLayer];
options = trainingOptions('adam', ...
'MaxEpochs',100, ...
'GradientThreshold',1, ...
'Verbose',false, ...
'ValidationData',{GlucoseReadingsVal, val_GR_output},...
'LearnRateDropFactor',0.2,...
'LearnRateDropPeriod',5,...
'Plots','training-progress');
% Train
net = trainNetwork(GlucoseReadingsTrain,train_GR_output,layers,options);
% Test
miniBatchSize = 27;
GR_outputPred = classify(net,GlucoseReadingsTest, ...
'MiniBatchSize',miniBatchSize,...
'ExecutionEnvironment', 'cpu');
acc = mean(GR_outputPred(:) == categorical(test_GR_output(:)))
figure
t = confusionchart(categorical(test_GR_output(:)),GR_outputPred(:));

採用された回答

yanqi liu
yanqi liu 2022 年 2 月 23 日
clc; clear all; close all;
load GlucoseReadings.mat
rand('seed', 0)
GlucoseReadings_T = GlucoseReadings';
GR_outputC1 = categorical(GR_output);
len = min(length(GR_outputC1),size(GlucoseReadings_T,1));
GlucoseReadings_T = GlucoseReadings_T(1:len,:);
GR_outputC1 = GR_outputC1(1:len);
CS = categories(GR_outputC1);
train_index = []; val_index = []; test_index = [];
for i = 1 : length(CS)
indi = find(GR_outputC1==CS{i});
% Shuffling data
indi = indi(randperm(length(indi)));
% 2/3---train, 1/6---val, 1/6---test
index1 = round(length(indi)*2/3);
index2 = round(length(indi)*(2/3+1/6));
train_index = [train_index indi(1:index1)];
val_index = [val_index indi(1+index1:index2)];
test_index = [test_index indi(1+index2:end)];
end
ind = [train_index val_index test_index];
GlucoseReadings_T = GlucoseReadings_T(ind, :);
GR_output = categorical(GR_output(ind));
% Split Data
GlucoseReadings_train = GlucoseReadings_T;
train_GlucoseReadings = GlucoseReadings_train(1:17,:);
train_GR_output = GR_output(1:17);
% Data Batch
GlucoseReadingsTrain=(reshape(train_GlucoseReadings', [1438,size(train_GlucoseReadings,1)]));
val_GlucoseReadings = GlucoseReadings_train(18:21,:);
val_GR_output = GR_output(18:21);
GlucoseReadingsVal=(reshape(val_GlucoseReadings', [1438,size(val_GlucoseReadings,1)]));
test_GlucoseReadings =GlucoseReadings_train(22:24,:);
test_GR_output = GR_output(22:24);
GlucoseReadingsTest=(reshape(test_GlucoseReadings', [1438,size(test_GlucoseReadings,1)]));
numFeatures = size(GlucoseReadings_T,2);
% number of hidden units represent the size of the data
numHiddenUnits = 24;
%number of classes represent different patients normal,LIS,type2....
numClasses = length(categories(categorical(GR_output)));
layers = [ ...
sequenceInputLayer(numFeatures)
%dropoutLayer(0.5)
instanceNormalizationLayer
bilstmLayer(round(numHiddenUnits/2),'OutputMode','sequence')
fullyConnectedLayer(numClasses)
instanceNormalizationLayer
softmaxLayer
classificationLayer];
options = trainingOptions('adam', ...
'MaxEpochs',100, ...
'GradientThreshold',1, ...
'Verbose',false, ...
'ValidationData',{GlucoseReadingsVal, val_GR_output},...
'LearnRateDropFactor',0.2,...
'LearnRateDropPeriod',5,...
'Plots','training-progress');
% Train
net = trainNetwork(GlucoseReadingsTrain,train_GR_output,layers,options);
% Test
miniBatchSize = 27;
GR_outputPred = classify(net,GlucoseReadingsTest, ...
'MiniBatchSize',miniBatchSize,...
'ExecutionEnvironment', 'cpu');
acc = mean(GR_outputPred(:) == categorical(test_GR_output(:)))
figure
t = confusionchart(categorical(test_GR_output(:)),GR_outputPred(:));

その他の回答 (0 件)

カテゴリ

Help Center および File ExchangeSequence and Numeric Feature Data Workflows についてさらに検索

製品


リリース

R2021b

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by