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  • matlab(5) : 求得θ值后用模型来预测 / 计算模型的精度

    求得θ值后用模型来预测 / 计算模型的精度

     ex2.m部分程序

    %% ============== Part 4: Predict and Accuracies ==============
    % After learning the parameters, you'll like to use it to predict the outcomes
    % on unseen data. In this part, you will use the logistic regression model
    % to predict the probability that a student with score 45 on exam 1 and
    % score 85 on exam 2 will be admitted.
    %
    % Furthermore, you will compute the training and test set accuracies of
    % our model.
    %
    % Your task is to complete the code in predict.m

    % Predict probability for a student with score 45 on exam 1
    % and score 85 on exam 2

    prob = sigmoid([1 45 85] * theta);
    fprintf(['For a student with scores 45 and 85, we predict an admission ' ...
    'probability of %f '], prob);

    % Compute accuracy on our training set
    p = predict(theta, X);

    fprintf('Train Accuracy: %f ', mean(double(p == y)) * 100);   %若p==y,则返回1否则返回0;然后对这些0,1求平均值

    fprintf(' Program paused. Press enter to continue. ');
    pause;  

    predict.m

    function p = predict(theta, X)
    %PREDICT Predict whether the label is 0 or 1 using learned logistic
    %regression parameters theta
    % p = PREDICT(theta, X) computes the predictions for X using a
    % threshold at 0.5 (i.e., if sigmoid(theta'*x) >= 0.5, predict 1)

    m = size(X, 1); % Number of training examples

    % You need to return the following variables correctly
    p = zeros(m, 1);

    % ====================== YOUR CODE HERE ======================
    % Instructions: Complete the following code to make predictions using
    % your learned logistic regression parameters.
    % You should set p to a vector of 0's and 1's
    %
    for i=1:m
        if sigmoid(X(i,:) * theta) >=0.5
            p(i) = 1;
        else
            p(i) = 0;
        end
    end

    % =========================================================================


    end

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  • 原文地址:https://www.cnblogs.com/yan2015/p/4843564.html
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