Coursera machine learning course resources.
Bayesian Reasoning and Machine Learning http://web4.cs.ucl.ac.uk/staff/D.Barber/textbook/090310.pdf
https://class.coursera.org/ml/lecture/preview
- Introduction
- Linear regression with one variable
- Linear Algebra review (Optional)
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Linear regression with multiple variables
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Octave tutorial
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Programming Exercise 1: Linear Regression
Best and Most Recent Submission Score 100 / 100 points earned PASSED Submitted on 6 七月 2015 在 7:35 晚上 Part Name Score 1 Warm up exercise 10 / 10 2 Compute cost for one variable 40 / 40 3 Gradient descent for one variable 50 / 50 4 Feature normalization 0 / 0 5 Compute cost for multiple variables 0 / 0 6 Gradient descent for multiple variables 0 / 0 7 Normal equations 0 / 0
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Logistic regression
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Regularization
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Programming Exercise 2: Logistic Regression
Best and Most Recent Submission Score 100 / 100 points earned PASSED Submitted on 8 七月 2015 在 1:00 凌晨 Part Name Score 1 Sigmoid function 5 / 5 2 Compute cost for logistic regression 30 / 30 3 Gradient for logistic regression 30 / 30 4 Predict function 5 / 5 5 Compute cost for regularized LR 15 / 15 6 Gradient for regularized LR 15 / 15
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Neural Networks: Representation
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Programming Exercise 3: Multi-class Classification and Neural Networks
Best and Most Recent Submission Score 100 / 100 points earned PASSED Submitted on 9 七月 2015 在 1:16 凌晨 Part Name Score 1 Regularized logistic regression 30 / 30 2 One-vs-all classifier training 20 / 20 3 One-vs-all classifier prediction 20 / 20 4 Neural network prediction function 30 / 30
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Neural Networks: Learning
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Programming Exercise 4: Neural Networks Learning
Best and Most Recent Submission Score 100 / 100 points earned PASSED Submitted on 9 七月 2015 在 7:25 晚上 Part Name Score 1 Feedforward and cost function 30 / 30 2 Regularized cost function 15 / 15 3 Sigmoid gradient 5 / 5 4 Neural net gradient function (backpropagation) 40 / 40 5 Regularized gradient 10 / 10
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Advice for applying machine learning
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Machine learning system design
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Programming Exercise 5: Regularized Linear Regression and Bias v.s. Variance
Best and Most Recent Submission Score 100 / 100 points earned PASSED Submitted on 11 七月 2015 在 3:28 凌晨 Part Name Score 1 Regularized linear regression cost function 25 / 25 2 Regularized linear regression gradient 25 / 25 3 Learning curve 20 / 20 4 Polynomial feature mapping 10 / 10 5 Cross validation curve 20 / 20
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Support vector machines
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Programming Exercise 6: Support Vector Machines
Best and Most Recent Submission Score 100 / 100 points earned PASSED Submitted on 12 七月 2015 在 2:48 凌晨 Part Name Score 1 Gaussian kernel 25 / 25 2 Parameters (C, sigma) for dataset 3 25 / 25 3 Email preprocessing 25 / 25 4 Email feature extraction 25 / 25
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Clustering
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Dimensionality reduction
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Programming Exercise 7: K-means Clustering and Principal Component Analysis
Best and Most Recent Submission Score 100 / 100 points earned PASSED Submitted on 13 七月 2015 在 2:45 凌晨 Part Name Score 1 Find closest centroids 30 / 30 2 Compute centroid means 30 / 30 3 PCA 20 / 20 4 Project data 10 / 10 5 Recover data 10 / 10
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Anomaly Detection
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Recommender Systems
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Programming Exercise 8: Anomaly Detection and Recommender Systems
Best and Most Recent Submission Score 100 / 100 points earned PASSED Submitted on 14 七月 2015 在 8:12 晚上 Part Name Score 1 Estimate gaussian parameters 15 / 15 2 Select threshold 15 / 15 3 Collaborative filtering cost 20 / 20 4 Collaborative filtering gradient 30 / 30 5 Regularized cost 10 / 10 6 Gradient with regularization 10 / 10
- Large scale machine learning
- Application example: Photo OCR
###Final Grade: 100%
-Supervised Learning
Linear regression, logistic regression, neural networks, SVMs
-Unsupervised Learning
K-means, PCA, Anomaly detection
-Special applications/special topics
Recommender systems, large scale machine learning
-Advice on building a machine learning system
Bias/variance, regularization; deciding what to work on next: evalution of learning algorithms, learning curves, error analysis, ceiling analysis.