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            課程目錄:Artificial Neural Networks, Machine Learning, Deep Thinking培訓
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                      Artificial Neural Networks, Machine Learning, Deep Thinking培訓

             

             

             

            DAY 1 - ARTIFICIAL NEURAL NETWORKS
            Introduction and ANN Structure.
            Biological neurons and artificial neurons.
            Model of an ANN.
            Activation functions used in ANNs.
            Typical classes of network architectures .
            Mathematical Foundations and Learning mechanisms.
            Re-visiting vector and matrix algebra.
            State-space concepts.
            Concepts of optimization.
            Error-correction learning.
            Memory-based learning.
            Hebbian learning.
            Competitive learning.
            Single layer perceptrons.
            Structure and learning of perceptrons.
            Pattern classifier - introduction and Bayes' classifiers.
            Perceptron as a pattern classifier.
            Perceptron convergence.
            Limitations of a perceptrons.
            Feedforward ANN.
            Structures of Multi-layer feedforward networks.
            Back propagation algorithm.
            Back propagation - training and convergence.
            Functional approximation with back propagation.
            Practical and design issues of back propagation learning.
            Radial Basis Function Networks.
            Pattern separability and interpolation.
            Regularization Theory.
            Regularization and RBF networks.
            RBF network design and training.
            Approximation properties of RBF.
            Competitive Learning and Self organizing ANN.
            General clustering procedures.
            Learning Vector Quantization (LVQ).
            Competitive learning algorithms and architectures.
            Self organizing feature maps.
            Properties of feature maps.
            Fuzzy Neural Networks.
            Neuro-fuzzy systems.
            Background of fuzzy sets and logic.
            Design of fuzzy stems.
            Design of fuzzy ANNs.
            Applications
            A few examples of Neural Network applications, their advantages and problems will be discussed.
            DAY -2 MACHINE LEARNING
            The PAC Learning Framework
            Guarantees for finite hypothesis set – consistent case
            Guarantees for finite hypothesis set – inconsistent case
            Generalities
            Deterministic cv. Stochastic scenarios
            Bayes error noise
            Estimation and approximation errors
            Model selection
            Radmeacher Complexity and VC – Dimension
            Bias - Variance tradeoff
            Regularisation
            Over-fitting
            Validation
            Support Vector Machines
            Kriging (Gaussian Process regression)
            PCA and Kernel PCA
            Self Organisation Maps (SOM)
            Kernel induced vector space
            Mercer Kernels and Kernel - induced similarity metrics
            Reinforcement Learning
            DAY 3 - DEEP LEARNING
            This will be taught in relation to the topics covered on Day 1 and Day 2
            Logistic and Softmax Regression
            Sparse Autoencoders
            Vectorization, PCA and Whitening
            Self-Taught Learning
            Deep Networks
            Linear Decoders
            Convolution and Pooling
            Sparse Coding
            Independent Component Analysis
            Canonical Correlation Analysis
            Demos and Applications

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