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            課程目錄:Data Mining and Analysis 培訓
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                    Data Mining and Analysis 培訓

             

             

             

            Data preprocessing
            Data Cleaning
            Data integration and transformation
            Data reduction
            Discretization and concept hierarchy generation
            Statistical inference
            Probability distributions, Random variables, Central limit theorem
            Sampling
            Confidence intervals
            Statistical Inference
            Hypothesis testing
            Multivariate linear regression
            Specification
            Subset selection
            Estimation
            Validation
            Prediction
            Classification methods
            Logistic regression
            Linear discriminant analysis
            K-nearest neighbours
            Naive Bayes
            Comparison of Classification methods
            Neural Networks
            Fitting neural networks
            Training neural networks issues
            Decision trees
            Regression trees
            Classification trees
            Trees Versus Linear Models
            Bagging, Random Forests, Boosting
            Bagging
            Random Forests
            Boosting
            Support Vector Machines and Flexible disct
            Maximal Margin classifier
            Support vector classifiers
            Support vector machines
            2 and more classes SVM’s
            Relationship to logistic regression
            Principal Components Analysis
            Clustering
            K-means clustering
            K-medoids clustering
            Hierarchical clustering
            Density based clustering
            Model Assesment and Selection
            Bias, Variance and Model complexity
            In-sample prediction error
            The Bayesian approach
            Cross-validation
            Bootstrap methods

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