<thead id="fflbj"><font id="fflbj"><cite id="fflbj"></cite></font></thead>
    <progress id="fflbj"><thead id="fflbj"><font id="fflbj"></font></thead></progress>

            課程目錄:Machine Learning – Data science培訓
            4401 人關注
            (78637/99817)
            課程大綱:

                Machine Learning – Data science培訓

             

             

             

            Machine Learning introduction
            Types of Machine learning – supervised vs unsupervised learning
            From Statistical learning to Machine learning
            The Data Mining workflow:
            Business understanding
            Data Understanding
            Data preparation
            Modelling
            Evaluation
            Deployment
            Machine learning algorithms
            Choosing appropriate algorithm to the problem
            Overfitting and bias-variance tradeoff in ML
            ML libraries and programming languages
            Why use a programming language
            Choosing between R and Python
            Python crash course
            Python resources
            Python Libraries for Machine learning
            Jupyter notebooks and interactive coding
            Testing ML algorithms
            Generalization and overfitting
            Avoiding overfitting
            Holdout method
            Cross-Validation
            Bootstrapping
            Evaluating numerical predictions
            Measures of accuracy: ME, MSE, RMSE, MAPE
            Parameter and prediction stability
            Evaluating classification algorithms
            Accuracy and its problems
            The confusion matrix
            Unbalanced classes problem
            Visualizing model performance
            Profit curve
            ROC curve
            Lift curve
            Model selection
            Model tuning – grid search strategies
            Examples in Python
            Data preparation
            Data import and storage
            Understand the data – basic explorations
            Data manipulations with pandas library
            Data transformations – Data wrangling
            Exploratory analysis
            Missing observations – detection and solutions
            Outliers – detection and strategies
            Standarization, normalization, binarization
            Qualitative data recoding
            Examples in Python
            Classification
            Binary vs multiclass classification
            Classification via mathematical functions
            Linear discriminant functions
            Quadratic discriminant functions
            Logistic regression and probability approach
            k-nearest neighbors
            Na?ve Bayes
            Decision trees
            CART
            Bagging
            Random Forests
            Boosting
            Xgboost
            Support Vector Machines and kernels
            Maximal Margin Classifier
            Support Vector Machine
            Ensemble learning
            Examples in Python
            Regression and numerical prediction
            Least squares estimation
            Variables selection techniques
            Regularization and stability- L1, L2
            Nonlinearities and generalized least squares
            Polynomial regression
            Regression splines
            Regression trees
            Examples in Python
            Unsupervised learning
            Clustering
            Centroid-based clustering – k-means, k-medoids, PAM, CLARA
            Hierarchical clustering – Diana, Agnes
            Model-based clustering - EM
            Self organising maps
            Clusters evaluation and assessment
            Dimensionality reduction
            Principal component analysis and factor analysis
            Singular value decomposition
            Multidimensional Scaling
            Examples in Python
            Text mining
            Preprocessing data
            The bag-of-words model
            Stemming and lemmization
            Analyzing word frequencies
            Sentiment analysis
            Creating word clouds
            Examples in Python
            Recommendations engines and collaborative filtering
            Recommendation data
            User-based collaborative filtering
            Item-based collaborative filtering
            Examples in Python
            Association pattern mining
            Frequent itemsets algorithm
            Market basket analysis
            Examples in Python
            Outlier Analysis
            Extreme value analysis
            Distance-based outlier detection
            Density-based methods
            High-dimensional outlier detection
            Examples in Python
            Machine Learning case study
            Business problem understanding
            Data preprocessing
            Algorithm selection and tuning
            Evaluation of findings
            Deployment

            538在线视频二三区视视频