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            課程目錄:Machine Learning for Finance (with R)培訓
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                Machine Learning for Finance (with R)培訓

             

             

             

            Introduction

            Difference between statistical learning (statistical analysis) and machine learning
            Adoption of machine learning technology and talent by finance companies
            Understanding Different Types of Machine Learning

            Supervised learning vs unsupervised learning
            Iteration and evaluation
            Bias-variance trade-off
            Combining supervised and unsupervised learning (semi-supervised learning)
            Understanding Machine Learning Languages and Toolsets

            Open source vs proprietary systems and software
            Python vs R vs Matlab
            Libraries and frameworks
            Understanding Neural Networks

            Understanding Basic Concepts in Finance

            Understanding Stocks Trading
            Understanding Time Series Data
            Understanding Financial Analyses
            Machine Learning Case Studies in Finance

            Signal Generation and Testing
            Feature Engineering
            Artificial Intelligence Algorithmic Trading
            Quantitative Trade Predictions
            Robo-Advisors for Portfolio Management
            Risk Management and Fraud Detection
            Insurance Underwriting
            Introduction to R

            Installing the RStudio IDE
            Loading R Packages
            Data Structures
            Vectors
            Factors
            Lists
            Data Frames
            Matrices and Arrays
            Importing Financial Data into R

            Databases, Data Warehouses, and Streaming Data
            Distributed Storage and Processing with Hadoop and Spark
            Importing Data from a Database
            Importing Data from Excel and CSV
            Implementing Regression Analysis with R

            Linear Regression
            Generalizations and Nonlinearity
            Evaluating the Performance of Machine Learning Algorithms

            Cross-Validation and Resampling
            Bootstrap Aggregation (Bagging)
            Exercise
            Developing an Algorithmic Trading Strategy with R

            Setting Up Your Working Environment
            Collecting and Examining Stock Data
            Implementing a Trend Following Strategy
            Backtesting Your Machine Learning Trading Strategy

            Learning Backtesting Pitfalls
            Components of Your Backtester
            Implementing Your Simple Backtester
            Improving Your Machine Learning Trading Strategy

            KMeans
            k-Nearest Neighbors (KNN)
            Classification or Regression Trees
            Genetic Algorithm
            Working with Multi-Symbol Portfolios
            Using a Risk Management Framework
            Using Event-Driven Backtesting
            Evaluating Your Machine Learning Trading Strategy's Performance

            Using the Sharpe Ratio
            Calculating a Maximum Drawdown
            Using Compound Annual Growth Rate (CAGR)
            Measuring Distribution of Returns
            Using Trade-Level Metrics
            Extending your Company's Capabilities

            Developing Models in the Cloud
            Using GPUs to Accelerate Deep Learning
            Applying Deep Learning Neural Networks for Computer Vision, Voice Recognition, and Text Analysis
            Summary and Conclusion

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