logo

Online Public Access Catalogue

Implementing machine learning for finance : a systematic approach to predictive risk and performance analysis for investment portfolios / Tshepo Chris Nokeri

By: Nokeri, Tshepo ChrisMaterial type: TextTextPublisher: India : Apress, 2021Description: xviii, 182 pages : illustrations ; 25 cmISBN: 9781484279090Subject(s): Machine learning | Investments -- Data processing | Python (Computer program language)DDC classification: 006.31
Contents:
Cover Front Matter 1. Introduction to Financial Markets and Algorithmic Trading 2. Forecasting Using ARIMA, SARIMA, and the Additive Model 3. Univariate Time Series Using Recurrent Neural Nets 4. Discover Market Regimes 5. Stock Clustering 6. Future Price Prediction Using Linear Regression 7. Stock Market Simulation 8. Market Trend Classification Using ML and DL 9. Investment Portfolio and Risk Analysis Back Matter
Summary: Bring together machine learning (ML) and deep learning (DL) in financial trading, with an emphasis on investment management. This book explains systematic approaches to investment portfolio management, risk analysis, and performance analysis, including predictive analytics using data science procedures. The book introduces pattern recognition and future price forecasting that exerts effects on time series analysis models, such as the Autoregressive Integrated Moving Average (ARIMA) model, Seasonal ARIMA (SARIMA) model, and Additive model, and it covers the Least Squares model and the Long Short-Term Memory (LSTM) model. It presents hidden pattern recognition and market regime prediction applying the Gaussian Hidden Markov Model. The book covers the practical application of the K-Means model in stock clustering. It establishes the practical application of the Variance-Covariance method and Simulation method (using Monte Carlo Simulation) for value at risk estimation. It also includes market direction classification using both the Logistic classifier and the Multilayer Perceptron classifier. Finally, the book presents performance and risk analysis for investment portfolios. By the end of this book, you should be able to explain how algorithmic trading works and its practical application in the real world, and know how to apply supervised and unsupervised ML and DL models to bolster investment decision making and implement and optimize investment strategies and systems. What You Will Learn Understand the fundamentals of the financial market and algorithmic trading, as well as supervised and unsupervised learning models that are appropriate for systematic investment portfolio management Know the concepts of feature engineering, data visualization, and hyperparameter optimization Design, build, and test supervised and unsupervised ML and DL models Discover seasonality, trends, and market regimes, simulating a change in the market and investment strategy problems and predicting market direction and prices Structure and optimize an investment portfolio with preeminent asset classes and measure the underlying risk
List(s) this item appears in: New Arrivals - August 1st to 31st 2023
Tags from this library: No tags from this library for this title. Log in to add tags.
    Average rating: 0.0 (0 votes)
Item type Current location Call number Status Date due Barcode
Books Institute of Public Enterprise, Library
S Campus
006.31 NOK (Browse shelf) Available 47684
Books Institute of Public Enterprise, Library
S Campus
006.31 NOK (Browse shelf) Available 47685
Books Institute of Public Enterprise, Library
S Campus
006.31 NOK (Browse shelf) Available 47686

Index

Cover
Front Matter
1. Introduction to Financial Markets and Algorithmic Trading
2. Forecasting Using ARIMA, SARIMA, and the Additive Model
3. Univariate Time Series Using Recurrent Neural Nets
4. Discover Market Regimes
5. Stock Clustering
6. Future Price Prediction Using Linear Regression
7. Stock Market Simulation
8. Market Trend Classification Using ML and DL
9. Investment Portfolio and Risk Analysis
Back Matter

Bring together machine learning (ML) and deep learning (DL) in financial trading, with an emphasis on investment management. This book explains systematic approaches to investment portfolio management, risk analysis, and performance analysis, including predictive analytics using data science procedures.

The book introduces pattern recognition and future price forecasting that exerts effects on time series analysis models, such as the Autoregressive Integrated Moving Average (ARIMA) model, Seasonal ARIMA (SARIMA) model, and Additive model, and it covers the Least Squares model and the Long Short-Term Memory (LSTM) model. It presents hidden pattern recognition and market regime prediction applying the Gaussian Hidden Markov Model. The book covers the practical application of the K-Means model in stock clustering. It establishes the practical application of the Variance-Covariance method and Simulation method (using Monte Carlo Simulation) for value at risk estimation. It also includes market direction classification using both the Logistic classifier and the Multilayer Perceptron classifier. Finally, the book presents performance and risk analysis for investment portfolios.

By the end of this book, you should be able to explain how algorithmic trading works and its practical application in the real world, and know how to apply supervised and unsupervised ML and DL models to bolster investment decision making and implement and optimize investment strategies and systems.


What You Will Learn
Understand the fundamentals of the financial market and algorithmic trading, as well as supervised and unsupervised learning models that are appropriate for systematic investment portfolio management
Know the concepts of feature engineering, data visualization, and hyperparameter optimization
Design, build, and test supervised and unsupervised ML and DL models
Discover seasonality, trends, and market regimes, simulating a change in the market and investment strategy problems and predicting market direction and prices
Structure and optimize an investment portfolio with preeminent asset classes and measure the underlying risk

There are no comments on this title.

to post a comment.