Automated Trading with R (eBook)
XXV, 205 Seiten
Apress (Verlag)
978-1-4842-2178-5 (ISBN)
This book explains the broad topic of automated trading, starting with its mathematics and moving to its computation and execution. Readers will gain a unique insight into the mechanics and computational considerations taken in building a backtester, strategy optimizer, and fully functional trading platform.
Automated Trading with R provides automated traders with all the tools they need to trade algorithmically with their existing brokerage, from data management, to strategy optimization, to order execution, using free and publically available data. If your brokerage's API is supported, the source code is plug-and-play.
The platform built in this book can serve as a complete replacement for commercially available platforms used by retail traders and small funds. Software components are strictly decoupled and easily scalable, providing opportunity to substitute any data source, trading algorithm, or brokerage. The book's three objectives are:- To provide a flexible alternative to common strategy automation frameworks, like Tradestation, Metatrader, and CQG, to small funds and retail traders.
- To offer an understanding the internal mechanisms of an automated trading system.
- To standardize discussion and notation of real-world strategy optimization problems.
What you'll learn
- Programming an automated strategy in R gives the trader access to R and its package library for optimizing strategies, generating real-time trading decisions, and minimizing computation time.
- How to best simulate strategy performance in their specific use case to derive accurate performance estimates.
- Important machine-learning criteria for statistical validity in the context of time-series.
- An understanding of critical real-world variables pertaining to portfolio management and performance assessment, including latency, drawdowns, varying trade size, portfolio growth, and penalization of unused capital.
Who This Book Is For
This book is for traders/practitioners at the retail or small fund level with at least an undergraduate background in finance or computer science. Graduate level finance or data science students.
Chris Conlan began his career as an independent data scientist specializing in trading algorithms. He attended the University of Virginia where he completed the undergraduate statistics curriculum in three semesters. During his time at UVA, he completed a $2mil initial fundraising round for Titan Capital Group, a high-frequency Forex group, as President and Chief Trading Strategist. He is currently managing development of private tech companies in high-frequency FOREX, machine vision, and dynamic reporting, deployed in websites, private clouds, and iOS devices.
Learn to trade algorithmically with your existing brokerage, from data management, to strategy optimization, to order execution, using free and publicly available data. Connect to your brokerage's API, and the source code is plug-and-play.Automated Trading with R explains automated trading, starting with its mathematics and moving to its computation and execution. You will gain a unique insight into the mechanics and computational considerations taken in building a back-tester, strategy optimizer, and fully functional trading platform.The platform built in this book can serve as a complete replacement for commercially available platforms used by retail traders and small funds. Software components are strictly decoupled and easily scalable, providing opportunity to substitute any data source, trading algorithm, or brokerage. This book will:Provide a flexible alternative to common strategy automation frameworks, like Tradestation, Metatrader, and CQG, to small funds and retail tradersOffer an understanding of the internal mechanisms of an automated trading systemStandardize discussion and notation of real-world strategy optimization problemsWhat You Will LearnUnderstand machine-learning criteria for statistical validity in the context of time-seriesOptimize strategies, generate real-time trading decisions, and minimize computation time while programming an automated strategy in R and using its package libraryBest simulate strategy performance in its specific use case to derive accurate performance estimatesUnderstand critical real-world variables pertaining to portfolio management and performance assessment, including latency, drawdowns, varying trade size, portfolio growth, and penalization of unused capitalWho This Book Is ForTraders/practitioners at the retail or small fund level with at least an undergraduate background in finance or computer science; graduate level finance or data science students
Chris Conlan began his career as an independent data scientist specializing in trading algorithms. He attended the University of Virginia where he completed his undergraduate statistics coursework in three semesters. During his time at UVA, he secured initial fundraising for a privately held high-frequency forex group as president and chief trading strategist. He is currently managing the development of private technology companies in high-frequency forex, machine vision, and dynamic reporting.
Part 1: Problem Scope
Chapter 1: Fundamentals of Automated Trading
Chapter 2: Networking Part I: Fetching Data
Part 2: Building the Platform
Chapter 3: Data Preparation
Chapter 4: Indicators
Chapter 5: Rule Sets
Chapter 6: High-Performance Computing
Chapter 7: Simulation and Backtesting
Chapter 8: Optimization
Chapter 9: Networking Part II
Chapter 10: Organizing and Automating Scripts
Part 3: Production Trading
Chapter 11: Looking Forward
Chapter 12: Appendix A: Source Code
Chapter 13: Appendix B: Scoping in Multicore R
Erscheint lt. Verlag | 28.9.2016 |
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Zusatzinfo | XXV, 205 p. 35 illus., 16 illus. in color. |
Verlagsort | Berkeley |
Sprache | englisch |
Themenwelt | Mathematik / Informatik ► Informatik ► Programmiersprachen / -werkzeuge |
Informatik ► Software Entwicklung ► Objektorientierung | |
Mathematik / Informatik ► Mathematik ► Angewandte Mathematik | |
Schlagworte | Algorithm science • automated trading • Data Management • Data Science • High-Performance Computing • machine learning • Numerical optimization • Quantitative Finance • R Programming • system administration • Trading algorithms |
ISBN-10 | 1-4842-2178-8 / 1484221788 |
ISBN-13 | 978-1-4842-2178-5 / 9781484221785 |
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