Mastering Financial Pattern Recognition Mastering Financial Pattern Recognition

Mastering Financial Pattern Recognition

    • $59.99
    • $59.99

Publisher Description

Candlesticks have become a key component of platforms and charting programs for financial trading. With these charts, traders can learn underlying patterns for interpreting price action history and forecasts. This A-Z guide shows portfolio managers, quants, strategists, and analysts how to use Python to recognize, scan, trade, and back-test the profitability of candlestick patterns.


Financial author, trading consultant, and institutional market strategist Sofien Kaabar shows you how to create a candlestick scanner and indicator so you can compare the profitability of these patterns. With this hands-on book, you'll also explore a new type of charting system similar to candlesticks, as well as new patterns that have never been presented before.


With this book, you will:

Create and understand the conditions required for classic and modern candlestick patternsLearn the market psychology behind themUse a framework to learn how back-testing trading strategies are conductedExplore different charting systems and understand their limitationsImport OHLC historical FX data in Python in different time framesUse algorithms to scan for and reproduce patternsLearn a pattern's potential by evaluating its profitability and predictability

GENRE
Computers & Internet
RELEASED
2022
October 18
LANGUAGE
EN
English
LENGTH
290
Pages
PUBLISHER
O'Reilly Media
SELLER
O Reilly Media, Inc.
SIZE
8.8
MB
Trading the Markets the Point & Figure way Trading the Markets the Point & Figure way
2019
The Handbook of Technical Analysis + Test Bank The Handbook of Technical Analysis + Test Bank
2015
Basic Technical Analysis of Financial Markets Basic Technical Analysis of Financial Markets
2013
Scientific Guide To Price Action and Pattern Trading Scientific Guide To Price Action and Pattern Trading
2017
Guide to Precision Harmonic Pattern Trading Guide to Precision Harmonic Pattern Trading
2016
Technical Analysis for Algorithmic Pattern Recognition Technical Analysis for Algorithmic Pattern Recognition
2015