SlideShare a Scribd company logo
Overview of QTrade activities
Methods
>Neural Network
>Support Vector Machine
>Random Forest
>Gradient Boosted Trees
>…
(source) Pragramatic
Programming Techniques
Modeling with Machine Learning
Languages
>Matlab
>Python
>R
>SAS
>…
(source) Google Image
Automated Trading
like auto pilot
Online
Broker
Organizational Structure
Difference from conventional approaches
1. Free from Limits of Conventional Approaches such as
Time Series Analysis,
Technical Analysis
and Fundamental Analysis
Machine Learning and Genetic Programming could be ;
2. Able to gain much smaller Standard Errors which mean that
our approarche is beyond Conventional Approaches
3. Possible that it can link with trading system through
research and development because of essentially computational
Variation of Trading System with Machine Learning
(source) Google Images
Conventional
approaches look like…
Solutions to hot issues in the markets;
>Automated Market Making
>Market Microstructure Trading
>Event Trading
>Statistical Arbitrage
(source) Drew Conway’s
Venn Diagram of Data
Science on R blogger
Our Diagram…Coincidentally

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Q trade presentation

  • 1. Overview of QTrade activities
  • 2. Methods >Neural Network >Support Vector Machine >Random Forest >Gradient Boosted Trees >… (source) Pragramatic Programming Techniques Modeling with Machine Learning Languages >Matlab >Python >R >SAS >… (source) Google Image Automated Trading like auto pilot Online Broker
  • 4. Difference from conventional approaches 1. Free from Limits of Conventional Approaches such as Time Series Analysis, Technical Analysis and Fundamental Analysis Machine Learning and Genetic Programming could be ; 2. Able to gain much smaller Standard Errors which mean that our approarche is beyond Conventional Approaches 3. Possible that it can link with trading system through research and development because of essentially computational
  • 5. Variation of Trading System with Machine Learning (source) Google Images Conventional approaches look like… Solutions to hot issues in the markets; >Automated Market Making >Market Microstructure Trading >Event Trading >Statistical Arbitrage
  • 6. (source) Drew Conway’s Venn Diagram of Data Science on R blogger Our Diagram…Coincidentally