Quantitative Trading is an automated trading method driven by mathematical models and algorithms. It uses data analysis, programming, and statistics to develop a clear and repeatable trading strategy, and avoids human interference through automated order placement. This method originated from Wall Street and has gradually spread to the encryption market, foreign exchange, commodities, and even the NFT field. Quantitative trading mainly includes three core processes:
Determine the trend based on technical indicators such as the moving average of asset prices and Bollinger Bands, and once the market starts, follow up with positions.
Assuming that the price will fluctuate around a certain “average value” in the long term, when the price deviates too far, a reverse operation will be performed.
By leveraging extremely high order frequencies to capture the bid-ask spread, it requires very high infrastructure, usually executed by trading institutions.
For example: Statistical Arbitrage or Hedge Strategy, capturing price differences through hedging positions across different assets or exchanges.
Example: Buy ETH on Gate while shorting ETH perpetual contracts on another exchange to profit from the spot and futures price difference.
Although quantitative trading seems stable and automated, it is not foolproof. Here are some potential risks:
It is recommended that beginners start with semi-automatic trading, such as using Python scripts to send trading signals, initially assisting with manual orders and gradually transitioning to full automation.
If you want to learn more about Web3 content, click to register:https://www.gate.com/
Quantitative trading represents a disciplined and systematic way of thinking, entrusting the instability of human nature to algorithms, allowing every trade to be traceable and optimizable. For Web3 players, this is an upgrade path to strengthen their technical skills, risk control ability, and capital efficiency.
Quantitative Trading is an automated trading method driven by mathematical models and algorithms. It uses data analysis, programming, and statistics to develop a clear and repeatable trading strategy, and avoids human interference through automated order placement. This method originated from Wall Street and has gradually spread to the encryption market, foreign exchange, commodities, and even the NFT field. Quantitative trading mainly includes three core processes:
Determine the trend based on technical indicators such as the moving average of asset prices and Bollinger Bands, and once the market starts, follow up with positions.
Assuming that the price will fluctuate around a certain “average value” in the long term, when the price deviates too far, a reverse operation will be performed.
By leveraging extremely high order frequencies to capture the bid-ask spread, it requires very high infrastructure, usually executed by trading institutions.
For example: Statistical Arbitrage or Hedge Strategy, capturing price differences through hedging positions across different assets or exchanges.
Example: Buy ETH on Gate while shorting ETH perpetual contracts on another exchange to profit from the spot and futures price difference.
Although quantitative trading seems stable and automated, it is not foolproof. Here are some potential risks:
It is recommended that beginners start with semi-automatic trading, such as using Python scripts to send trading signals, initially assisting with manual orders and gradually transitioning to full automation.
If you want to learn more about Web3 content, click to register:https://www.gate.com/
Quantitative trading represents a disciplined and systematic way of thinking, entrusting the instability of human nature to algorithms, allowing every trade to be traceable and optimizable. For Web3 players, this is an upgrade path to strengthen their technical skills, risk control ability, and capital efficiency.