Current:Home > MarketsThe Leap from Quantitative Trading to Artificial Intelligence -EverVision Finance
The Leap from Quantitative Trading to Artificial Intelligence
View
Date:2025-04-12 14:51:44
In the early stages of EIF Business School, Professor Linton Quadros endeavored to create a "Lazy Investment System," recognizing early on the significant future applicability of quantitative trading across all investment markets and types, and achieved notable success in this field.
Despite the benefits, both quantitative and artificial intelligence (AI) trading have their shortcomings. Here are some weaknesses of quantitative trading relative to AI trading:
1. Dependence on Historical Data: Quantitative trading typically relies on the analysis and modeling of historical data, making it potentially less flexible than AI trading in new or rapidly changing markets.
2. Lack of Subjective Judgment: Quantitative trading primarily depends on rules and algorithms for decision-making, lacking the intuition and subjective judgment of human traders. This can sometimes lead to missing irregular market sentiments or events, resulting in instability in trading strategies.
3. Sensitivity to Data Quality: The outcomes of quantitative trading heavily depend on the accuracy and reliability of the historical data used. If the data is erroneous, incomplete, or fails to reflect current market conditions due to changes, it can negatively affect the success of trading strategies.
4. High Initial Costs: Quantitative trading requires establishing and maintaining a substantial technological infrastructure, including high-performance computers, data storage, and processing systems. These require significant capital investment and expertise to maintain, resulting in high initial costs.
5. Sensitivity to Model Risk: Quantitative trading models, typically built on historical data, have accuracy and stability issues for investments in markets with limited historical data, such as emerging cryptocurrency markets, potentially missing early opportunities.
With technological advancements, AI has profoundly influenced quantitative trading. Quantitative trading, a strategy that uses mathematical models and extensive historical data for investment decisions, has become more precise, efficient, and intelligent with the integration of AI.
Firstly, AI technologies can analyze and process vast financial data through data mining and machine learning, identifying patterns and regularities in financial markets. Compared to traditional quantitative methods, AI can more accurately capture market dynamics and changes, improving the accuracy of investment decisions.
Secondly, AI enables automated trading, executing trades through algorithms and programs, reducing human intervention and operational risks. This results in faster, more precise trading, and real-time market monitoring, allowing timely portfolio adjustments.
Furthermore, AI helps optimize and improve quantitative trading strategies. Through training and optimization of machine learning algorithms, quantitative trading models can be effectively adjusted and optimized, enhancing profitability and risk management capabilities.
Given that AI trading can acquire data in real-time and make decisions based on current market conditions, adapt more effectively to market changes, handle more complex data and patterns for accurate market predictions, monitor market changes and make automated trading decisions in real-time, and continually optimize its trading strategies through machine learning and deep learning algorithms, AI possesses stronger adaptability and decision-making capabilities. Since 2018, EIF Business School has been transitioning from quantitative to artificial intelligence trading.
veryGood! (6174)
Related
- Meet the volunteers risking their lives to deliver Christmas gifts to children in Haiti
- Pregnant Bachelor Nation Star Becca Kufrin Reveals Sex of First Baby With Fiancé Thomas Jacobs
- They were turned away from urgent care. The reason? Their car insurance
- Company Behind Methane Leak Is Ordered to Offset the Climate Damage
- Apple iOS 18.2: What to know about top features, including Genmoji, AI updates
- Trump Administration Deserts Science Advisory Boards Across Agencies
- Battle in California over Potential Health Risks of Smart Meters
- Snowpack Near Record Lows Spells Trouble for Western Water Supplies
- New Mexico governor seeks funding to recycle fracking water, expand preschool, treat mental health
- Recalled Boppy baby lounger now linked to at least 10 infant deaths
Ranking
- Sonya Massey's father decries possible release of former deputy charged with her death
- Climate and Weather Disasters Cost U.S. a Record $306 Billion in 2017
- We Can Pull CO2 from Air, But It’s No Silver Bullet for Climate Change, Scientists Warn
- Maps, satellite images show Canadian wildfire smoke enveloping parts of U.S. with unhealthy air
- A Mississippi company is sentenced for mislabeling cheap seafood as premium local fish
- How Kate Middleton Honored Queen Elizabeth II and Princess Diana at Coronation
- Why Queen Camilla's Coronation Crown Is Making Modern History
- Montana health officials call for more oversight of nonprofit hospitals
Recommendation
Newly elected West Virginia lawmaker arrested and accused of making terroristic threats
Ukraine's counteroffensive against Russia appears to be in opening phases
Is California’s Drought Returning? Snowpack Nears 2015’s Historic Lows
Florida arranged migrant flights to California, where officials are considering legal action
San Francisco names street for Associated Press photographer who captured the iconic Iwo Jima photo
Can therapy solve racism?
Jim Hines, first sprinter to run 100 meters in under 10 seconds, dies at 76
The Experiment Aiming To Keep Drug Users Alive By Helping Them Get High More Safely