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4 Steps in Development of Trading Algorithms

The landscape of the financial sector is vast and varied, encompassing a broad spectrum of industries from traditional banking institutions to cutting-edge fintech companies. This diversity not only offers a plethora of opportunities for investors and traders but also presents a unique set of challenges, especially when it comes to stock trading. In recent years, the integration of artificial intelligence (AI) into trading strategies has emerged as a game-changer, particularly for swing traders who specialize in the financial sector. This article delves into the intricacies of using AI for swing trading in the financial sector, spotlighting a revolutionary AI Robot designed to optimize trading outcomes.


Step 1. Crafting the AI Trading Robot

At the forefront of the revolution is the creation of an AI Robot tailored for swing and day traders focusing on trade automation. The trading algorithm is the heart of the AI Robot, designed to execute trades based on the analysis of stock correlations within the financial sector. This approach ensures a strategic entry and exit, aiming to maximize gains and minimize losses.
The Ideas for algorithms may come from descriptions of Tickeron`s Robots.

Step 2. Multi-Level Backtesting: The Backbone of Strategy Development
The methodology behind this involves multi-level backtesting on extensive historical data, a technique commonly employed by hedge funds to develop trading strategies.The team of quantitative analysts behind this robot undertook a comprehensive backtesting process to unearth correlation relationships among sector leaders and other stocks. This foundational work enabled the creation of a robust mechanism for identifying optimal entry points for trades, incorporating a suite of proven algorithms. The statistics for algorithms can be viewed at Tickeron website.

Step 3. Risk Management Strategies

Risk management is a critical component of any trading strategy. The simplest approuch for risk management is to introduce "Take profit" and "Stop loss" orders set at 4% of the opening price of a position. This disciplined approach helps traders limit potential drawdowns and safeguard their investments. Tickeron uses multiple techniques for risk management.

Step 4. Number of Trades in Swing and Day Trading 

Swing trading, characterized by holding positions for several days to capitalize on expected directional moves in stock prices, requires precise timing and strategic planning. The advent of AI in trading has transformed this approach, enabling traders to analyze vast datasets and identify patterns unrecognizable to the human eye. AI's ability to process and learn from historical data has made it an invaluable tool for traders aiming to outperform the market.
 

Profitability Model

 

The algorithm of robots of this type is based on two approaches:

1. A proprietary method of comparative analysis of company profitability, developed by our team of quants. Utilizing a pool of profitability indicators such as Total Revenue, Net Income, EBITDA, etc., the algorithm scrutinizes the dynamics of their changes. Employing a sophisticated ranking method, it assigns each company an individual score. Subsequently, the top 30 companies with the best profitability indicators are selected for opening positions.

2. The method involves analyzing profitability inspired by the renowned investor Ian Wyatt. It delves into profitability metrics such as Operating Income, EPS, etc., ranking stocks based on the maximum dynamics of growth in profitability indicators.

 

The fusion of these two methods empowers the robot's algorithm to select stocks that exhibit both stable average profitability indicators and high rates of growth.

Upon opening a trade, the robot places a fixed Stop Loss order at 20% of the opening price. Additionally, at the commencement of each month, the algorithm reviews the rating for each stock. If it falls below the required level, the position is closed, even if the Stop Loss level is not reached.

For user convenience, all signals for opening positions are delivered two hours after the market opens. This ensures maximum liquidity and enhances the robot's usability for users following its signals.

An example of this type of robot:

tickeron


Conclusion

Swing Trader bots are an effective tool for looking to trade popular stocks while minimizing risk, and it offers valuable insights into how algorithmic trading strategies can be applied in the real world.

AI in the financial sector, particularly in swing trading, marks a transformative period for traders. By leveraging sophisticated algorithms and machine learning techniques, traders can navigate the complex market dynamics with greater precision and strategic insight. 

 Disclaimers and Limitations

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