What Is a Trading Strategy?

A trading strategy is a systematic methodology used for buying and selling in the securities markets. A trading strategy is based on predefined rules and criteria used when making trading decisions.

A trading strategy may be simple or complex, and involve considerations such as investment style (e.g., value vs. growth), market cap, technical indicators, fundamental analysis, industry sector, level of portfolio diversification, time horizon or holding period, risk tolerance, leverage, tax considerations, and so on. The key is that a trading strategy be set using objective data and analysis and is adhered to diligently. At the same time, a trading strategy should be periodically re-evaluated and tweaked as market conditions or individual goals change.

KEY TAKEAWAYS

A trading strategy can be likened to a trading plan that takes into account various factors and requirements for an investor.

A trading strategy typically consists of three stages: planning, placing trades, and executing trades.

At each stage of the process, metrics relating to the strategy are measured and changed based on the change in markets.

Most trading strategies are based on either technicals or fundamentals, using quantifiable information that can be backtested to determine accuracy.

Understanding Trading Strategies

A trading strategy includes a well-considered investing and trading plan that specifies investing objectives, risk tolerance, time horizon, and tax implications. Ideas and best practices need to be researched and adopted then adhered to. Planning for trading includes developing methods that include buying or selling stocks, bonds, ETFs, or other investments and may extend to more complex trades such as options or futures.

Placing trades means working with a broker or broker-dealer and identifying and managing trading costs including spreads, commissions, and fees. Once executed, trading positions are monitored and managed, including adjusting or closing them as needed. Risk and return are measured as well as portfolio impacts of trades and tax implications.

Developing a Trading Strategy

There are many types of trading strategies, but they are based largely on either technicals or fundamentals. The common thread is that both rely on quantifiable information that can be backtested for accuracy. Technical trading strategies rely on technical indicators to generate trading signals. Technical traders believe all information about a given security is contained in its price and that it moves in trends.

For example, a simple trading strategy may be a moving average crossover whereby a short-term moving average crosses above or below a long-term moving average.

Fundamental trading strategies take fundamental factors into account. For instance, an investor may have a set of screening criteria to generate a list of opportunities. These criteria are developed by analyzing factors such as revenue growth and profitability.

There is a third type of trading strategy that has gained prominence in recent times. A quantitative trading strategy is similar to technical trading in that it uses information relating to the stock to arrive at a purchase or sale decision. However, the matrix of factors that it takes into account to arrive at a purchase or sale decision is considerably larger compared to technical analysis. A quantitative trader uses several data points—regression analysis of trading ratios, technical data, price—to exploit inefficiencies in the market and conduct quick trades using technology.

Special Considerations

Trading strategies are employed to avoid behavioral finance biases and ensure consistent results. For example, traders following rules governing when to exit a trade would be less likely to succumb to the disposition effect, which causes investors to hold on to stocks that have lost value and sell those that rise in value. Trading strategies can be stress-tested under varying market conditions to measure consistency.

Profitable trading strategies are difficult to develop, however, and there is a risk of becoming over-reliant on a strategy. For instance, a trader may curve fit a trading strategy to specific backtesting data, which may engender false confidence. The strategy may have worked well in theory based on past market data, but past performance does not guarantee future success in real-time market conditions, which may vary significantly from the test period.