Reverse Engineering a 20% Return Target Before Entering a Trade

Most traders start by searching for entries. They look for chart patterns, indicators, market narratives, or signals that might identify the next profitable opportunity. While these tools can be useful, they often address the final step of investing rather than the first.

A portfolio manager typically approaches the problem differently. Before considering an entry setup, the manager defines a target return, acceptable drawdown, position sizing framework, and expected opportunity set. The goal is not merely to find good trades. The goal is to build a process capable of achieving a specific financial objective.

This distinction may seem subtle, but it fundamentally changes decision-making. Instead of asking whether a trade looks attractive, the investor asks whether the entire strategy can realistically deliver the desired outcome while remaining within acceptable risk limits.

Observation: Start With The Desired Return

Consider a hypothetical account worth $100,000. Suppose the objective is to achieve a 20% annual return. The requirement is therefore simple: generate $20,000 of profit over the course of a year.

Next comes risk allocation. Assume the investor is willing to risk 1% of capital per trade, or $1,000. This immediately creates a common unit for evaluating performance. Every gain and loss can now be measured relative to the amount of capital placed at risk.

Now assume the average holding period is five trading days. With approximately 250 trading days in a year, the strategy can deploy capital roughly 50 times. The exact number is not important. What matters is recognizing that opportunity frequency is part of the investment equation.

At this point, a useful question emerges. If the annual target is $20,000 and there are approximately 50 opportunities, how much must each trade contribute on average? The answer is $400. Relative to the $1,000 risk amount, the required expectancy becomes 0.4R.

Explanation: Why Expectancy Is The Critical Variable

Many traders focus on individual outcomes. They celebrate large winners and become frustrated by losses. However, long-term performance is determined by expectancy rather than any single trade. Expectancy measures the average amount earned per trade after accounting for both winners and losers.

In this example, the strategy does not need every trade to generate 2R or 3R. It only needs to produce an average expectancy of 0.4R across a sufficiently large sample of opportunities. The challenge is therefore not finding extraordinary trades. The challenge is building a repeatable process.

Consider a strategy with a 40% win rate, average winners of 2R, and average losers of 1R. The expectancy calculation is straightforward:

  • 0.4 × 2R = 0.8R
  • 0.6 × 1R = 0.6R
  • Net expectancy = 0.2R

At first glance, the strategy appears attractive. The average winner is twice the average loser, and the strategy remains profitable. However, profitability alone is not the objective. The objective is achieving a specific return target.

An expectancy of 0.2R with $1,000 risk per trade generates approximately $200 per opportunity. Across 50 opportunities, expected annual profit becomes $10,000. That translates to a 10% annual return rather than the desired 20% target.

This exercise highlights a reality many investors overlook. A profitable strategy can still be inadequate. The correct benchmark is not whether a strategy makes money. The correct benchmark is whether it meets the investor’s required return while remaining within acceptable risk limits.

Implication: Three Levers Determine The Outcome

Once the economics of the strategy are understood, improving results becomes a matter of adjusting a limited number of variables. There are only a few ways to bridge the gap between a 10% expected return and a 20% target.

The first lever is expectancy. Better trade selection, improved exits, stronger risk management, or a more robust edge can increase the average profit generated per unit of risk. Small improvements in expectancy often have significant long-term effects because they are applied repeatedly.

The second lever is position sizing. Increasing risk per trade raises expected profits, but it also increases drawdowns and portfolio volatility. This lever is powerful, but it must be used carefully because survival remains the foundation of compounding.

The third lever is opportunity frequency. A shorter holding period or a broader universe of opportunities can increase the number of independent decisions made each year. More opportunities allow the investor to deploy an edge more frequently.

Connecting Skill To Opportunity

This relationship is captured by the Fundamental Law of Active Management:

IR = IC × √Breadth

The formula emphasizes that performance is influenced by both skill and opportunity frequency. Information Coefficient represents forecasting ability, while Breadth represents the number of independent opportunities available to apply that skill.

An investor does not necessarily need extraordinary predictive ability. A modest edge, applied consistently across many opportunities with disciplined position sizing, can produce attractive outcomes. Conversely, even a strong edge may struggle to generate meaningful returns if opportunities are scarce.

This perspective shifts attention away from predicting the next trade and toward designing a repeatable investment process. Rather than obsessing over individual outcomes, the investor focuses on expectancy, position sizing, opportunity frequency, and risk-adjusted performance.

Ultimately, entries matter, but they are not the starting point. The process begins with defining return objectives, acceptable losses, risk per trade, and opportunity frequency. Only after these variables are established does the entry setup become relevant. The trade is simply the final expression of a portfolio construction decision that began much earlier.

Why Low Win Rates Can Still Win the FTMO Game

Many traders spend years searching for a strategy that wins most of the time. A high win rate feels reassuring because it provides frequent positive feedback. Unfortunately, markets do not reward emotional comfort. They reward disciplined execution of an edge over a sufficiently long period of time.

One of the most important lessons I learned from trading is that consistency matters more than being right frequently. This realization became clearer as I compared trend following with daily scalping. The attraction of scalping is obvious: frequent trades, frequent feedback, and often a higher win rate. The attraction of trend following is less obvious because it requires patience, tolerance for losses, and faith in a process that may look ineffective over short periods.

Yet over time, I found myself trusting the trend-following approach more. Not because it produced constant winners, but because it aligned with a repeatable process that I could execute consistently.

Observation

There is an interesting similarity between investing and human relationships. In both cases, people often abandon something proven in search of something more exciting. Investors jump between strategies after a losing streak. Traders switch systems after a few losing trades. The desire for immediate validation frequently overwhelms long-term discipline.

Trend following often feels uncomfortable because the win rate can be surprisingly low. Many trades fail. Many entries are stopped out. The strategy can appear inefficient when viewed one trade at a time. However, evaluating a trend-following system trade by trade is like evaluating a business by looking at a single day’s revenue. The perspective is too narrow.

Stats of Portfolio in Challenge step 2
low win rate and 5% profit after 2 months
Performance statistics demonstrated that a modest win rate can still produce meaningful progress when risk management and reward-to-risk characteristics remain favorable.

What stood out in my own experience was that the statistics were not particularly impressive if viewed through the lens of win rate alone. Many traders would reject such numbers immediately. Yet the portfolio continued moving toward its objective. The outcome challenged my assumptions about what successful trading should look like.

Equity curve Portfolio in Challenge step 2
consistent trend following trades gradually reach target return
The equity curve reflected gradual progress achieved through disciplined execution rather than frequent winning trades.

The equity curve told a different story from the win-rate statistics. Instead of focusing on how often trades won, it highlighted the cumulative effect of following a repeatable process. Small setbacks were absorbed while larger trends contributed disproportionately to overall performance.

Explanation

The fundamental advantage of trend following is that it does not require predicting every market movement correctly. Instead, it seeks to participate when markets exhibit persistent directional behavior. Most trades may contribute little, but a handful of meaningful trends can drive a significant portion of results.

This creates an unusual psychological challenge. Humans naturally prefer frequent rewards. We prefer systems that make us feel right. Trend following asks us to accept being wrong repeatedly while remaining confident that the process itself is sound. That requirement makes the strategy difficult to follow despite its conceptual simplicity.

Why Win Rate Can Be Misleading

Many traders treat win rate as the primary measure of strategy quality. In reality, win rate is only one component of a broader equation. A strategy with a high win rate can still fail if losses are significantly larger than gains. Conversely, a strategy with a lower win rate can succeed if winners meaningfully outweigh losers.

The more useful questions are:

  • Is the strategy repeatable?
  • Can risk be controlled consistently?
  • Does the approach exploit a persistent market behavior?
  • Can the trader continue executing during inevitable drawdowns?

These questions focus on process rather than short-term outcomes. They shift attention away from emotional satisfaction and toward long-term durability.

Evidence Strengthens Belief

Belief in a process should not come from optimism alone. It should be reinforced by evidence gathered through consistent execution. Over time, results either strengthen or weaken confidence in a system. The key is allowing enough time for the process to reveal its true characteristics.

My first payout from FTMO
Evidence strengthen belief
Achieving a payout provided tangible confirmation that disciplined execution of a proven process can outperform the pursuit of constant short-term validation.

The importance of evidence is that it transforms faith into conviction. Conviction built on evidence is fundamentally different from hope. Hope ignores uncertainty. Evidence acknowledges uncertainty while demonstrating that the process remains worthwhile.

Implication

The broader lesson extends beyond trading. Investors, business owners, and entrepreneurs all face situations where immediate feedback can be misleading. Short-term outcomes often fluctuate significantly even when the underlying process remains effective.

A robust decision-making framework therefore requires patience. Patience is not passive waiting. It is the active choice to continue executing a proven process despite temporary discomfort. In many cases, the edge comes not from superior intelligence but from superior consistency.

Today, I spend less time searching for new strategies and more time refining execution of familiar ones. A proven setup becomes valuable because it reduces decision fatigue and creates repeatability. Repeatability allows performance to emerge from process rather than prediction.

The lesson from trend following is ultimately a lesson about trust. Trust in a process is earned through evidence. Evidence strengthens belief. Belief supports discipline. Discipline creates consistency. And consistency is often the foundation upon which long-term success is built.

The market does not require us to be right every day. It requires us to remain disciplined long enough for our edge to compound. That distinction may be simple, but it changes everything.