Topic: Follow-up: Effect of Filter Combinations and Post-Incubation Results
In the first part of this experiment (https://forexsb.com/forum/post/82865/#p82865),
I tested how different filter combinations applied to the same EA collection (233 EAs) affected Walk-Forward Analysis (WFA) success.
Results showed that filters alone could dramatically shift outcomes — from below 20 % to full 100 % WFA success.
To go further, I selected one setup — Combination A — with:
- Profit Factor > 1.1
- Winning Trades > 60 %
- SQN > 2
EAs meeting these rules were incubated on demo accounts and compared with older incubators created before SQN was used.
All results were manually collected last week from EAs running on Demo account across different symbols, timeframes, and brokers.
Results as Avg Win Rate (Profitable EAs / Total):
- Without SQN filter: 33 % (sample 348EAs)
- With SQN filter (Combination A): 55 % (sample 267EAs)
A total of 615 EAs were benchmarked.
Some SQN-filtered incubators reached over 70 % profitable EAs after incubation, while pre-SQN groups stayed around 25–40 %.
(Chart: EA Win Rate % After Incubation – SQN Filter vs No SQN)
Interpretation
The data suggest structural robustness over time.
Many EAs in this benchmark have been running for 300+ days, still active, trading, and trackable across multiple brokers.
Key points:
- Filter design strongly impacts long-term EA survival.
- SQN combined with PF and Win % clearly improves success probability.
Cross-broker, multi-timeframe behavior shows the effect isn’t dataset-specific.
Next Step
A practical approach might be:
- In the while several EAs have been moved from demos to live account and will be evaluated soon.
- Run 10 uncorrelated SQN-filtered EAs in one live portfolio. After ~50 trades per EA, switch off the weaker ones and add new SQN candidates to keep improving the portfolio’s overall win rate.
- I’ve also been copying only the trades from profitable SQN EAs on demo to live MT4, which helps reduce the usual performance drop when moving EAs from demo to real accounts.
Does an even better filter combination exist — one that can outperform this setup?
Let’s go back to testing and studying.
And above all, these results prove that the first part of the experiment was not just a dataset-driven bias, but a replicable effect visible across brokers, timeframes, and extended incubation periods.
Open to constructive observations...