Say for example my algo uses a moving average(x). Can I test for the best x based on say, sharpe/profit?
Say it uses x, y, and z: can I test for the best combination?
Many thanks!
Pete
Say for example my algo uses a moving average(x). Can I test for the best x based on say, sharpe/profit?
Say it uses x, y, and z: can I test for the best combination?
Many thanks!
Pete
Peter I think you are talking about parameter optimization, which is a very popular topic.
See all of these threads https://www.quantopian.com/posts/search?q=Parameter%20optimization
Word of warning though, be careful not to over fit your algo to a particular security over a particular time frame.
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Hey Peter,
To go deeper into what James said, you should be pretty careful not to overfit. There are a few lectures on this in the lecture series (lessons 6 and 7). A good way to make sure you're not overfitting is to run your algorithm with your chosen parameters live for a few months and ensure the performance is similar to your backtest. This is known as out of sample testing. There are also other techniques, such as robust optimization and cross validation that can help in this case.
Thanks,
Delaney
The material on this website is provided for informational purposes only and does not constitute an offer to sell, a solicitation to buy, or a recommendation or endorsement for any security or strategy, nor does it constitute an offer to provide investment advisory services by Quantopian. In addition, the material offers no opinion with respect to the suitability of any security or specific investment. No information contained herein should be regarded as a suggestion to engage in or refrain from any investment-related course of action as none of Quantopian nor any of its affiliates is undertaking to provide investment advice, act as an adviser to any plan or entity subject to the Employee Retirement Income Security Act of 1974, as amended, individual retirement account or individual retirement annuity, or give advice in a fiduciary capacity with respect to the materials presented herein. If you are an individual retirement or other investor, contact your financial advisor or other fiduciary unrelated to Quantopian about whether any given investment idea, strategy, product or service described herein may be appropriate for your circumstances. All investments involve risk, including loss of principal. Quantopian makes no guarantees as to the accuracy or completeness of the views expressed in the website. The views are subject to change, and may have become unreliable for various reasons, including changes in market conditions or economic circumstances.
Thanks Delaney
To be honest I'm more worried I am already "overfitting" and am searching for ways to optimize parameters over more, and more diverse temporal domains. I'm nowhere near choosing a live scenario just yet.
Increasing diversity in your sample size is definitely a good step. Just make sure that your performance can be attributed to a consistent bits from each time period, rather than a lot from one overfit time period and little from others.
The material on this website is provided for informational purposes only and does not constitute an offer to sell, a solicitation to buy, or a recommendation or endorsement for any security or strategy, nor does it constitute an offer to provide investment advisory services by Quantopian. In addition, the material offers no opinion with respect to the suitability of any security or specific investment. No information contained herein should be regarded as a suggestion to engage in or refrain from any investment-related course of action as none of Quantopian nor any of its affiliates is undertaking to provide investment advice, act as an adviser to any plan or entity subject to the Employee Retirement Income Security Act of 1974, as amended, individual retirement account or individual retirement annuity, or give advice in a fiduciary capacity with respect to the materials presented herein. If you are an individual retirement or other investor, contact your financial advisor or other fiduciary unrelated to Quantopian about whether any given investment idea, strategy, product or service described herein may be appropriate for your circumstances. All investments involve risk, including loss of principal. Quantopian makes no guarantees as to the accuracy or completeness of the views expressed in the website. The views are subject to change, and may have become unreliable for various reasons, including changes in market conditions or economic circumstances.