Disciplined Systematic Global Macro Views
"Disciplined Systematic Global Macro Views" focuses on current economic and finance issues, changes in market structure and the hedge fund industry as well as how to be a better decision-maker in the global macro investment space.
Saturday, April 11, 2026
Fed Up - a reread on the politics of the Fed
Monday, April 6, 2026
Signal filtering for mean reversion trading
If you aren't a trend follower within the quant price space universe, then you are a mean reverter. A paper discusses how to filter these reversion signals, "Advanced signal filtering for mean reversion trading." Mean reversion is based on the simple concept that an asste's price will converge to some fair value. This fair value could be as simple as a moving average. The spot price may fall above or below this fair value price. To solve this problem, the authors develop what they call the local average filtering objective (LAFO), a low-pass filter that operates across different frequencies. LAFO examines the average residuals over a moving window to capture moving-average characteristics. This information can be used to measure or describe mean reversion. LAFO is an extension of the mean squared error. Machine learning can help process data to identify the method of reversion to the mean and mispricing in a time series.
Can there still be dislocations that will cause mean-reversion not to occur? Yes, but by examining different rolling windows of residuals, there is a good chance of finding revision opportunities.
The Investor, The Chef, and The Recipe Book
Unified framework for anomalies - all in the past month of return behavior
The daily return information factor (DRIF) is a new concept that helps explain many of the anomalies we see in financial markets. Instead of imposing or seeking a new risk premium, the authors of this paper, “A unified framework for anomalies based on daily returns”, examine the overall mapping of returns over the last month to make predictions about next month’s returns. The authors examine both the time ordering and the magnitude of returns to develop a forecasting framework.
A chronological vector preserves time ordering and captures short-term reversal dynamics, while a ranked vector accounts for magnitude effects. The DRI variable will combine these two vectors so that next month's returns are based on the beta of the time and magnitude vectors. A chronology dimension captures price pressure and liquidity effects, while ranking reflects investors' focus on extreme outcomes. These effects remain after controlling for other risk factors.





