Data Integrity
Duplicate rows, stale snapshots, invalid vendor markers, mixed numeric formats, and accidental lookahead can materially change a ranking system.
MidLincoln helps asset managers, research teams, and family offices evaluate whether their ranking models are robust enough for real allocation decisions. We focus on point-in-time data integrity, peer-normalized factor architecture, backtest design, and stability diagnostics.
Ranking models often fail because of hidden data problems rather than weak investment ideas. A robust audit checks whether the inputs, transformations, peer groups, and return windows are aligned before anyone trusts the output.
Duplicate rows, stale snapshots, invalid vendor markers, mixed numeric formats, and accidental lookahead can materially change a ranking system.
Signals should be normalized against relevant peers and tested for concentration, instability, and unintended exposure.
Forward return windows, lag rules, neutralization, and outlier handling determine whether a backtest is informative or misleading.
Engagements are designed for teams that already have data, models, screens, or investment heuristics and need an independent research partner to make the system testable and defensible.
Public examples can show the discipline of the research process without disclosing proprietary coefficients or exact model rules. We describe factor families, diagnostics, and portfolio-level evidence while keeping the implementation private.
Valuation, quality, growth, balance-sheet strength, shareholder yield, size, and momentum can be discussed as factor families.
Exact coefficients, mapping rules, vendor fields, data joins, and model variants stay inside the client workroom.
In a recent global equity ranking reconstruction, higher-ranked groups showed the strongest separation over medium-term horizons after point-in-time controls and outlier-aware summaries.
Representative historical backtest spreads, winsorized, before transaction costs. Backtests are not forecasts and do not guarantee future results.