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Correlation Deep Dive

Healthcare (XLV) vs Industrials (XLI): Correlation Analysis

Pearson correlation of daily returns for Healthcare (XLV) and Industrials (XLI). Rolling windows, yearly breakdown, regression beta, and divergence analysis. Data window spans to (1,262 aligned observations).

30-Day
+0.781
Strong positive
90-Day
+0.549
Moderate positive
1-Year
+0.452
Moderate positive
5-Year
+0.614
Strong positive

What the Number Means

The 0.55 correlation indicates that Healthcare (XLV) and Industrials (XLI) have a moderate tendency to move together. The relationship is real but noisy, with frequent days where they disagree. Regime context matters: the correlation often strengthens during stress and weakens during calm periods.

Recent vs Long-Run Behavior

Last 90 Days
+0.549
5-Year Baseline
+0.614

Recent correlation tracks the long-run relationship closely. No meaningful divergence. The historical pattern between Healthcare (XLV) and Industrials (XLI) is intact and should continue to serve as a reasonable baseline for positioning.

Statistical Details (1-Year Window)

Pearson Correlation (r)+0.452
R-Squared (r²)0.205
Beta (Healthcare (XLV) vs Industrials (XLI))0.454
Daily Volatility σ(Healthcare (XLV))0.95%
Daily Volatility σ(Industrials (XLI))0.94%
Observations252

Correlation measures directional co-movement; R² quantifies the fraction of variance explained by the linear relationship. Beta is the slope coefficient from regressing Healthcare (XLV) returns on Industrials (XLI) returns. A beta above 1 means the first asset amplifies moves of the second.

Year-by-Year Correlation

YearCorrelationStrengthObservations
2026+0.551Moderate positive91
2025+0.568Moderate positive250
2024+0.532Moderate positive252
2023+0.577Moderate positive250
2022+0.758Strong positive251
2021+0.465Moderate positive168

Year-by-year correlation reveals how the relationship has held up across different macro regimes. Sharp year-over-year swings in correlation often mark the transition between stress and calm periods.

Rolling 90-Day Extremes

Most Correlated Period
+0.839
ending 2022-12-30
Most Decoupled Period
+0.278
ending 2026-03-02

Extremes in rolling 90-day correlation often coincide with regime changes, forced deleveraging, or the arrival of a dominant new macro theme that overwhelms normal relationships.

Methodology

Correlations are computed on daily log-adjacent returns for Healthcare (XLV) and Industrials (XLI), aligned on shared trading dates. We use the Pearson product-moment coefficient, which measures the linear relationship between two return series.

Windows are the most recent N observations for 30D, 90D, and 1Y (252 trading days); the 5Y figure uses all aligned data up to 1,260 observations. Beta is the OLS slope from regressing the first series on the second. Data updates daily with a 24-hour revalidation cadence.

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Get daily macro analysis on shifting correlations, regime transitions, and cross-asset signals.

Correlation is not causation and backward-looking statistics can fail when regimes shift. Positions sized on historical correlation assumptions should be stress-tested against scenarios where the relationship breaks. For informational purposes only.