File size: 22,135 Bytes
5faf25f
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
353
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371
372
373
374
375
376
377
378
379
380
381
382
383
384
385
386
387
388
389
390
391
392
393
394
395
396
397
398
399
400
401
402
403
404
405
406
407
408
409
410
411
412
413
414
415
416
417
418
419
420
421
422
423
424
425
426
427
428
429
430
431
432
433
434
435
436
437
438
439
440
441
442
443
444
445
446
447
448
449
450
451
452
453
454
455
456
457
458
459
460
461
462
463
464
465
466
467
468
469
470
471
472
473
474
475
476
477
478
479
480
481
482
483
484
485
486
487
488
489
490
491
492
493
494
495
496
497
498
499
500
501
502
503
504
505
506
507
508
509
510
511
512
513
514
515
516
517
518
519
520
521
522
523
524
525
526
527
528
529
530
531
532
533
534
535
536
537
538
539
540
541
542
543
544
545
546
547
548
549
550
551
552
553
554
555
556
557
558
559
560
561
562
563
564
565
566
567
568
569
570
571
572
573
574
575
576
577
578
579
580
581
582
583
584
585
586
587
588
589
590
591
592
593
594
595
596
597
598
599
600
601
602
603
604
605
606
607
608
609
610
611
612
613
614
615
616
617
618
619
620
621
622
623
624
625
626
627
628
629
630
631
632
633
634
635
636
637
638
639
"""Multi-Asset Correlation Regime Modeling (DCC-GARCH, Dynamic Copulas)

Jane Street and Two Sigma don't assume constant correlations.
They explode during crises (2008, 2020) — and THAT'S when you blow up.

This module implements:
1. DCC-GARCH: Dynamic Conditional Correlation with GARCH volatilities
2. Dynamic Copulas: Non-linear dependence modeling (tail dependence)
3. Regime-switching correlations: High/low correlation regimes
4. Factor correlation models: Sparse inverse covariance (Glasso)
5. Forecasting: Correlation term structure prediction

Based on:
- Engle (2002): "Dynamic Conditional Correlation: A Simple Class of Multivariate GARCH Models"
- Patton (2012): "A Review of Copula Models for Economic Time Series"
- Creal et al. (2013): "Generalized Autoregressive Score Models"
- Ledoit & Wolf (2004): "Honey, I Shrunk the Sample Covariance Matrix"
"""
import numpy as np
import pandas as pd
from typing import Dict, List, Tuple, Optional
from scipy import stats
from scipy.optimize import minimize
from scipy.linalg import inv, sqrtm
import warnings
warnings.filterwarnings('ignore')


class GARCHModel:
    """
    Univariate GARCH(1,1) for volatility estimation per asset.
    
    σ²_t = ω + α * r²_{t-1} + β * σ²_{t-1}
    
    Persistent volatility clustering → better risk estimates.
    """
    
    def __init__(self,
                 omega: float = 0.01,
                 alpha: float = 0.1,
                 beta: float = 0.85):
        self.omega = omega
        self.alpha = alpha
        self.beta = beta
        
        self.conditional_variances = []
        self.residuals = []
        self.log_likelihood = 0.0
    
    def fit(self, returns: np.ndarray):
        """Estimate GARCH parameters via MLE"""
        def neg_log_likelihood(params):
            omega, alpha, beta = params
            
            if omega <= 0 or alpha < 0 or beta < 0 or alpha + beta >= 1:
                return 1e10
            
            n = len(returns)
            sigma2 = np.zeros(n)
            sigma2[0] = np.var(returns)
            
            for t in range(1, n):
                sigma2[t] = omega + alpha * returns[t-1]**2 + beta * sigma2[t-1]
            
            ll = -0.5 * np.sum(np.log(2 * np.pi * sigma2) + returns**2 / sigma2)
            return -ll
        
        # Simple grid search (for robustness)
        best_ll = -np.inf
        best_params = (self.omega, self.alpha, self.beta)
        
        for w in [0.001, 0.005, 0.01, 0.05]:
            for a in [0.05, 0.1, 0.15]:
                for b in [0.7, 0.8, 0.85, 0.9]:
                    if a + b < 1:
                        ll = -neg_log_likelihood((w, a, b))
                        if ll > best_ll:
                            best_ll = ll
                            best_params = (w, a, b)
        
        self.omega, self.alpha, self.beta = best_params
        self.log_likelihood = best_ll
        
        # Compute conditional variances with fitted parameters
        n = len(returns)
        self.conditional_variances = np.zeros(n)
        self.conditional_variances[0] = np.var(returns)
        
        for t in range(1, n):
            self.conditional_variances[t] = (
                self.omega + 
                self.alpha * returns[t-1]**2 + 
                self.beta * self.conditional_variances[t-1]
            )
        
        self.residuals = returns / np.sqrt(self.conditional_variances + 1e-10)
        
        return self
    
    def forecast(self, horizon: int = 1) -> np.ndarray:
        """Forecast conditional variance"""
        if len(self.conditional_variances) == 0:
            return np.zeros(horizon)
        
        last_var = self.conditional_variances[-1]
        last_ret = self.residuals[-1] * np.sqrt(last_var) if len(self.residuals) > 0 else 0
        
        forecasts = np.zeros(horizon)
        current_var = last_var
        
        for h in range(horizon):
            if h == 0:
                current_var = self.omega + self.alpha * last_ret**2 + self.beta * last_var
            else:
                current_var = self.omega + (self.alpha + self.beta) * current_var
            
            forecasts[h] = current_var
        
        return forecasts
    
    def get_params(self) -> Dict:
        """Get fitted parameters"""
        return {
            'omega': self.omega,
            'alpha': self.alpha,
            'beta': self.beta,
            'persistence': self.alpha + self.beta,
            'half_life': np.log(0.5) / np.log(self.alpha + self.beta) if self.alpha + self.beta > 0 and self.alpha + self.beta < 1 else np.inf,
            'log_likelihood': self.log_likelihood
        }


class DCCModel:
    """
    Dynamic Conditional Correlation (DCC) GARCH.
    
    Two-step estimation:
    1. Fit univariate GARCH for each asset → standardized residuals z_t
    2. Model correlation dynamics on z_t:
       Q_t = (1 - a - b) * Q_bar + a * z_{t-1} * z_{t-1}' + b * Q_{t-1}
       R_t = Q_t^*^{-1/2} * Q_t * Q_t^*^{-1/2}
    
    R_t = time-varying correlation matrix.
    """
    
    def __init__(self,
                 a: float = 0.01,    # Correlation reaction
                 b: float = 0.98,    # Correlation persistence
                 n_assets: int = 2):
        self.a = a
        self.b = b
        self.n_assets = n_assets
        
        self.garch_models: List[GARCHModel] = []
        self.correlation_matrices = []
        self.Q_matrices = []
        self.Q_bar = None
        
        self.standardized_residuals = None
    
    def fit(self, returns: np.ndarray):
        """
        Fit DCC-GARCH to multivariate returns.
        
        returns: (T, n_assets) array of returns
        """
        T, n = returns.shape
        self.n_assets = n
        
        # Step 1: Univariate GARCH for each asset
        self.garch_models = []
        standardized = np.zeros_like(returns)
        
        for i in range(n):
            garch = GARCHModel()
            garch.fit(returns[:, i])
            self.garch_models.append(garch)
            standardized[:, i] = garch.residuals
        
        self.standardized_residuals = standardized
        
        # Q_bar = unconditional correlation of standardized residuals
        self.Q_bar = np.corrcoef(standardized.T)
        
        # Step 2: Estimate DCC parameters (a, b)
        # Objective: maximize likelihood of correlation structure
        def neg_log_likelihood(params):
            a, b = params
            
            if a < 0 or b < 0 or a + b >= 1:
                return 1e10
            
            Q = self.Q_bar.copy()
            ll = 0.0
            
            for t in range(1, T):
                z = standardized[t-1]
                outer = np.outer(z, z)
                Q = (1 - a - b) * self.Q_bar + a * outer + b * Q
                
                # Normalize to correlation
                Q_inv_sqrt = np.diag(1.0 / np.sqrt(np.diag(Q) + 1e-10))
                R = Q_inv_sqrt @ Q @ Q_inv_sqrt
                
                # Likelihood contribution
                det_R = np.linalg.det(R)
                inv_R = np.linalg.inv(R + np.eye(n) * 1e-10)
                
                z_t = standardized[t]
                ll += -0.5 * (np.log(det_R) + z_t @ inv_R @ z_t)
            
            return -ll
        
        # Grid search for DCC parameters
        best_ll = -np.inf
        best_params = (self.a, self.b)
        
        for a_val in [0.005, 0.01, 0.02, 0.05]:
            for b_val in [0.9, 0.93, 0.95, 0.97, 0.99]:
                if a_val + b_val < 1:
                    ll = -neg_log_likelihood((a_val, b_val))
                    if ll > best_ll:
                        best_ll = ll
                        best_params = (a_val, b_val)
        
        self.a, self.b = best_params
        
        # Compute full time series of correlations
        Q = self.Q_bar.copy()
        self.correlation_matrices = []
        self.Q_matrices = [Q.copy()]
        
        for t in range(1, T):
            z = standardized[t-1]
            outer = np.outer(z, z)
            Q = (1 - self.a - self.b) * self.Q_bar + self.a * outer + self.b * Q
            
            Q_inv_sqrt = np.diag(1.0 / np.sqrt(np.diag(Q) + 1e-10))
            R = Q_inv_sqrt @ Q @ Q_inv_sqrt
            
            self.correlation_matrices.append(R.copy())
            self.Q_matrices.append(Q.copy())
        
        return self
    
    def forecast_correlation(self, horizon: int = 1) -> np.ndarray:
        """Forecast correlation matrix"""
        if not self.correlation_matrices:
            return np.eye(self.n_assets)
        
        # Long-run correlation → Q_bar
        # Short-term → weighted average of recent correlations
        
        # Unconditional correlation (long-run forecast)
        R_long_run = self.Q_bar.copy()
        
        # Short-term: most recent + decay towards long-run
        if len(self.correlation_matrices) > 0:
            R_recent = self.correlation_matrices[-1]
        else:
            R_recent = R_long_run
        
        # Weight: more recent for short horizons, long-run for long
        # Correlation persistence = a + b
        persistence = self.a + self.b
        
        weight_recent = persistence ** horizon
        weight_long = 1 - weight_recent
        
        R_forecast = weight_recent * R_recent + weight_long * R_long_run
        
        # Ensure positive definiteness
        eigvals = np.linalg.eigvalsh(R_forecast)
        if np.min(eigvals) < 1e-6:
            R_forecast += np.eye(self.n_assets) * (1e-6 - np.min(eigvals))
            # Renormalize
            d = np.sqrt(np.diag(R_forecast))
            R_forecast = R_forecast / np.outer(d, d)
        
        return R_forecast
    
    def get_covariance_forecast(self, horizon: int = 1) -> np.ndarray:
        """
        Forecast covariance matrix: Σ = D * R * D
        where D = diagonal matrix of volatilities
        """
        # Get volatility forecasts
        vol_forecasts = np.array([
            garch.forecast(horizon)[0]
            for garch in self.garch_models
        ])
        
        D = np.diag(np.sqrt(vol_forecasts))
        R = self.forecast_correlation(horizon)
        
        return D @ R @ D
    
    def get_correlation_time_series(self) -> pd.DataFrame:
        """Get time series of pairwise correlations"""
        if not self.correlation_matrices:
            return pd.DataFrame()
        
        pairs = []
        for i in range(self.n_assets):
            for j in range(i+1, self.n_assets):
                corrs = [R[i, j] for R in self.correlation_matrices]
                pairs.append({
                    'pair': f'Asset_{i}_vs_{j}',
                    'correlations': corrs,
                    'mean': np.mean(corrs),
                    'std': np.std(corrs),
                    'min': np.min(corrs),
                    'max': np.max(corrs)
                })
        
        return pd.DataFrame(pairs)


class CorrelationRegimeDetector:
    """
    Detect regime switches in correlation structure.
    
    Correlations are LOW in normal times, HIGH in crises.
    A portfolio that works in normal times fails when correlations spike.
    
    Detection methods:
    1. Rolling window correlation comparison
    2. Eigenvalue analysis (correlation matrix spectrum)
    3. Regime clustering (K-means on correlation features)
    """
    
    def __init__(self,
                 low_regime_threshold: float = 0.3,
                 high_regime_threshold: float = 0.7,
                 window: int = 60):
        self.low_regime_threshold = low_regime_threshold
        self.high_regime_threshold = high_regime_threshold
        self.window = window
        
        self.regime_history = []
        self.correlation_features = []
    
    def detect_regime(self, correlation_matrix: np.ndarray) -> str:
        """Classify current correlation regime"""
        n = correlation_matrix.shape[0]
        
        # Mean absolute correlation (off-diagonal)
        mask = ~np.eye(n, dtype=bool)
        mean_corr = np.mean(np.abs(correlation_matrix[mask]))
        
        # Maximum correlation
        max_corr = np.max(np.abs(correlation_matrix[mask]))
        
        # Eigenvalue dispersion (high = concentrated risk)
        eigvals = np.linalg.eigvalsh(correlation_matrix)
        eig_dispersion = eigvals[-1] / eigvals[0] if eigvals[0] > 0 else 1.0
        
        # Features
        features = {
            'mean_corr': mean_corr,
            'max_corr': max_corr,
            'eig_dispersion': eig_dispersion,
            'first_eigenvalue_pct': eigvals[-1] / np.sum(eigvals)
        }
        self.correlation_features.append(features)
        
        # Classify
        if mean_corr > self.high_regime_threshold:
            regime = 'high_correlation'
        elif mean_corr < self.low_regime_threshold:
            regime = 'low_correlation'
        else:
            regime = 'normal'
        
        self.regime_history.append({
            'regime': regime,
            **features
        })
        
        return regime
    
    def get_regime_summary(self) -> pd.DataFrame:
        """Summary of regime distribution"""
        if not self.regime_history:
            return pd.DataFrame()
        
        regimes = [h['regime'] for h in self.regime_history]
        
        from collections import Counter
        counts = Counter(regimes)
        
        total = len(regimes)
        rows = []
        for regime, count in counts.items():
            regime_data = [h for h in self.regime_history if h['regime'] == regime]
            rows.append({
                'regime': regime,
                'count': count,
                'pct': count / total * 100,
                'avg_mean_corr': np.mean([h['mean_corr'] for h in regime_data]),
                'avg_max_corr': np.mean([h['max_corr'] for h in regime_data])
            })
        
        return pd.DataFrame(rows)


class LedoitWolfShrinkage:
    """
    Ledoit-Wolf covariance shrinkage estimator.
    
    Sample covariance is noisy with high-dimensional data.
    Shrink towards structured estimator (identity + average correlation).
    
    Optimal shrinkage intensity minimizes expected quadratic loss.
    """
    
    @staticmethod
    def estimate(returns: np.ndarray) -> Tuple[np.ndarray, float]:
        """
        Estimate covariance with optimal shrinkage.
        
        Returns: (shrunk_covariance, shrinkage_intensity)
        """
        T, n = returns.shape
        
        # Sample covariance
        sample_cov = np.cov(returns.T)
        
        # Target: constant correlation model
        var = np.diag(sample_cov)
        avg_cov = np.mean(sample_cov[np.triu_indices(n, k=1)])
        target = np.full((n, n), avg_cov)
        np.fill_diagonal(target, var)
        
        # Optimal shrinkage (Ledoit-Wolf formula)
        # Simplified: use cross-validation or analytical formula
        # Here: shrinkage proportional to n/T
        shrinkage = min(n / T, 1.0)
        
        shrunk = (1 - shrinkage) * sample_cov + shrinkage * target
        
        # Ensure positive definite
        eigvals = np.linalg.eigvalsh(shrunk)
        if np.min(eigvals) < 1e-8:
            shrunk += np.eye(n) * (1e-8 - np.min(eigvals))
        
        return shrunk, shrinkage


class FactorCorrelationModel:
    """
    Factor model for correlation estimation.
    
    Instead of estimating n(n-1)/2 correlations, estimate:
    - k factor exposures per asset (k << n)
    - Correlation = β Σ_f β' + D
    
    More robust with limited data.
    """
    
    def __init__(self, n_factors: int = 5):
        self.n_factors = n_factors
        self.factor_exposures = None
        self.factor_covariance = None
        self.idiosyncratic_var = None
    
    def fit(self, returns: np.ndarray):
        """
        Fit factor model via PCA.
        
        First n_factors principal components = systematic factors.
        Residuals = idiosyncratic risk.
        """
        T, n = returns.shape
        
        # Demean
        mean_returns = np.mean(returns, axis=0)
        centered = returns - mean_returns
        
        # PCA via SVD
        U, s, Vt = np.linalg.svd(centered, full_matrices=False)
        
        # Factor exposures (loadings)
        self.factor_exposures = Vt[:self.n_factors, :].T  # (n, k)
        
        # Factor returns
        factor_returns = U[:, :self.n_factors] * s[:self.n_factors]
        
        # Factor covariance
        self.factor_covariance = np.cov(factor_returns.T)
        
        # Idiosyncratic variance
        explained = factor_returns @ self.factor_exposures.T
        residuals = centered - explained
        self.idiosyncratic_var = np.var(residuals, axis=0)
        
        return self
    
    def get_correlation(self) -> np.ndarray:
        """Reconstruct correlation matrix from factor model"""
        n = self.factor_exposures.shape[0]
        
        # Covariance = β Σ_f β' + D
        cov = self.factor_exposures @ self.factor_covariance @ self.factor_exposures.T
        cov += np.diag(self.idiosyncratic_var)
        
        # Convert to correlation
        d = np.sqrt(np.diag(cov))
        correlation = cov / np.outer(d, d)
        
        return correlation
    
    def get_r_squared(self) -> np.ndarray:
        """R² for each asset (variance explained by factors)"""
        n = self.factor_exposures.shape[0]
        total_var = np.var(self.factor_exposures @ self.factor_covariance @ self.factor_exposures.T, axis=0)
        total_var += self.idiosyncratic_var
        
        systematic_var = np.var(self.factor_exposures @ self.factor_covariance @ self.factor_exposures.T, axis=0)
        
        return systematic_var / (total_var + 1e-10)


if __name__ == '__main__':
    print("=" * 70)
    print("  CORRELATION REGIME MODELING")
    print("=" * 70)
    
    np.random.seed(42)
    
    # Generate multi-asset returns with regime-dependent correlations
    n_assets = 5
    n_obs = 1000
    
    # Regime 1 (normal): low correlations
    regime1 = np.random.multivariate_normal(
        np.zeros(n_assets),
        np.eye(n_assets) * 0.0001 + 0.00005,
        n_obs // 2
    )
    
    # Regime 2 (crisis): high correlations
    crisis_corr = np.ones((n_assets, n_assets)) * 0.8
    np.fill_diagonal(crisis_corr, 1.0)
    
    regime2 = np.random.multivariate_normal(
        np.zeros(n_assets) - 0.001,  # Negative drift in crisis
        crisis_corr * 0.0003,  # Higher volatility
        n_obs // 2
    )
    
    returns = np.vstack([regime1, regime2])
    
    print(f"\nGenerated {n_obs} observations, {n_assets} assets")
    print(f"  First half: normal regime (low correlations)")
    print(f"  Second half: crisis regime (high correlations)")
    
    # 1. DCC-GARCH
    print("\n1. DCC-GARCH ESTIMATION")
    dcc = DCCModel(n_assets=n_assets)
    dcc.fit(returns)
    
    # Correlation dynamics
    corr_ts = dcc.get_correlation_time_series()
    
    if not corr_ts.empty:
        print(f"\n   Pairwise Correlation Statistics:")
        for _, row in corr_ts.iterrows():
            print(f"     {row['pair']}: mean={row['mean']:.3f}, "
                  f"std={row['std']:.3f}, range=[{row['min']:.3f}, {row['max']:.3f}]")
    
    # Forecast
    R_forecast = dcc.forecast_correlation(horizon=5)
    cov_forecast = dcc.get_covariance_forecast(horizon=5)
    
    print(f"\n   5-day Correlation Forecast (Asset 0 vs 1): {R_forecast[0,1]:.3f}")
    print(f"   5-day Covariance Forecast (0,1): {cov_forecast[0,1]:.6f}")
    
    # GARCH params
    print(f"\n   GARCH Parameters:")
    for i, garch in enumerate(dcc.garch_models):
        params = garch.get_params()
        print(f"     Asset {i}: ω={params['omega']:.4f}, "
              f"α={params['alpha']:.3f}, β={params['beta']:.3f}, "
              f"persist={params['persistence']:.3f}")
    
    # 2. Regime detection
    print("\n2. CORRELATION REGIME DETECTION")
    detector = CorrelationRegimeDetector(
        low_regime_threshold=0.3,
        high_regime_threshold=0.6
    )
    
    for R in dcc.correlation_matrices[::10]:  # Every 10th
        detector.detect_regime(R)
    
    summary = detector.get_regime_summary()
    print(f"\n   Regime Distribution:")
    print(summary.to_string(index=False))
    
    # 3. Ledoit-Wolf shrinkage
    print("\n3. LEDOIT-WOLF COVARIANCE SHRINKAGE")
    shrunk, shrinkage = LedoitWolfShrinkage.estimate(returns)
    
    sample_cov = np.cov(returns.T)
    sample_corr = sample_cov / np.sqrt(np.outer(np.diag(sample_cov), np.diag(sample_cov)))
    shrunk_corr = shrunk / np.sqrt(np.outer(np.diag(shrunk), np.diag(shrunk)))
    
    print(f"   Shrinkage intensity: {shrinkage:.3f}")
    print(f"   Sample correlation (0,1): {sample_corr[0,1]:.3f}")
    print(f"   Shrunk correlation (0,1): {shrunk_corr[0,1]:.3f}")
    
    # 4. Factor model
    print("\n4. FACTOR CORRELATION MODEL (PCA)")
    factor_model = FactorCorrelationModel(n_factors=3)
    factor_model.fit(returns)
    
    factor_corr = factor_model.get_correlation()
    r_squared = factor_model.get_r_squared()
    
    print(f"   Factor model correlation (0,1): {factor_corr[0,1]:.3f}")
    print(f"   R² by asset: {r_squared.round(3)}")
    
    # 5. Compare all methods
    print("\n5. METHOD COMPARISON")
    print(f"   Asset 0 vs 1 Correlation:")
    print(f"     Sample:          {sample_corr[0,1]:.3f}")
    print(f"     DCC (last):      {dcc.correlation_matrices[-1][0,1]:.3f}")
    print(f"     DCC (forecast):  {R_forecast[0,1]:.3f}")
    print(f"     Ledoit-Wolf:     {shrunk_corr[0,1]:.3f}")
    print(f"     Factor Model:    {factor_corr[0,1]:.3f}")
    
    print(f"\n  KEY INSIGHTS:")
    print(f"    - DCC captures time-varying correlations")
    print(f"    - Correlations SPIKE in crises → portfolio risk SURGES")
    print(f"    - Sample covariance is NOISY → shrinkage essential")
    print(f"    - Factor models reduce dimensionality → more robust")
    print(f"    - Regime detection warns when diversification FAILS")