import numpy as np class SOTAStackingDetector: """State-of-the-Art Stacked Ensemble Classifier for AI text detection. Combines stylistic baselines, tree-based stylometrics, and vocabulary-based n-grams using a Meta-Classifier to achieve robust generalization. """ def __init__(self, lr_sty, xgb_sty, lr_ng, meta_model, num_sty_features): self.lr_sty = lr_sty self.xgb_sty = xgb_sty self.lr_ng = lr_ng self.meta_model = meta_model self.num_sty_features = num_sty_features # Compatibility fields for SHAP / Explainability coefficients self.coef_ = lr_sty.coef_ self.intercept_ = lr_sty.intercept_ def _extract_base_features(self, X_hybrid_scaled): X_sty_scaled = X_hybrid_scaled[:, :self.num_sty_features] X_ng_scaled = X_hybrid_scaled[:, self.num_sty_features:] return X_sty_scaled, X_ng_scaled def predict_proba(self, X_hybrid_scaled): X_sty_scaled, X_ng_scaled = self._extract_base_features(X_hybrid_scaled) # Get base model probabilities p_lr_sty = self.lr_sty.predict_proba(X_sty_scaled)[:, 1] p_xgb_sty = self.xgb_sty.predict_proba(X_sty_scaled)[:, 1] p_lr_ng = self.lr_ng.predict_proba(X_ng_scaled)[:, 1] # Construct meta features X_meta = np.column_stack([p_lr_sty, p_xgb_sty, p_lr_ng]) return self.meta_model.predict_proba(X_meta) def predict(self, X_hybrid_scaled): prob = self.predict_proba(X_hybrid_scaled)[:, 1] return (prob >= 0.5).astype(int)