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"""Model implementations: Poisson-Gamma VI, Gaussian-Gaussian VI, Gaussian-Gamma MAP.

All implementations use vectorized numpy operations over edge arrays for performance.
"""
import numpy as np
import time
from scipy.special import digamma, polygamma
from typing import Dict, Optional, Tuple, List
from collections import defaultdict

from src.utils import FitResult, stable_softmax, relative_param_change
from src.graph_utils import build_adjacency, get_deletion_neighborhood, get_user_item_sets_in_radius


# ============================================================
# Poisson-Gamma CAVI (main model) - vectorized
# ============================================================

class PoissonGammaVI:
    """Augmented Gamma-Poisson MF with mean-field CAVI. Vectorized."""
    
    def __init__(self, N, M, K, a0=0.3, b0=1.0, c0=0.3, d0=1.0,
                 max_iter=200, tol=1e-5, damping=1.0, seed=0):
        self.N = N
        self.M = M
        self.K = K
        self.a0 = a0
        self.b0 = b0
        self.c0 = c0
        self.d0 = d0
        self.max_iter = max_iter
        self.tol = tol
        self.damping = damping
        self.seed = seed
    
    def _init_params(self, rng=None):
        if rng is None:
            rng = np.random.RandomState(self.seed)
        return {
            'a': np.full((self.N, self.K), self.a0) + rng.gamma(1, 0.1, (self.N, self.K)),
            'b': np.full((self.N, self.K), self.b0) + rng.gamma(1, 0.1, (self.N, self.K)),
            'c': np.full((self.M, self.K), self.c0) + rng.gamma(1, 0.1, (self.M, self.K)),
            'd': np.full((self.M, self.K), self.d0) + rng.gamma(1, 0.1, (self.M, self.K)),
        }
    
    def _prepare_edges(self, edges):
        """Convert edge list to vectorized arrays."""
        n_edges = len(edges)
        I = np.array([e[0] for e in edges], dtype=np.int32)
        J = np.array([e[1] for e in edges], dtype=np.int32)
        X = np.array([e[2] for e in edges], dtype=np.float64)
        return I, J, X, n_edges
    
    def _cavi_sweep(self, I, J, X, n_edges, params,
                    update_users=None, update_items=None):
        """One vectorized CAVI sweep."""
        a, b, c, d = params['a'], params['b'], params['c'], params['d']
        K = self.K
        
        # Compute responsibilities for all edges at once
        # log_r[e, k] = psi(a[I[e],k]) - log(b[I[e],k]) + psi(c[J[e],k]) - log(d[J[e],k])
        psi_a = digamma(a)  # (N, K)
        log_b = np.log(b + 1e-30)
        psi_c = digamma(c)  # (M, K)
        log_d = np.log(d + 1e-30)
        
        log_r = psi_a[I] - log_b[I] + psi_c[J] - log_d[J]  # (n_edges, K)
        log_r -= log_r.max(axis=1, keepdims=True)
        r = np.exp(log_r)
        r /= r.sum(axis=1, keepdims=True) + 1e-30
        
        # weighted responsibilities: x[e] * r[e, k]
        xr = X[:, None] * r  # (n_edges, K)
        
        # E[V_jk] = c[j,k] / d[j,k]
        EV = c / d  # (M, K)
        EU = a / b  # (N, K)
        
        # Update user params
        a_new = np.full_like(a, self.a0)
        b_new = np.full_like(b, self.b0)
        
        # Scatter-add xr to user rows
        np.add.at(a_new, I, xr)
        # b_ik = b0 + sum_{j in Omega_i} EV_jk
        np.add.at(b_new, I, EV[J])
        
        # Update item params
        c_new = np.full_like(c, self.c0)
        d_new = np.full_like(d, self.d0)
        
        np.add.at(c_new, J, xr)
        np.add.at(d_new, J, EU[I])
        
        # Apply updates only to specified blocks
        if update_users is not None:
            mask_u = np.zeros(self.N, dtype=bool)
            mask_u[list(update_users)] = True
            a_out = np.where(mask_u[:, None], a_new, a)
            b_out = np.where(mask_u[:, None], b_new, b)
        else:
            a_out = a_new
            b_out = b_new
        
        if update_items is not None:
            mask_v = np.zeros(self.M, dtype=bool)
            mask_v[list(update_items)] = True
            c_out = np.where(mask_v[:, None], c_new, c)
            d_out = np.where(mask_v[:, None], d_new, d)
        else:
            c_out = c_new
            d_out = d_new
        
        # Damping
        if self.damping < 1.0:
            alpha = self.damping
            a_out = (1 - alpha) * a + alpha * a_out
            b_out = (1 - alpha) * b + alpha * b_out
            c_out = (1 - alpha) * c + alpha * c_out
            d_out = (1 - alpha) * d + alpha * d_out
        
        return {'a': a_out, 'b': b_out, 'c': c_out, 'd': d_out}
    
    def compute_elbo(self, edges, params):
        """Approximate ELBO (likelihood term only for speed)."""
        I, J, X, n_edges = self._prepare_edges(edges)
        a, b, c, d = params['a'], params['b'], params['c'], params['d']
        
        EU = a / b
        EV = c / d
        
        # E[UV] for each edge
        pred = np.sum(EU[I] * EV[J], axis=1)
        
        # Poisson log-likelihood proxy: sum(x * log(pred) - pred)
        elbo = np.sum(X * np.log(pred + 1e-30) - pred)
        
        return float(elbo)
    
    def fit_full(self, edges, config=None, init_params=None):
        t0 = time.time()
        I, J, X, n_edges = self._prepare_edges(edges)
        
        if init_params is not None:
            params = {k: v.copy() for k, v in init_params.items()}
        else:
            params = self._init_params()
        
        elbo_trace = []
        converged = False
        
        for it in range(self.max_iter):
            old_params = {k: v.copy() for k, v in params.items()}
            params = self._cavi_sweep(I, J, X, n_edges, params)
            
            change = relative_param_change(old_params, params)
            
            if it % 50 == 0:
                elbo = self.compute_elbo(edges, params)
                elbo_trace.append(elbo)
            
            if change < self.tol:
                converged = True
                break
        
        return FitResult(
            params=params, objective_trace=elbo_trace,
            n_iterations=it + 1, converged=converged,
            runtime_sec=time.time() - t0,
            model_family='poisson_gamma', inference_type='vi',
            likelihood='poisson', prior='gamma',
        )
    
    def fit_without_edge(self, edges, edge_to_remove, config=None, init_params=None):
        i_del, j_del = int(edge_to_remove[0]), int(edge_to_remove[1])
        filtered = [(i, j, x) for i, j, x in edges if not (i == i_del and j == j_del)]
        return self.fit_full(filtered, config, init_params)
    
    def fit_local(self, edges, edge_to_remove, radius, config=None, init_params=None):
        t0 = time.time()
        i_del, j_del = int(edge_to_remove[0]), int(edge_to_remove[1])
        filtered = [(i, j, x) for i, j, x in edges if not (i == i_del and j == j_del)]
        
        if init_params is None:
            raise ValueError("Local unlearning requires init_params")
        params = {k: v.copy() for k, v in init_params.items()}
        
        # Get neighborhood from ORIGINAL graph
        u2i_orig, i2u_orig, _ = build_adjacency(edges, self.N, self.M)
        distances = get_deletion_neighborhood(edge_to_remove, u2i_orig, i2u_orig,
                                               self.N, self.M, radius)
        users_in_R, items_in_R = get_user_item_sets_in_radius(distances, self.N, radius)
        
        # KEY OPTIMIZATION: filter edges to only those touching neighborhood
        # For user i update: need all edges (i, j, x) where i in users_in_R
        # For item j update: need all edges (i, j, x) where j in items_in_R
        # Union: edges where i in users_in_R OR j in items_in_R
        local_edges = [(i, j, x) for i, j, x in filtered 
                       if i in users_in_R or j in items_in_R]
        
        I, J, X, n_edges = self._prepare_edges(local_edges)
        
        converged = False
        for it in range(self.max_iter):
            old_a = params['a'].copy()
            old_b = params['b'].copy()
            old_c = params['c'].copy()
            old_d = params['d'].copy()
            
            params = self._cavi_sweep(I, J, X, n_edges, params,
                                       update_users=users_in_R, update_items=items_in_R)
            
            # Check convergence on updated blocks only
            max_change = 0.0
            if users_in_R:
                ul = list(users_in_R)
                max_change = max(max_change, 
                    np.max(np.abs(params['a'][ul] - old_a[ul]) / (1 + np.abs(old_a[ul]))),
                    np.max(np.abs(params['b'][ul] - old_b[ul]) / (1 + np.abs(old_b[ul]))))
            if items_in_R:
                il = list(items_in_R)
                max_change = max(max_change,
                    np.max(np.abs(params['c'][il] - old_c[il]) / (1 + np.abs(old_c[il]))),
                    np.max(np.abs(params['d'][il] - old_d[il]) / (1 + np.abs(old_d[il]))))
            
            if max_change < self.tol:
                converged = True
                break
        
        return FitResult(
            params=params, objective_trace=[],
            n_iterations=it + 1, converged=converged,
            runtime_sec=time.time() - t0,
            model_family='poisson_gamma', inference_type='vi',
            likelihood='poisson', prior='gamma',
            diagnostics={'radius': radius, 'n_users_updated': len(users_in_R),
                         'n_items_updated': len(items_in_R)}
        )
    
    def fit_warm_start_global(self, edges, edge_to_remove, config=None, init_params=None):
        i_del, j_del = int(edge_to_remove[0]), int(edge_to_remove[1])
        filtered = [(i, j, x) for i, j, x in edges if not (i == i_del and j == j_del)]
        return self.fit_full(filtered, config, init_params)


# ============================================================
# Gaussian-Gaussian VI - vectorized
# ============================================================

class GaussianGaussianVI:
    """Gaussian-Gaussian MF with mean-field Gaussian VI. Vectorized."""
    
    def __init__(self, N, M, K, sigma_U=1.0, sigma_V=1.0, sigma_x=1.0,
                 max_iter=200, tol=1e-5, damping=1.0, seed=0):
        self.N = N
        self.M = M
        self.K = K
        self.sigma_U = sigma_U
        self.sigma_V = sigma_V
        self.sigma_x = sigma_x
        self.max_iter = max_iter
        self.tol = tol
        self.damping = damping
        self.seed = seed
    
    def _init_params(self, rng=None):
        if rng is None:
            rng = np.random.RandomState(self.seed)
        return {
            'm_U': rng.randn(self.N, self.K) * 0.1,
            's_U': np.ones((self.N, self.K)) * 0.5,
            'm_V': rng.randn(self.M, self.K) * 0.1,
            's_V': np.ones((self.M, self.K)) * 0.5,
        }
    
    def _prepare_edges(self, edges):
        n_edges = len(edges)
        I = np.array([e[0] for e in edges], dtype=np.int32)
        J = np.array([e[1] for e in edges], dtype=np.int32)
        X = np.array([e[2] for e in edges], dtype=np.float64)
        return I, J, X, n_edges
    
    def _cavi_sweep(self, I, J, X, n_edges, params,
                    update_users=None, update_items=None):
        """Vectorized Gaussian-Gaussian CAVI using coordinate updates."""
        m_U = params['m_U'].copy()
        s_U = params['s_U'].copy()
        m_V = params['m_V'].copy()
        s_V = params['s_V'].copy()
        
        prec_x = 1.0 / (self.sigma_x ** 2)
        prec_U = 1.0 / (self.sigma_U ** 2)
        prec_V = 1.0 / (self.sigma_V ** 2)
        
        # For each user i, update all K components
        # Precision: prec_U + prec_x * sum_{j in Omega_i} (m_V[j,k]^2 + s_V[j,k])
        # This requires scatter-add of (m_V[J]^2 + s_V[J]) over I
        
        V_sq_plus_var = m_V ** 2 + s_V  # (M, K)
        U_sq_plus_var = m_U ** 2 + s_U  # (N, K)
        
        # User precision: for each user, sum of V_sq_plus_var over neighbors
        user_prec_sum = np.zeros((self.N, self.K))
        np.add.at(user_prec_sum, I, V_sq_plus_var[J])
        
        s_U_new = 1.0 / (prec_U + prec_x * user_prec_sum)
        
        # User mean: for each edge, compute x_ij * m_V[j] contribution
        # Simplified: for each user i, k: m_U[i,k] = s_U[i,k] * prec_x * sum_j m_V[j,k] * (x_ij - sum_{l!=k} m_U[i,l]*m_V[j,l])
        # Approximate: use current m_U for cross-terms
        # predicted = sum_k m_U[I,k] * m_V[J,k]
        predicted = np.sum(m_U[I] * m_V[J], axis=1)  # (n_edges,)
        
        m_U_new = np.zeros((self.N, self.K))
        for k in range(self.K):
            # Residual without component k
            resid_k = X - predicted + m_U[I, k] * m_V[J, k]
            contrib = m_V[J, k] * resid_k  # (n_edges,)
            user_sum = np.zeros(self.N)
            np.add.at(user_sum, I, contrib)
            m_U_new[:, k] = s_U_new[:, k] * prec_x * user_sum
        
        # Item precision
        item_prec_sum = np.zeros((self.M, self.K))
        np.add.at(item_prec_sum, J, U_sq_plus_var[I])
        
        s_V_new = 1.0 / (prec_V + prec_x * item_prec_sum)
        
        # Update predicted with new U
        predicted_new = np.sum(m_U_new[I] * m_V[J], axis=1)
        
        m_V_new = np.zeros((self.M, self.K))
        for k in range(self.K):
            resid_k = X - predicted_new + m_U_new[I, k] * m_V[J, k]
            contrib = m_U_new[I, k] * resid_k
            item_sum = np.zeros(self.M)
            np.add.at(item_sum, J, contrib)
            m_V_new[:, k] = s_V_new[:, k] * prec_x * item_sum
        
        # Apply masks
        if update_users is not None:
            mask_u = np.zeros(self.N, dtype=bool)
            mask_u[list(update_users)] = True
            m_U_new = np.where(mask_u[:, None], m_U_new, m_U)
            s_U_new = np.where(mask_u[:, None], s_U_new, s_U)
        
        if update_items is not None:
            mask_v = np.zeros(self.M, dtype=bool)
            mask_v[list(update_items)] = True
            m_V_new = np.where(mask_v[:, None], m_V_new, m_V)
            s_V_new = np.where(mask_v[:, None], s_V_new, s_V)
        
        if self.damping < 1.0:
            alpha = self.damping
            m_U_new = (1 - alpha) * m_U + alpha * m_U_new
            s_U_new = (1 - alpha) * s_U + alpha * s_U_new
            m_V_new = (1 - alpha) * m_V + alpha * m_V_new
            s_V_new = (1 - alpha) * s_V + alpha * s_V_new
        
        return {'m_U': m_U_new, 's_U': s_U_new, 'm_V': m_V_new, 's_V': s_V_new}
    
    def compute_objective(self, edges, params):
        """Approximate ELBO (likelihood only)."""
        I, J, X, _ = self._prepare_edges(edges)
        m_U, m_V = params['m_U'], params['m_V']
        pred = np.sum(m_U[I] * m_V[J], axis=1)
        mse = np.mean((X - pred) ** 2)
        return -float(mse)
    
    def fit_full(self, edges, config=None, init_params=None):
        t0 = time.time()
        I, J, X, n_edges = self._prepare_edges(edges)
        
        params = {k: v.copy() for k, v in (init_params or self._init_params()).items()}
        obj_trace = []
        converged = False
        
        for it in range(self.max_iter):
            old_params = {k: v.copy() for k, v in params.items()}
            params = self._cavi_sweep(I, J, X, n_edges, params)
            change = relative_param_change(old_params, params)
            if it % 50 == 0:
                obj_trace.append(self.compute_objective(edges, params))
            if change < self.tol:
                converged = True
                break
        
        return FitResult(
            params=params, objective_trace=obj_trace,
            n_iterations=it + 1, converged=converged,
            runtime_sec=time.time() - t0,
            model_family='gaussian_gaussian', inference_type='vi',
            likelihood='gaussian', prior='gaussian',
        )
    
    def fit_without_edge(self, edges, edge_to_remove, config=None, init_params=None):
        i_del, j_del = int(edge_to_remove[0]), int(edge_to_remove[1])
        filtered = [(i, j, x) for i, j, x in edges if not (i == i_del and j == j_del)]
        return self.fit_full(filtered, config, init_params)
    
    def fit_local(self, edges, edge_to_remove, radius, config=None, init_params=None):
        t0 = time.time()
        i_del, j_del = int(edge_to_remove[0]), int(edge_to_remove[1])
        filtered = [(i, j, x) for i, j, x in edges if not (i == i_del and j == j_del)]
        
        if init_params is None:
            raise ValueError("Local unlearning requires init_params")
        params = {k: v.copy() for k, v in init_params.items()}
        
        u2i_orig, i2u_orig, _ = build_adjacency(edges, self.N, self.M)
        distances = get_deletion_neighborhood(edge_to_remove, u2i_orig, i2u_orig,
                                               self.N, self.M, radius)
        users_in_R, items_in_R = get_user_item_sets_in_radius(distances, self.N, radius)
        
        # Filter edges to neighborhood
        local_edges = [(i, j, x) for i, j, x in filtered 
                       if i in users_in_R or j in items_in_R]
        I, J, X, n_edges = self._prepare_edges(local_edges)
        converged = False
        for it in range(self.max_iter):
            old_params = {k: v.copy() for k, v in params.items()}
            params = self._cavi_sweep(I, J, X, n_edges, params,
                                       update_users=users_in_R, update_items=items_in_R)
            change = relative_param_change(old_params, params)
            if change < self.tol:
                converged = True
                break
        
        return FitResult(
            params=params, objective_trace=[],
            n_iterations=it + 1, converged=converged,
            runtime_sec=time.time() - t0,
            model_family='gaussian_gaussian', inference_type='vi',
            likelihood='gaussian', prior='gaussian',
            diagnostics={'radius': radius}
        )
    
    def fit_warm_start_global(self, edges, edge_to_remove, config=None, init_params=None):
        i_del, j_del = int(edge_to_remove[0]), int(edge_to_remove[1])
        filtered = [(i, j, x) for i, j, x in edges if not (i == i_del and j == j_del)]
        return self.fit_full(filtered, config, init_params)


# ============================================================
# Gaussian-Gamma MAP - vectorized
# ============================================================

class GaussianGammaMAP:
    """Gaussian likelihood + Gamma prior, MAP via softplus parameterization.
    
    Uses Adam optimizer with gradient clipping for stable convergence.
    """
    
    def __init__(self, N, M, K, a0=0.3, b0=1.0, c0=0.3, d0=1.0,
                 sigma_x=1.0, lr=0.01, max_iter=500, tol=1e-5, seed=0,
                 grad_clip=5.0, adam_beta1=0.9, adam_beta2=0.999):
        self.N = N
        self.M = M
        self.K = K
        self.a0 = a0
        self.b0 = b0
        self.c0 = c0
        self.d0 = d0
        self.sigma_x = sigma_x
        self.lr = lr
        self.max_iter = max_iter
        self.tol = tol
        self.seed = seed
        self.grad_clip = grad_clip
        self.adam_beta1 = adam_beta1
        self.adam_beta2 = adam_beta2
    
    def _softplus(self, x):
        return np.log1p(np.exp(np.clip(x, -20, 20)))
    
    def _softplus_grad(self, x):
        return 1.0 / (1.0 + np.exp(-np.clip(x, -20, 20)))
    
    def _inv_softplus(self, y):
        """Inverse of softplus: log(exp(y) - 1)."""
        return np.log(np.exp(np.clip(y, 1e-8, 20)) - 1 + 1e-30)
    
    def _init_params(self, rng=None, edges=None):
        if rng is None:
            rng = np.random.RandomState(self.seed)
        # Data-informed initialization: use NMF-style init from mean values
        if edges is not None:
            I = np.array([e[0] for e in edges], dtype=np.int32)
            J = np.array([e[1] for e in edges], dtype=np.int32)
            X = np.array([e[2] for e in edges], dtype=np.float64)
            # Compute user/item means
            x_mean = np.abs(X).mean()
            init_scale = np.sqrt(np.abs(x_mean) / self.K + 0.1)
        else:
            init_scale = 0.5
        U_init = np.abs(rng.randn(self.N, self.K)) * init_scale + 0.1
        V_init = np.abs(rng.randn(self.M, self.K)) * init_scale + 0.1
        return {
            'alpha': self._inv_softplus(U_init),
            'beta': self._inv_softplus(V_init),
        }
    
    def _prepare_edges(self, edges):
        n_edges = len(edges)
        I = np.array([e[0] for e in edges], dtype=np.int32)
        J = np.array([e[1] for e in edges], dtype=np.int32)
        X = np.array([e[2] for e in edges], dtype=np.float64)
        return I, J, X, n_edges
    
    def compute_objective(self, edges, params):
        I, J, X, _ = self._prepare_edges(edges)
        U = self._softplus(params['alpha'])
        V = self._softplus(params['beta'])
        
        pred = np.sum(U[I] * V[J], axis=1)
        prec_x = 1.0 / (self.sigma_x ** 2)
        
        obj = -0.5 * prec_x * np.sum((X - pred) ** 2)
        obj += np.sum((self.a0 - 1) * np.log(U + 1e-30) - self.b0 * U)
        obj += np.sum((self.c0 - 1) * np.log(V + 1e-30) - self.d0 * V)
        return float(obj)
    
    def _compute_gradients(self, I, J, X, params, update_users=None, update_items=None):
        """Compute gradients with clipping."""
        U = self._softplus(params['alpha'])
        V = self._softplus(params['beta'])
        prec_x = 1.0 / (self.sigma_x ** 2)
        
        pred = np.sum(U[I] * V[J], axis=1)
        residual = X - pred
        
        sp_grad_alpha = self._softplus_grad(params['alpha'])
        sp_grad_beta = self._softplus_grad(params['beta'])
        
        grad_U = np.zeros_like(U)
        for k in range(self.K):
            contrib = prec_x * residual * V[J, k]
            np.add.at(grad_U[:, k], I, contrib)
        
        prior_grad_U = (self.a0 - 1) / (U + 1e-6) - self.b0
        grad_U += prior_grad_U
        grad_alpha = grad_U * sp_grad_alpha
        
        grad_V = np.zeros_like(V)
        for k in range(self.K):
            contrib = prec_x * residual * U[I, k]
            np.add.at(grad_V[:, k], J, contrib)
        
        prior_grad_V = (self.c0 - 1) / (V + 1e-6) - self.d0
        grad_V += prior_grad_V
        grad_beta = grad_V * sp_grad_beta
        
        # Gradient clipping
        if self.grad_clip > 0:
            gnorm_a = np.linalg.norm(grad_alpha)
            if gnorm_a > self.grad_clip:
                grad_alpha *= self.grad_clip / gnorm_a
            gnorm_b = np.linalg.norm(grad_beta)
            if gnorm_b > self.grad_clip:
                grad_beta *= self.grad_clip / gnorm_b
        
        return grad_alpha, grad_beta
    
    def _fit_internal(self, edges, params, max_iter=None, 
                      update_users=None, update_items=None):
        """Internal fit with Adam optimizer."""
        t0 = time.time()
        if max_iter is None:
            max_iter = self.max_iter
        I, J, X, n_edges = self._prepare_edges(edges)
        
        # Adam state
        m_alpha = np.zeros_like(params['alpha'])
        v_alpha = np.zeros_like(params['alpha'])
        m_beta = np.zeros_like(params['beta'])
        v_beta = np.zeros_like(params['beta'])
        eps_adam = 1e-8
        
        obj_trace = []
        converged = False
        
        for it in range(max_iter):
            old_params = {k: v.copy() for k, v in params.items()}
            
            grad_alpha, grad_beta = self._compute_gradients(
                I, J, X, params, update_users, update_items)
            
            # Adam updates
            t_adam = it + 1
            m_alpha = self.adam_beta1 * m_alpha + (1 - self.adam_beta1) * grad_alpha
            v_alpha = self.adam_beta2 * v_alpha + (1 - self.adam_beta2) * grad_alpha**2
            m_hat_a = m_alpha / (1 - self.adam_beta1**t_adam)
            v_hat_a = v_alpha / (1 - self.adam_beta2**t_adam)
            
            m_beta = self.adam_beta1 * m_beta + (1 - self.adam_beta1) * grad_beta
            v_beta = self.adam_beta2 * v_beta + (1 - self.adam_beta2) * grad_beta**2
            m_hat_b = m_beta / (1 - self.adam_beta1**t_adam)
            v_hat_b = v_beta / (1 - self.adam_beta2**t_adam)
            
            step_alpha = self.lr * m_hat_a / (np.sqrt(v_hat_a) + eps_adam)
            step_beta = self.lr * m_hat_b / (np.sqrt(v_hat_b) + eps_adam)
            
            if update_users is not None:
                ul = list(update_users)
                params['alpha'][ul] += step_alpha[ul]
            else:
                params['alpha'] = params['alpha'] + step_alpha
            
            if update_items is not None:
                il = list(update_items)
                params['beta'][il] += step_beta[il]
            else:
                params['beta'] = params['beta'] + step_beta
            
            change = relative_param_change(old_params, params)
            if it % 50 == 0:
                obj_trace.append(self.compute_objective(edges, params))
            if change < self.tol:
                converged = True
                break
        
        return params, obj_trace, it + 1, converged, time.time() - t0
    
    def fit_full(self, edges, config=None, init_params=None):
        if init_params is not None:
            params = {k: v.copy() for k, v in init_params.items()}
        else:
            params = self._init_params(edges=edges)
        
        params, obj_trace, n_iter, converged, runtime = self._fit_internal(edges, params)
        
        return FitResult(
            params=params, objective_trace=obj_trace,
            n_iterations=n_iter, converged=converged,
            runtime_sec=runtime,
            model_family='gaussian_gamma_map', inference_type='map',
            likelihood='gaussian', prior='gamma',
        )
    
    def fit_without_edge(self, edges, edge_to_remove, config=None, init_params=None):
        i_del, j_del = int(edge_to_remove[0]), int(edge_to_remove[1])
        filtered = [(i, j, x) for i, j, x in edges if not (i == i_del and j == j_del)]
        return self.fit_full(filtered, config, init_params)
    
    def fit_local(self, edges, edge_to_remove, radius, config=None, init_params=None):
        i_del, j_del = int(edge_to_remove[0]), int(edge_to_remove[1])
        filtered = [(i, j, x) for i, j, x in edges if not (i == i_del and j == j_del)]
        
        if init_params is None:
            raise ValueError("Local unlearning requires init_params")
        params = {k: v.copy() for k, v in init_params.items()}
        
        u2i_orig, i2u_orig, _ = build_adjacency(edges, self.N, self.M)
        distances = get_deletion_neighborhood(edge_to_remove, u2i_orig, i2u_orig,
                                               self.N, self.M, radius)
        users_in_R, items_in_R = get_user_item_sets_in_radius(distances, self.N, radius)
        
        # Filter edges to neighborhood
        local_edges = [(i, j, x) for i, j, x in filtered 
                       if i in users_in_R or j in items_in_R]
        
        params, obj_trace, n_iter, converged, runtime = self._fit_internal(
            local_edges, params, update_users=users_in_R, update_items=items_in_R)
        
        return FitResult(
            params=params, objective_trace=obj_trace,
            n_iterations=n_iter, converged=converged,
            runtime_sec=runtime,
            model_family='gaussian_gamma_map', inference_type='map',
            likelihood='gaussian', prior='gamma',
            diagnostics={'radius': radius, 'n_users_updated': len(users_in_R),
                         'n_items_updated': len(items_in_R)}
        )
    
    def fit_warm_start_global(self, edges, edge_to_remove, config=None, init_params=None):
        i_del, j_del = int(edge_to_remove[0]), int(edge_to_remove[1])
        filtered = [(i, j, x) for i, j, x in edges if not (i == i_del and j == j_del)]
        return self.fit_full(filtered, config, init_params)


def get_model(model_family, N, M, K, **kwargs):
    """Factory function."""
    if model_family == 'poisson_gamma':
        valid = {'a0', 'b0', 'c0', 'd0', 'max_iter', 'tol', 'damping', 'seed'}
        return PoissonGammaVI(N, M, K, **{k: v for k, v in kwargs.items() if k in valid})
    elif model_family == 'gaussian_gaussian':
        valid = {'sigma_U', 'sigma_V', 'sigma_x', 'max_iter', 'tol', 'damping', 'seed'}
        return GaussianGaussianVI(N, M, K, **{k: v for k, v in kwargs.items() if k in valid})
    elif model_family == 'gaussian_gamma_map':
        valid = {'a0', 'b0', 'c0', 'd0', 'sigma_x', 'lr', 'max_iter', 'tol', 'seed', 'grad_clip'}
        return GaussianGammaMAP(N, M, K, **{k: v for k, v in kwargs.items() if k in valid})
    else:
        raise ValueError(f"Unknown model family: {model_family}")