Source code for prosemble.models.tangent_lvq

"""
Generalized Tangent LVQ (GTLVQ).

Each prototype has a tangent subspace defined by an orthogonal basis
:math:`\\Omega_k`. The tangent distance projects out the tangent directions.

References
----------
.. [1] Saralajew, S., & Villmann, T. (2016). Adaptive tangent
       distances in generalized learning vector quantization.
"""

import jax
import jax.numpy as jnp
import numpy as np
from jax import jit

from prosemble.models.prototype_base import SupervisedPrototypeModel
from prosemble.core.competitions import wtac
from prosemble.core.initializers import random_omega_init
from prosemble.core.utils import orthogonalize


@jit
def _predict_gtlvq_jit(X, prototypes, omegas, proto_labels):
    """JIT-compiled GTLVQ prediction with tangent distance."""
    diff = X[:, None, :] - prototypes[None, :, :]
    proj = jnp.einsum('npd,pds->nps', diff, omegas)
    recon = jnp.einsum('nps,pds->npd', proj, omegas)
    tang_diff = diff - recon
    distances = jnp.sum(tang_diff ** 2, axis=2)
    return wtac(distances, proto_labels)


[docs] class GTLVQ(SupervisedPrototypeModel): """Generalized Tangent Learning Vector Quantization. Each prototype :math:`k` has a subspace basis :math:`\\Omega_k`. The tangent distance is: .. math:: d(x, w_k) = \\|P_k(x - w_k)\\|^2 where :math:`P_k = I - \\Omega_k \\Omega_k^T` is the orthogonal projector. Parameters ---------- subspace_dim : int Dimension of each prototype's tangent subspace. beta : float Transfer function steepness. n_prototypes_per_class : int Number of prototypes per class. max_iter : int Maximum training iterations. lr : float Learning rate. epsilon : float Convergence threshold on loss change. random_seed : int Random seed for reproducibility. distance_fn : callable, optional Distance function (default: squared Euclidean). optimizer : str or optax optimizer, optional Optimizer name ('adam', 'sgd') or optax GradientTransformation. Default: 'adam'. transfer_fn : callable, optional Transfer function for loss shaping (default: identity). margin : float Margin for loss computation. callbacks : list, optional List of Callback objects. use_scan : bool If True (default), use jax.lax.scan for training (faster, JIT-compiled, but runs all max_iter iterations even after convergence). If False, use a Python for-loop with true early stopping (no wasted compute after convergence, but slower per iteration). batch_size : int, optional Mini-batch size. If None (default), use full-batch training. When set, each epoch iterates over shuffled mini-batches of this size. lr_scheduler : str or optax.Schedule, optional Learning rate schedule. Supported strings: 'exponential_decay', 'cosine_decay', 'warmup_cosine_decay', 'warmup_exponential_decay', 'warmup_constant', 'polynomial', 'linear', 'piecewise_constant', 'sgdr'. Or pass a custom optax.Schedule. Default: None. lr_scheduler_kwargs : dict, optional Keyword arguments passed to the learning rate scheduler (e.g. ``decay_rate``, ``transition_steps``). Default: None. prototypes_initializer : str or callable, optional How to initialize prototypes. Supported strings: 'stratified_random' (default), 'class_mean', 'class_conditional_mean', 'stratified_noise', 'random_normal', 'uniform', 'zeros', 'ones', 'fill_value'. Or pass a callable ``(X, y, n_per_class, key) -> (protos, labels)``. patience : int, optional Number of consecutive epochs with no improvement before stopping. If None (default), stops after a single non-improving step (epsilon check). Requires use_scan=False for true early stopping. restore_best : bool If True, restore the parameters that achieved the lowest loss (or validation loss if validation data is provided). Default: False. class_weight : dict or 'balanced', optional Weights for each class. Dict maps class label to weight, e.g. {0: 1.0, 1: 2.0, 2: 1.5}. 'balanced' auto-computes weights inversely proportional to class frequencies. Default: None (uniform). gradient_accumulation_steps : int, optional Accumulate gradients over this many steps before applying an update. Effective batch size = batch_size * gradient_accumulation_steps. Default: None (no accumulation). ema_decay : float, optional Exponential moving average decay for parameters (0 < ema_decay < 1). After training, model parameters are replaced with EMA-smoothed values. Typical values: 0.999, 0.9999. Default: None (no EMA). freeze_params : list of str, optional List of parameter group names to freeze (zero gradients). E.g. ['backbone'] to freeze the backbone and only train prototypes. Default: None (all parameters trainable). lookahead : dict, optional Enable lookahead optimizer wrapper. Dict with keys: - 'sync_period': int (default 6) — sync every k steps - 'slow_step_size': float (default 0.5) — interpolation factor Default: None (no lookahead). mixed_precision : str or None, optional Compute dtype for mixed precision training. 'float16' or 'bfloat16'. Master weights stay in float32; forward/backward pass runs in lower precision for ~2x speed and ~half memory on GPU. Float16 uses static loss scaling to prevent gradient underflow. Default: None (disabled). """ def __init__(self, subspace_dim=2, beta=10.0, n_prototypes_per_class=1, max_iter=100, lr=0.01, epsilon=1e-6, random_seed=42, distance_fn=None, optimizer='adam', transfer_fn=None, margin=0.0, callbacks=None, use_scan=True, batch_size=None, lr_scheduler=None, lr_scheduler_kwargs=None, prototypes_initializer=None, patience=None, restore_best=False, class_weight=None, gradient_accumulation_steps=None, ema_decay=None, freeze_params=None, lookahead=None, mixed_precision=None): super().__init__( n_prototypes_per_class=n_prototypes_per_class, max_iter=max_iter, lr=lr, epsilon=epsilon, random_seed=random_seed, distance_fn=distance_fn, optimizer=optimizer, transfer_fn=transfer_fn, margin=margin, callbacks=callbacks, use_scan=use_scan, batch_size=batch_size, lr_scheduler=lr_scheduler, lr_scheduler_kwargs=lr_scheduler_kwargs, prototypes_initializer=prototypes_initializer, patience=patience, restore_best=restore_best, class_weight=class_weight, gradient_accumulation_steps=gradient_accumulation_steps, ema_decay=ema_decay, freeze_params=freeze_params, lookahead=lookahead, mixed_precision=mixed_precision, ) self.subspace_dim = subspace_dim self.beta = beta self.omegas_ = None def _get_resume_params(self, params): params['omegas'] = self.omegas_ return params def _init_state(self, X, y, key): n_features = X.shape[1] key1, key2 = jax.random.split(key) prototypes, proto_labels = self._init_prototypes( X, y, self.n_prototypes_per_class, key1 ) n_protos = prototypes.shape[0] # Initialize each Omega as random orthogonal keys = jax.random.split(key2, n_protos) omegas = jnp.stack([ random_omega_init(n_features, self.subspace_dim, k) for k in keys ]) # (p, d, subspace_dim) params = {'prototypes': prototypes, 'omegas': omegas} opt_state = self._optimizer.init(params) from prosemble.models.prototype_base import SupervisedState state = SupervisedState( prototypes=prototypes, opt_state=opt_state, loss=jnp.array(float('inf')), iteration=0, converged=False, ) return state, params, proto_labels def _compute_loss(self, params, X, y, proto_labels): prototypes = params['prototypes'] omegas = params['omegas'] # (p, d, s) diff = X[:, None, :] - prototypes[None, :, :] # (n, p, d) # Projector P_k = I - Omega_k @ Omega_k^T # P_k @ diff_k = diff_k - Omega_k @ (Omega_k^T @ diff_k) # projected = diff - omegas @ (omegas^T @ diff) proj_onto_subspace = jnp.einsum('npd,pds->nps', diff, omegas) # (n, p, s) reconstruction = jnp.einsum('nps,pds->npd', proj_onto_subspace, omegas) # (n, p, d) tangent_diff = diff - reconstruction # (n, p, d) distances = jnp.sum(tangent_diff ** 2, axis=2) # (n, p) from prosemble.core.losses import glvq_loss_with_transfer return glvq_loss_with_transfer( distances, y, proto_labels, transfer_fn=self.transfer_fn, margin=self.margin, beta=self.beta, ) def _post_update(self, params): """Re-orthogonalize :math:`\\Omega` matrices via polar decomposition.""" omegas = jax.vmap(orthogonalize)(params['omegas']) return {**params, 'omegas': omegas} def _compute_distances_for_rejection(self, X): """Tangent distances for reject option.""" diff = X[:, None, :] - self.prototypes_[None, :, :] proj_onto_subspace = jnp.einsum('npd,pds->nps', diff, self.omegas_) reconstruction = jnp.einsum('nps,pds->npd', proj_onto_subspace, self.omegas_) tangent_diff = diff - reconstruction return jnp.sum(tangent_diff ** 2, axis=2) def _extract_results(self, params, proto_labels, loss_history, n_iter, **kwargs): super()._extract_results(params, proto_labels, loss_history, n_iter, **kwargs) self.omegas_ = params['omegas']
[docs] def predict(self, X): self._check_fitted() X = jnp.asarray(X, dtype=jnp.float32) return _predict_gtlvq_jit( X, self.prototypes_, self.omegas_, self.prototype_labels_ )
def _get_quantizable_attrs(self): attrs = super()._get_quantizable_attrs() if self.omegas_ is not None: attrs.append('omegas_') return attrs def _get_fitted_arrays(self): arrays = super()._get_fitted_arrays() if self.omegas_ is not None: arrays['omegas_'] = np.asarray(self.omegas_) return arrays def _set_fitted_arrays(self, arrays): super()._set_fitted_arrays(arrays) if 'omegas_' in arrays: self.omegas_ = jnp.asarray(arrays['omegas_']) def _get_hyperparams(self): hp = super()._get_hyperparams() hp['subspace_dim'] = self.subspace_dim hp['beta'] = self.beta return hp