Source code for mxnet.optimizer.adagrad

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"""AdaGrad optimizer"""
from __future__ import absolute_import
from ..ndarray import (zeros, clip, sqrt, square)
from ..ndarray import sparse
from .optimizer import Optimizer, register

__all__ = ['AdaGrad']


[docs]@register class AdaGrad(Optimizer): """AdaGrad optimizer. This class implements the AdaGrad optimizer described in *Adaptive Subgradient Methods for Online Learning and Stochastic Optimization*, and available at http://www.jmlr.org/papers/volume12/duchi11a/duchi11a.pdf. This optimizer updates each weight by:: grad = clip(grad * rescale_grad, clip_gradient) + wd * weight history += square(grad) weight -= learning_rate * grad / (sqrt(history) + epsilon) This optimizer accepts the following parameters in addition to those accepted by :class:`.Optimizer`. See Also ---------- :meth:`mxnet.ndarray.sparse.adagrad_update`. Parameters ---------- learning_rate : float, default 0.01 The initial learning rate. If None, the optimization will use the learning rate from ``lr_scheduler``. If not None, it will overwrite the learning rate in ``lr_scheduler``. If None and ``lr_scheduler`` is also None, then it will be set to 0.01 by default. epsilon : float, default 1e-6 Small value to avoid division by 0. use_fused_step : bool, default True Whether or not to use fused kernels for optimizer. When use_fused_step=False or grad is not sparse, step is called, otherwise, fused_step is called. """ def __init__(self, learning_rate=0.01, epsilon=1e-6, use_fused_step=True, **kwargs): if kwargs.get("eps") is not None: raise DeprecationWarning( 'parameter \'eps\' is deprecated. Please use \'epsilon\' instead...') super(AdaGrad, self).__init__(learning_rate=learning_rate, use_fused_step=use_fused_step, **kwargs) self.epsilon = epsilon
[docs] def create_state(self, index, weight): return zeros(weight.shape, weight.context, stype=weight.stype) # history
[docs] def step(self, indices, weights, grads, states): """Perform an optimization step using gradients and states. Parameters ---------- indices : list of int List of unique indices of the parameters into the individual learning rates and weight decays. Learning rates and weight decay may be set via `set_lr_mult()` and `set_wd_mult()`, respectively. weights : list of NDArray List of parameters to be updated. grads : list of NDArray List of gradients of the objective with respect to this parameter. states : List of any obj List of state returned by `create_state()`. """ for index, weight, grad, state in zip(indices, weights, grads, states): self._update_count(index) lr = self._get_lr(index) wd = self._get_wd(index) # preprocess grad grad *= self.rescale_grad if self.clip_gradient is not None: grad = clip(grad, - self.clip_gradient, self.clip_gradient) grad += wd * weight # update history history = state history[:] += square(grad) d = grad / (sqrt(history) + self.epsilon) # update weight weight[:] -= lr * d
[docs] def fused_step(self, indices, weights, grads, states): """Perform a fused optimization step using gradients and states. Fused kernel is used for update. Parameters ---------- indices : list of int List of unique indices of the parameters into the individual learning rates and weight decays. Learning rates and weight decay may be set via `set_lr_mult()` and `set_wd_mult()`, respectively. weights : list of NDArray List of parameters to be updated. grads : list of NDArray List of gradients of the objective with respect to this parameter. states : List of any obj List of state returned by `create_state()`. """ for index, weight, grad, state in zip(indices, weights, grads, states): is_sparse = grad.stype == 'row_sparse' if is_sparse: self._update_count(index) lr = self._get_lr(index) wd = self._get_wd(index) kwargs = {'epsilon': self.epsilon, 'rescale_grad': self.rescale_grad} if self.clip_gradient: kwargs['clip_gradient'] = self.clip_gradient history = state # When grad is sparse, update weight with fused kernel sparse.adagrad_update(weight, grad, history, out=weight, lr=lr, wd=wd, **kwargs) else: # When the grad is not sparse, the func step is called to update weight and state self.step([index], [weight], [grad], [state])